2012 Managerial ownership induced income smoothing and information asymmetry

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To cite this document: Ahsan Habib Haiyan Jiang, (2012),"Managerial ownership-induced income smoothing and information asymmetry", Pacific Accounting Review, Vol. 24 Iss 2 pp. 211 - 232 Permanent link t o t his document : http://dx.doi.org/10.1108/01140581211259839

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Managerial ownership-induced Ownership-

induced income

income smoothing and

smoothing

information asymmetry

Ahsan Habib and Haiyan Jiang

Department of Accounting, Auckland University of Technology,

Auckland, New Zealand

Abstract Purpose – The purpose of this paper is to examine whether managerial ownership-induced income

smoothing accentuates or attenuates an information asymmetry problem. Standard agency theory suggests that managerial ownership may play a significant role in alleviating agency problems between managers and external shareholders that can arise from information asymmetry. According to this view, managerial ownership-induced income smoothing could convey managerial private information and could, therefore, be considered as informative. However, managerial ownership could also entrench managers with absolute control of firms, and encourage them to engage in earnings manipulation, including earnings smoothing, in order to hide private benefits of control. Design/methodology/approach – The paper uses two smoothing measures, and separate total smoothing into its innate and discretionary components. The former is determined by firm fundamentals, whereas discretionary smoothing allows managers the flexibility to use it for either informative or opportunistic reasons. The paper then regresses information asymmetry, as proxied by scaled bid-ask-spreads, on the interaction between managerial ownership and both these smoothing components. Findings – The paper documents that managerial ownership-induced discretionary smoothing has a positive effect on bid-ask spreads. This result seems to support the entrenchment view of managerial ownership.

Practical implications – This study offers insights to policy makers interested in enhancing the effectiveness of the managerial ownership aspect of corporate governance in New Zealand.

Originality/value – This paper uses agency theory to provide a comparative assessment of the efficient versus the entrenchment hypotheses with respect to managerial ownership.

Keywords Managerial ownership, Management accountability, Innate smoothing, Discretionary smoothing, Information asymmetry, Corporate governance, New Zealand

Paper type Research paper Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

1. Introduction This paper investigates the impact of managerial ownership-induced income smoothing on information asymmetry. Income smoothing is conceptualised as managerial reporting discretion designed to intentionally dampen the fluctuations in a firm’s actual earnings (Biedleman, 1973). There are competing arguments regarding the beneficial effects of income smoothing. On the one hand, income smoothing allows managers to make public their private information about a firm’s future earnings, thereby making earnings prediction easier. Smoothed earnings are also perceived by investors as being less risky (Ronen and Sadan, 1981; Chaney and Lewis, 1995;

Pacific Accounting Review Vol. 24 No. 2, 2012

q pp. 211-232

The authors would like to thank two anonymous reviewers and the Editor, Mike Bradbury for

Emerald Group Publishing Limited

their helpful comments. 0114-0582

DOI 10.1108/01140581211259839

PAR

Tucker and Zarowin, 2006; Graham et al., 2005)[1]. On the other hand, managers may

smooth income in an attempt to garble earnings for private benefit (Healy, 1985; Fudenberg and Tirole, 1995; DeFond and Park, 1997).

Over the years researchers have identified a number of factors encouraging managerial income smoothing practices, for example, managerial bonus compensation (Healy, 1985; Moses, 1987), managers’ job security concerns (DeFond and Park, 1997;

Ahmed et al., 2006), product market competition (Tinaikar and Xue, 2011), relationship-specific investments with suppliers and customers at the national and international levels (Raman and Shahrur, 2008; Dou et al., 2010), country-level investor protection and legal enforcement mechanisms (Leuz et al., 2003), and firm-level ownership structure including managerial ownership (Carlson and Bathala, 1997; Habib, 2005; LaFond et al., 2011).

With regard to the effects of managerial ownership on managers’ reporting incentives, economics theory identifies two contrasting effects: the incentive alignment effect and the management entrenchment effect. Traditional agency theory argues that considerable agency problems exist between managers and outside shareholders because of a separation between ownership and control ( Jensen and Meckling, 1976). The agency theory view proposes that shareholdings held by managers help align their interests with those of shareholders. In contrast, Morck et al. (1988) argue that greater ownership would provide managers with deeper entrenchment and, therefore, greater scope for opportunistic behavior. From a financial reporting perspective, the alignment view proposes an informational perspective of income smoothing. Since managerial interest is aligned with that of the outsiders, income smoothing can be considered a rational managerial response. In contrast, the opportunistic view would suggest that managerial ownership-induced income smoothing could be an instrument for concealing private benefits of control. Because of the existence of these two competing predictions for income smoothing, a positive association between managerial ownership and income smoothing, does not necessarily imply an informational role for income smoothing.

Our paper is motivated by this ongoing debate on the informational versus opportunistic view of income smoothing. To provide a more powerful test of these competing hypotheses, we separate total smoothing into its innate and discretionary components. The former is determined by firm fundamentals, whereas discretionary smoothing allows managers the flexibility to use it for either informative or opportunistic reasons[2]. We, therefore, examine the effect of managerial ownership-induced

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT) discretionary smoothing (defined as the interaction between managerial ownership and discretionary smoothing) on information asymmetry.

