Pemodelan Dan Pengklasifikasian Kabupaten Tertinggal Di Indonesia Dengan Pendekatan Multivariate Adaptive Regression Splines (MARS).

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= 0,987 − 0,037 ]^1 − 0