From a capital market perspective, we hypothesise that if investors perceive discretionary smoothing incentives to be opportunistic, then they are going to widen the bid-ask spread to price-protect themselves and, therefore, increase the asymmetric information component of the cost of capital. This proposition is based on the adverse selection hypothesis, which suggests that the bid-ask spreads are likely to be set wider by market makers or specialists in a market with more informed traders (Stoll, 1978, 1989). Due to their managerial positions, directors and managers have access to inside information. Being aware of directors and managers’ information advantages, other market participants could widen bid-ask spreads to avoid this asymmetric information risk (Bagehot, 1971; Copeland and Galai, 1983; Glosten and Milgrom, 1985). So, large managerial shareholdings should be associated with a greater information asymmetry.

A number of empirical research studies support such a positive association

Ownership-

(Demsetz, 1968; Hamilton, 1978; Heflin and Shaw, 2000; Jennings et al., 2002; Rubin,

induced income

2007). On the contrary, a negative association between the two is expected if market participants perceive that income smoothing conveys managerial private information

smoothing

which helps to attenuate an information asymmetry problem. Using data from New Zealand we document a significant positive association between managerial ownership-induced discretionary smoothing and information

asymmetry proxied by bid-ask spreads. We contribute to the ongoing debate on the controversial role of income smoothing by assessing the effect of an important governance mechanism upon information asymmetry. Our evidence seems to suggest that managerial ownership may not perform an effective governance function, at least from an information provision perspective. This finding should be of interest to prospective investors who may weigh the relative benefits and costs of managerial shareholdings in the companies they are investing in. The finding should also inform regulators about whether to strengthen alternative governance mechanisms if managerial shareholdings are found to be opportunistic.

Our paper proceeds as follows. In the next section we provide a brief review of the income smoothing literature and develop our testable hypothesis. Section 3 explains the research design issues. Section 4 outlines our sample selection procedure and provides relevant descriptive statistics. Section 5 provides the test results and Section 6 concludes.

2. Income smoothing, managerial ownership and information asymmetry In their seminal article, Jensen and Meckling (1976) argue that divergence of interests and the inability of principals to observe agents’ actions lead to moral hazards and to an inherent conflict of interest between principals and agents which generates agency cost. One way to minimize this conflict is to make managers part owners of the company. With regard to the effects of managerial ownership on managers’ incentives, economics theory identifies two contrasting perspectives: the incentive alignment effect and the management entrenchment effect. The incentive alignment effect is expected to be more pronounced with an increase in managerial ownership ( Jensen and Meckling, 1976). In contrast, the entrenchment hypothesis propounded by Morck et al. (1988) argues that greater ownership would provide managers with greater scope for opportunistic behavior. Researchers have tested these two opposing perspectives by relating managerial ownership to financial reporting quality. Warfield et al. (1995)

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT) document that informativeness of earnings increases, and that earnings management decreases, with an increase in managerial share ownership. In contrast, Fan and Wong (2002) show that concentrated ownership reduces the informativeness of earnings, and Baik et al. (2010) reveal that firms having high levels of managerial ownership have relatively poor analyst coverage, less likelihood of issuing management earnings forecasts, and less accurate and more optimistic management forecasts[3].

Income smoothing is a special case of earnings management where managers smooth out inter-temporal volatility in reported earnings to deliver a stable earnings stream (Biedleman, 1973). Gordon (1964) developed four propositions to contextualize income smoothing as a rational managerial action based on the assumptions that:

managers act to maximize their utility;

such utility depends on the firm’s share values;

PAR

achievement of utility maximization and increased share values depends in part

on the satisfaction of the stockholders with the corporate performance; and

stockholder satisfaction, in turn, depends on the stability of corporate income which promotes income smoothing.

Fudenberg and Tirole (1995, p. 75) defined income smoothing as “the process of

manipulating the time-profile of earnings or earnings reports to make the reported income stream less variable, while not increasing reported earnings over the long run”. Prior research on the effect of managerial ownership on income smoothing has documented a positive association (Carlson and Bathala, 1997; Kamin and Ronen, 1978; LaFond et al., 2011), an insignificant association (Moses, 1987; Leuz et al., 2003), and a negative association (Habib, 2005; Atik, 2009). We argue that using total rather than a discretionary component of income smoothing may have contributed to this mixed evidence. We address this concern in our research design choice.

We now discuss the implications of income smoothing for capital market participants. Analytical models for income smoothing predict that smoothed earnings will reduce both earnings volatility and the cost of capital. For example, Goel and Thakor (2003) show that increased volatility associated with unsmoothed earnings increases the potential loss suffered by uninformed stockholders when they trade for liquidity reasons. This situation discourages uninformed investors from actively participating in stock trading, with the consequences of increased illiquidity and reduced stock price. The rational manager responds to such a situation by smoothing earnings in order to affect market perceptions of earnings volatility and, hence, the firm’s stock price. Smoothed earnings can help reduce information asymmetry in the market place since earnings prediction is perceived to be easier when current earnings are smoothed. Similar predictions are made in other analytical models too (Trueman and Titman, 1988; Dye, 1988; Sankar and Subramanyam, 2001; Kirschenheiter and Melumad, 2002; Goel and Thakor, 2003). Empirical evidence, however, is not always consistent with analytical predictions.

Francis et al. (2004) find a strong negative association between income smoothing and the cost of equity capital estimates, based on the Value Line forecasts of future stock prices and dividends. McInnis (2010), however, fails to find any association between earnings smoothness and average stock returns using a long time-series of US data. Michelson et al. (1995) find that US smoothers have a lower ten-year annualised

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT) return than non-smoothers, but in a subsequent study they find that US smoothers have a higher cumulative average abnormal return than non-smoothers (Michelson et al., 2000). Wang and Williams (1994) find that the market response to earnings for firms with a smooth income series is four times as large as that for other firms. International evidence seems to support an entrenchment view of smoothing as Bhattacharya et al. (2003) find a positive effect of income smoothing on the cost of capital and LaFond et al. (2011) report that firms with greater discretionary smoothing experience significantly higher bid-ask spreads and lower trading volumes. From a firm valuation perspective, Bao and Bao (2004) report that more income smoothing does not necessarily imply higher firm valuation, but that only when the smoothed earnings stream is accompanied by high quality earnings, will there be a valuation premium. Huang et al. (2009) reveal that firm value increases with real smoothing (derivative usage) but decreases with artificial smoothing (abnormal accruals).

Although these studies provide some important insights into the market behaviour

Ownership-

of managerial income smoothing practices, they remain silent on the effect of managerial ownership on discretionary smoothing and consequent market behavior.

induced income

We develop the following testable hypothesis to examine this issue. In developing the

smoothing

hypothesis we consider the contrasting perspectives of incentive alignment and entrenchment hypothesis. To provide a more powerful test of these competing hypotheses, we separate total smoothing into its innate and discretionary components.

The former is determined by firm fundamentals, whereas discretionary smoothing allows managers the flexibility to use it for either informative or opportunistic reasons. We, therefore, examine the effect of managerial ownership-induced discretionary smoothing, defined as the interaction between managerial ownership and discretionary smoothing, on information asymmetry. The following two testable hypotheses are developed:

H 1a. If discretionary smoothing accentuates information asymmetry between managers and shareholders then there will be a positive association between managerial ownership-induced discretionary smoothing and bid-ask spreads (entrenchment hypothesis).

H 1b. If discretionary smoothing attenuates information asymmetry between managers and shareholders then there will be a negative association between managerial ownership-induced discretionary smoothing and bid-ask spreads (incentive alignment hypothesis).

3. Research design To test H 1a and H 1b , we employ a two-step procedure. First, we determine the innate component of smoothing (INNSMTH) by estimating the following regression equation based on prior research (Francis et al., 2004; LaFond et al., 2011):

SMTH it ¼ a 0 þ b 1 SIZE it þ b 2 LEVERAGE it þ b 3 sSALES it þ b 4 LOSS it þ b 5 GROWTH it þ b 6 AVGOCF it þ b 7 DIVIDEND it þ b 8 OPLEV it þ 1

ð 1Þ the subscripts “i” and “t” represent firm and year, respectively.

The dependent variable SMTH is our income smoothing measure calculated using Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

two alternative approaches: SMTH1

¼ [sNI/s OCF], where NI is net income after extraordinary items after tax and OCF is operating cash flows; both deflated by beginning-of-period total assets. Standard deviations are calculated using a three-year rolling window period. SMTH1 is multiplied by negative one so that larger values, i.e. values closer to zero represent more income smoothing.

SMTH2 ¼ the correlations between change in operating cash flows (DOCF) and change in total accruals (DTACCR) with both variables scaled by average total assets. The correlations are calculated using a three-year rolling window period. Total accruals are calculated as the difference between NI and OCF scaled by beginning-of-period

PAR

total assets. SMTH2 is also multiplied by negative one so that

values closer to one represent more income smoothing.

SIZE

¼ natural log of total assets.

LEVERAGE ¼ total liabilities divided by total assets. s SALES

¼ 216 standard deviation of sales scaled by total assets calculated over a

three-year rolling window period.

LOSS

a dummy variable coded 1 for negative profit observations, and zero otherwise.

GROWTH ¼ firm’s growth opportunities and is defined as the market-to-book ratio (market capitalization/shareholders equity).

AVGOCF

¼ average OCF scaled by total assets calculated over a three-year

rolling window period.

DIVIDEND ¼ cash dividends divided by average total assets. OPELEV

¼ operating leverage measured as net property, plant, and equipment

(PPE) divided by total assets.

We derive two INNSMTH values, one for each smoothing measure, using the regression coefficients from equation (1). We denote these as INNSMTH1 and INNSMTH2, respectively. Our proxy for discretionary smoothing is calculated as the difference between total smoothing (SMTH) and INNSMTH. We denote these as DISCSMTH1 and DISCSMTH2, respectively.

For descriptive analysis purpose we regress the INNSMTH and DISCSMTH components of total smoothing on managerial ownership (MOWN) variable as in equations (2) and (2a) below. Prior research on the association between income smoothing and managerial ownership has used total smoothing as opposed to disaggregated smoothing measures (Carlson and Bathala, 1997) and found inconclusive evidence. We focus on the coefficient of MOWN equation (2a) because the theoretical predictions of incentive alignment or entrenchment hypothesis are more relevant for the component of smoothing that is under managerial discretion:

INNSMTH it ¼ d 0 þ d 1 MOWN it þ 1 it ð 2Þ Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

DISCSMTH it ¼ d 0 þ d 1 MOWN it þ 1 it ð 2aÞ MOWN ¼ percentage managerial ownership as disclosed in the top five security holder

disclosures in the annual reports. We include multiple measures of MOWN for each firm (if available) instead of calculating once for each firm. For example, managerial ownership of Rakon Limited amounts to 15.62, 15.64 and 15.66 percent in 2009, 2008 and 2007, respectively, and are included for all three separate years[4].

Second, we develop the following regression equations to examine the effect of managerial ownership-induced discretionary income smoothing on information asymmetry. Our dependent variable is bid-ask spread, a proxy for information asymmetry. Independent variables of primary interest are the interaction between MOWN and DISCS0MTH in equations (3a) and (3b) below:

SCABAS2 it ¼ a 0 þ b 1 MOWN it þ b 2 INNSMTH it þ b 3 MOWN it *INNSMTH it

Ownership-

þ b 4 LPRICE it þ b 5 ACAR2 it þ b 6 AAV2 it þ 1 it

induced income

SCABAS2 it ¼ g 0 þ g 1 MOWN it þ g 2 DISCSMTH it þ g 3 MOWN it *DISCSMTH it

smoothing

ð 3aÞ

þ g 4 LPRICE it þ g 5 ACAR2 it þ g 6 AAV2 it þ 1 it

SCABAS2 it ¼ w 0 þ w 1 MOWN it þ w 2 INNSMTH it þ w 3 MOWN it *INNSMTH it

þ w 4 DISCSMTH it þ w 5 MOWN it *DISCSMTH it þ w 6 LPRICE it ð 3bÞ

þ w 7 ACAR2 it þ w 8 AAV2 it þ 1 it

SCABAS2 ¼ the bid-ask spread for a two-day return window scaled by share price on annual report release date. Whether bid-ask spread should

be measured annually or around a narrow window surrounding annual report release date had to be determined. We decided to focus on the latter because we wanted to ensure that ownership data as well as fundamental performance variables, e.g. earnings and cash flows, for estimating smoothing measures were available to shareholders. We also provide a sensitivity analysis with SCABAS measured over a seven-day return window (SCABAS7 it ). Prior research suggests that although most market reaction to new information occurs on days 21 and 0 relative to the earnings announcement date, it persists up to five days afterwards (Utama and Cready, 1997).

LPRICE

¼ the natural log of closing share price two days before the annual report

release date. Share price is found to be negatively correlated to spreads (Branch and Freed, 1977; Fabozzi, 1979; Heflin and Shaw, 2000).

ACAR2

¼ mean-adjusted absolute abnormal returns (ACAR2) during the

two-day event window around annual report release date. This is calculated using the following formula:

CARð21 ; 0Þ ¼

Rð21 ; 0Þ 2 2*MRð270 ; 211Þ

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT) where, R is the daily raw return in two-day time periods around annual

report release date. MR (270, 2 11) is the mean stock return during trading days (270, 2 11). Since business or economic cycles can strongly affect stock prices, the mean stock returns of trading days (270, 2 11) are used to control for any unusual returns behaviour shortly before the annual report release date. Returns are calculated based on NZX Data. Absolute abnormal returns is a proxy for liquidity and therefore is expected to have an impact on the bid-ask spread because of the known correlation between liquidity and bid-ask spread (Berkman, 1992).

AAV2

¼ absolute abnormal trading volume and is calculated as the absolute

value of the difference between mean daily trading volume around annual report release dates (21, 0) and the mean daily trading volume

PAR

during a specified pre-annual report release date (270, 211)

24,2 (Chordia et al., 2001). AAV2 is scaled by number of outstanding

shares and is expected to be negatively associated with bid-ask spread (Berkman, 1992).

We are interested in the sign and statistical significance of the interaction term g 3 in

regression (3a), and w 5 218 in regression (3b) above. If management ownership-induced

discretionary smoothing accentuates (attenuates) the information asymmetry problem then we should expect the coefficients to be positive (negative), respectively. We include INNSMTH in the regression equations to control for the innate determinants of income smoothing but do not develop any prediction.

In an unbalanced panel data setting, we conduct regression analysis employing the variants of the panel corrected standard error (PCSE) methodology to estimate efficient estimators robust to potential heteroscedasticity and autocorrelation in the disturbances (Beck and Katz, 1995). Industry dummy variables are used to control for industry effects.

4. Sample selection and descriptive statistics Our sample consists of all listed and delisted companies on the New Zealand Stock Exchange (NZX) for the period of 1998-2009. We began with 1998 as data coverage for New Zealand companies prior to this year was not extensive. Because we require at least three consecutive years of net income, OCF, and total assets data to calculate smoothing, our regression analysis begins in 2000 and ends in 2009. Our initial sample size was 1,134 firm-year observations including financial institutions. We excluded 144 observations pertaining to financial institutions because of their unique accounting and reporting systems. We then deleted 17 negative book equity observations as the definition of GROWTH in equation (1) requires only positive book equity observations. We then deleted 117 observations due to the requirement of having at least three years of consecutive data including the current year. Our final sample size for the SMTH1 measure was 855 firm-year observations. For the SMTH2 measure the corresponding sample size was 785 firm-year observations. The fewer sample observations for the SMTH2 measure is due to the additional data requirement, since this measure adopts a change version (the correlation between change in DOCF and DTACCR) which requires an additional year of data and hence a deletion of 187 firm-year observations.

We obtained managerial ownership data for these sample observations from the Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

“percentage share owned by each of the top five largest shareholders” as disclosed in the “Substantial Security Holders” section of the annual reports. Our sample size reduced to 827 (759) firm-year observations for SMTH1 and SMTH2, respectively, for the information asymmetry analysis because of some missing observations on bid-ask spread data. Table I outlines the sample selection process.

Table II, Panel A, provides descriptive statistics of the variables used in our analysis. All the variables have been winsorised at the top and bottom 1 percent of their respective distributions to control for the effect of outliers. The SMTH1 measure varies considerably with a maximum of 20.05 to a minimum of 231.67. Recall that values closer to zero represent more income smoothing. The SMTH2 measure, on the other hand, is bounded between the correlation values of 21.00 to 1.00 with values closer to 1.00 representing more smoothing. The mean MOWN is 5.2 percent with

a standard deviation of 0.13. The mean MOWN is comparable with that of

Ownership-

SMTH1

SMTH2

induced income

Number of firm year observations from 1998-2009

smoothing

Less: firm-year observations from financial institutions

Less: negative book equity observations

Less: observations lost due to three-year data requirement for calculating the smoothing measures

Final usable sample for estimating regression equation (1)

Less: missing bid-ask spread observations

Table I. Final sample for estimating regression equations (3)-(3b)

Sample selection Carlson and Bathala (1997). Their calculation of the smoothing measure, however,

differs from our approach and, hence, can’t be compared. About 21 percent of the sample observations are loss-making firms, although firms overall are characterized by above average growth potentials. The mean (median) of scaled bid-ask spread for a two-day return window, SCABAS2, is 0.038 (0.019), respectively. Panel B provides industry breakdown of our sample. Our sample comes from a wide variety of industries with “consumer” and “investment and other service” industries comprising

30 percent of the total firm-year observations. We include industry dummies in all our regression models to control for industry-wide variation that could affect managerial smoothing choices.

Panels C and D of Table II contain the correlation coefficients among the variables. In Panel C we present the correlation coefficients for the variables used to determine innate smoothing. The two smoothing measures are positively and significantly correlated (correlation coefficient 0.25). The correlation between MOWN and SMTH1 is 20.01 and between MOWN and SMTH2 is 0.04, none of which are significant at the conventional level. However, our regression estimations are based on the discretionary component of smoothing instead of the total smoothing measure. SMTH1 is positively associated with firm leverage and operating leverage but is negatively associated with dividend and firm profitability. Similar results are obtained with the SMTH2 measure. None of the pair-wise correlations between the independent variables is high enough to warrant multicollinearity concern. The highest variance inflation factor (VIF) score is

1.39 associated with SIZE. Untabulated correlation analysis documents a positive and significant association between DISCSMTH1 and DISCSMTH2 with MOWN Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

(correlation coefficient 0.08 and 0.09, respectively, significant at better than the

5 percent level, two-tailed test). Panel D of Table II contains the correlation coefficients among the variables used in the information asymmetry test. SCABAS2 is negatively and significantly associated with LPRICE. The correlation between SCABAS2 and ACAR2 is positive and that of SCABAS2 and AAV2 is negative. Both these correlation coefficients are significant.

Table III presents a univariate analysis of the difference in means of the test variables between firm-year observations with zero and non-zero MOWN, respectively. Results show that firms with non-zero MOWN are more inclined to smooth earnings compared to their zero MOWN counterpart (differences in mean for both the SMTH1 and SMTH2 measures are significant). Zero MOWN firm-year observations are smaller, more leveraged, incur losses more often and exhibit higher variability in sales compared to their non-zero MOWN counterparts. This analysis reinforces

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

on Descriptive Table

220 24,2 PAR

variables II. information

Panel A: descriptive statistics

s SALES

Panel B: industry breakdown Percentage of total

Industry category Observations

observations

Agriculture and fishing

Building materials and construction

Energy processing

Investment and other service

Food and beverage

Forestry and forest products

Intermediate and durables

Leisure and tourism

Media and telecommunications

Mining

Ports

(continued )

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

Property

Textiles and apparel

100.00 Panel C: correlation analysis among variables used to determine innate smoothing

s SALES (5)

Panel D: correlation analysis of information asymmetry variables

Notes: Statistically significant at a probability of * , 0.01, ** , 0.05 and *** , 0.01 (two-tailed test); variable definitions: SMTH1is calculated as s NI/s OCF, where NI is net income after extraordinary items after tax and OCF is operating cash flows; both are deflated by beginning-of-period total assets; standard deviations are calculated using

a three-year rolling window period; SMTH1 is multiplied by negative one so that larger values, i.e. values closer to zero, represent more smooth earnings; SIZE is the natural log of total assets; LEVERAGE is calculated as total liabilities divided by total assets; sSALES is standard deviation of sales scaled by total assets calculated over a three-year rolling window period; LOSS is a dummy variable coded 1 for negative profit observations, and zero otherwise; GROWTH is firm’s growth opportunities and is defined as the market-to-book ratio (market capitalization/shareholders equity); AVGOCF is average OCF scaled by total assets calculated over a three-year rolling window period; DIVIDEND is cash dividends divided by average total assets; OPELEV is operating leverage measured as net property, plant, and equipment (PPE) divided by total assets; INNSMTH1 is the predicted value using the regression coefficients derived from equation (1); DISCSMTH1 is the difference between actual smoothing (SMTH1) and INNSMTH1; MOWN is percentage managerial ownership as disclosed in the top five security holder disclosures in the annual reports; SCABAS2 it is the bid-ask spread scaled by share price of firm i on annual report release date in year t for a two-day return window; LPRICE it is the natural log of closing share price two days before the annual report release date; ACAR2 is mean-adjusted absolute abnormal returns (ACAR2) during the two-day event window around annual report release date calculated as

CARð21 ; 0Þ ¼ P Rð21 ; 0Þ 2 2*MRð270 ; 211Þ, R is the daily raw return in two-day time periods around annual report release date; MR(2 70, 2 11) is the mean stock return during trading days (270, 2 11); since business or economic cycles can strongly affect stock prices, the mean stock returns of trading days (270, 2 11) are used to control for any unusual returns behaviour shortly before the annual report release date; returns are calculated based on data provided by NZX Data; AAV2 is the absolute abnormal trading volume is calculated as the absolute value of the difference between mean daily trading volume around annual report release dates (21, 0) and the mean daily trading volume during a specified pre-annual report release date (270, 211); AAV2 is scaled by number of outstanding shares

induced smoothing

Ownership-

income 221

Table

II.

PAR

24,2 t-test of difference in mean

s SALES

0.28 0.26 1.06 Notes: Statistically significant at a probability of * , 0.01, ** , 0.05 and *** , 0.01 (two-tailed

test); variable definitions: SMTH1is calculated as s NI/s OCF, where NI is net income after extraordinary items after tax and OCF is operating cash flows; both are deflated by beginning-of- period total assets; standard deviations are calculated using a three-year rolling window period; SMTH1 is multiplied by negative one so that larger values, i.e. values closer to zero, represent more smooth earnings; SMTH2 is the correlation between DOCF and change in total accruals (DTACCR) calculated using a three-year rolling window period; TACCR are calculated as the difference between NI and OCF scaled by lagged total assets; SMTH2 is also multiplied by negative one so that values closer to 1 represent more smoothing; SIZE is the natural log of total assets; LEVERAGE is calculated as total liabilities divided by total assets; sSALES is standard deviation of sales scaled by total assets

Table III. calculated over a three-year rolling window period; LOSS is a dummy variable coded 1 for negative Univariate comparison

profit observations, and zero otherwise; GROWTH is firm’s growth opportunities and is defined as the among the explanatory

market-to-book ratio (market capitalization/shareholders equity); AVGOCF is average OCF scaled by variables between

total assets calculated over a three-year rolling window period; DIVIDEND is cash dividends divided firm-year observations

by average total assets; OPELEV is operating leverage measured as net property, plant, and with and without MOWN equipment (PPE) divided by total assets

the importance of controlling for innate determinants of smoothing so that the discretionary component can capture the market perception of informative versus opportunistic use of income smoothing.

5. Test results

5.1 Innate and discretionary component of smoothing and managerial ownership Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT)

Table IV, Panel A provides regression results for innate determinants of income smoothing as modeled in equation (1). The dependent variable, SMTH, in regression equation (1) is regressed on a number of firm-specific (innate) variables theorized to affect income smoothing choices. Columns (ii) and (iv) present estimated coefficients for the SMTH1 and SMTH2 measures, respectively. The sign of the variables is generally consistent across the smoothing measures although significance level varies. Firm size is negatively related to income smoothing for the SMTH1 measure (coefficient of 20.20, t-statistic, 22.14). Larger firms are more likely to engage in income smoothing because:

They receive more publicity, as well as regulatory and governmental actions compared to their small firm counterparts. Regulators may consider large upward earnings fluctuations to be a sign of monopolistic practice, while large downward fluctuations may signal crisis and cause panic (Moses, 1987, p. 362).

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Panel A: innate determinants of income smoothing

SMTH it ¼ a 0 þ b 1 SIZE it þ b 2 LEVERAGE it þ b 3 sSALES it þ b 4 LOSS it þ b 5 GROWTH it þ b 6 AVGOCF it þ b 7 DIVIDEND it þ b 8 OPLEV it þ 1

s SALES

Industry dummies

Adjusted R 2 0.20 0.20 0.10 0.10

Innate managerial

induced

and

smoothing

Ownership-

smoo

discretionary ownership thing

Table

income 223

and IV.

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Table

224 24,2 PAR

IV.

Panel B: managerial ownership and innate and discretionary smoothing

INNSMTH it ¼ d 0 þ d 1 MOWN it þ 1 it ð 2Þ DISCSMTH it ¼ d 0 þ d 1 MOWN it þ 1 it ð 2aÞ

SMTH1

SMTH2

DISCSMTH2 Variables

Coefficient Constant

Yes Yes Adjusted R

Industry dummies 2 Yes

Notes: Statistically significant at a probability of * , 0.01, ** , 0.05 and *** , 0.01 (two-tailed test); t-statistics are in parentheses; variable definitions: SMTH1is calculated as s NI/s OCF, where NI is net income after extraordinary items after tax and OCF is operating cash flows; both are deflated by beginning-of-period total assets; standard deviations are calculated using a three-year rolling window period; SMTH1 is multiplied by negative one so that larger values, i.e. values closer to zero, represent more smooth earnings; SMTH2 is the correlation between DOCF and change in total accruals (DTACCR) calculated using a three-year rolling window period; TACCR are calculated as the difference between NI and OCF scaled by lagged total assets; SMTH2 is also multiplied by negative one so that values closer to 1 represent more smoothing; SIZE is the natural log of total assets; LEVERAGE is calculated as total liabilities divided by total assets; sSALES is standard deviation of sales scaled by total assets calculated over a three- year rolling window period; LOSS is a dummy variable coded 1 for negative profit observations, and zero otherwise; GROWTH is firm’s growth opportunities and is defined as the market-to-book ratio (market capitalization/shareholders equity); AVGOCF is average OCF scaled by total assets calculated over a three-year rolling window period; DIVIDEND is cash dividends divided by average total assets. OPELEV is operating leverage measured as net property, plant, and equipment (PPE) divided by total assets; MOWN is percentage managerial ownership as disclosed in the top five security holder disclosures in the annual reports

Larger firms have a wide array of smoothing instruments available (e.g. research

Ownership-

and development expenditure, non-recurring items, etc.) compared to smaller

induced income

firms.

smoothing

Large, mature firms should have synchronized revenue and expense cycles because fewer uncertainties in the environment lead to their earnings being naturally, rather than artificially, smoothed.

On the other hand, larger firms may have less incentive to smooth earnings since they receive more attention from analysts and investors and, therefore, more is known of them. Consequently, little additional value is derived from income smoothing (Ashari et al., 1994).Firm leverage is expected to have a positive effect on income smoothing behavior, since the cost of violating debt agreements may be reduced by giving an impression that the company maintains a steady flow of income through smoothing income (Moses, 1987). The coefficient on LEVERAGE is positive and statistically highly significant for the SMTH2 measure. Firms with less volatile sales, less frequent losses and more volatile OCF are found to report smoother earnings. Firm growth, dividend status and degree of operating leverage have no significant effect on income smoothing practices. These variables together explain about 20 (10 percent) of the variation in income smoothing for SMTH1 (SMTH2) measures, respectively.

We use the predicted coefficients from regression (1) to calculate the INNSMTH component of smoothing, and derive DISCSMTH by subtracting INSMTH from SMTH. We then regress both innate and discretionary smoothing on managerial ownership variables in Panel B, of Table IV. Because INNSMTH reflects smoothing due to fundamental firm characteristics, we expect the association between SMTH and MOWN, if any, to be captured by the DISCSMTH component. We find evidence consistent with this proposition for the SMTH2 measure where the coefficient on MOWN is positive and statistically significant at the 1 percent level (coefficient value of 0.40, t-statistic, 3.35). For the SMTH1 measure, the coefficient on MOWN is also positive, but insignificant at the conventional significance level.

5.2 Management ownership-induced income smoothing and information asymmetry Table V presents regression results of equations (3)-(3b) designed to test our hypothesis. equations (3) and (3a) separately tests the effect of managerial ownership-induced innate and discretionary smoothing on bid-ask spreads.

Downloaded by UNIVERSITY OF INDONESIA At 04:39 25 March 2017 (PT) equation (3b) includes both these variables in the same regression equation and provides a direct test of our hypothesis. For each SMTH measure we include results in three separate columns. Columns (2)-(4) present regression results of equations (3)-(3b) for SMTH1, while columns (5)-(7) present results relate to SMTH2.

Our variable of primary interest is the interactive coefficient MOWN * DISCSMTH in equation (3b) that captures the effect of managerial ownership-induced discretionary smoothing on bid-ask spreads. For SMTH1 measure, the coefficient in column (4) is positive and statistically highly significant (coefficient 0.09, t-statistic 7.05). We document the same result for SMTH2 although, unlike that for SMTH1, the coefficient on MOWN * DISCSMTH in column (7) is significant at the 5 percent level (coefficient 0.17, t-statistic, 1.98). The coefficient on managerial ownership-induced innate smoothing is insignificant in all the regression specifications. The findings suggest that market participants consider managerial ownership-induced discretionary smoothing to be

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information income ownership-induced Management Table

226 24,2 PAR

smoothing V. asymmetry

and

SCABAS2it ¼ a0 þ b1MOWNit þ b2INNSMTHit þ b3MOWNit*INNSMTHit þ b4LPRICEit þ b5ACAR2it þ b6AAV2it þ 1it (3) SCABAS2it ¼ g0 þ g1MOWNit þ g2DISCSMTHit þ g3MOWNit*DISCSMTHit þ g4LPRICEit þ

g5ACAR2it þ g6AAV2it þ 1it (3a) SCABAS2it ¼ w0 þ w1MOWNit þ w2INNSMTHit þ w3MOWNit*INNSMTHit þ w4DISCSMTHit

þ w5MOWNit*DISCSMTHit þ w6LPRICEit þ w7ACAR2it þ w8AAV2it þ 1it (3b)

Coefficient Coefficient Constant

20.28 (20.95) MOWN INNSMTH

(20.26) MOWN DISCSMTH

(21.67) 2 2.32 ** (22.15) Industry dummies

Yes Adjusted R 2 0.04 0.04 0.05 0.01 0.04 0.03

Observations 827

Notes: Statistically significant at a probability of * , 0.01, ** , 0.05 and *** , 0.01 (two-tailed test); t-statistics are in parentheses; variable definitions: INNSMTH1 and INNSMTH2 are predicted values for two smoothing measures using the regression coefficients derived from equation (1); DISCSMTH1 and DISCSMTH2 are the difference between actual smoothing (SMTH) and INNSMTH1 and INNSMTH2, respectively; MOWN is percentage managerial ownership as disclosed in the top five security holder disclosures in the annual reports; SCABAS2 it is the bid-ask spread scaled by share price of firm i on annual report release date in year t for a two-day return window; LPRICE it is the natural log of closing share price two days before the annual report release date; ACAR2 P is mean-adjusted absolute abnormal returns (ACAR2)

during the two-day event window around annual report release date calculated as CARð21 ; 0Þ ¼

Rð21 ; 0Þ 2 2*MRð270 ; 211Þ, R is the daily raw return in two-day time periods around annual report release date; MR(270, 2 11) is the mean stock return during trading days (270, 2 11); since business or economic cycles can strongly affect stock prices, the mean stock returns of trading days (270, 2 11) are used to control for any unusual returns behaviour shortly before the annual report release date; returns are calculated based on data provided by NZX Data; AAV2 is the absolute abnormal trading volume is calculated as the absolute value of the difference between mean daily trading volume around annual report release dates (21, 0) and the mean daily trading volume during a specified pre-annual report release date (270, 211); AAV2 is scaled by number of outstanding shares Rð21 ; 0Þ 2 2*MRð270 ; 211Þ, R is the daily raw return in two-day time periods around annual report release date; MR(270, 2 11) is the mean stock return during trading days (270, 2 11); since business or economic cycles can strongly affect stock prices, the mean stock returns of trading days (270, 2 11) are used to control for any unusual returns behaviour shortly before the annual report release date; returns are calculated based on data provided by NZX Data; AAV2 is the absolute abnormal trading volume is calculated as the absolute value of the difference between mean daily trading volume around annual report release dates (21, 0) and the mean daily trading volume during a specified pre-annual report release date (270, 211); AAV2 is scaled by number of outstanding shares

Ownership-

control variables used in the regression equations, the coefficient on LPRICE is

induced income

significantly negatively related to the bid-ask spread in all the regression equations. The coefficient on AAV2, as a measure of trading liquidity, is significantly negative as

smoothing

predicted. Finally, the coefficient on ACAR2 is found to be significantly positive.

5.3 Sensitivity analysis

Estimation of equation (1) without AVGOCF as an independent variable. (a) A reviewer suggested that we re-estimate regression equation (1) without AVGOCF as an independent variable because OCF appears on both sides of the equation. Untabulated result documents no significant change in our primary result (Table V). For SMTH1 measure, the coefficient on MOWN * DISCSMTH in column (4) of Table V remains unchanged at 0.09 although the t-statistic is reduced to 4.30 which is still significant at better than the 1 percent level. The corresponding coefficient for SMTH2 measure is

0.20 (t-statistic 1.99), a slight increase from the current reported coefficient of 0.17. Alternative bid-ask spread measurement window. We also use an alternative measurement window for the information asymmetry proxy, namely SCABAS7 (the bid-ask spread scaled by share price of firm i on annual report release date in year t for

a seven-day return window). Prior research suggests that although most market reaction to new information occurs on days 21 and 0 relative to the earnings announcement date,

it persists up to five days afterwards (Utama and Cready, 1997). Unreported regression results reveal that the coefficient on MOWN * DISCSMTH1 is positive and statistically significant at better than the 1 percent level in the comprehensive regression specification (coefficient 0.07, t-statistic 3.99). For SMTH2 measure, however, the coefficient becomes insignificant. Of the control variables, the LPRICE and AAV7 report coefficients that are consistent with theoretical predictions, but the coefficient on ACAR7 loses significance.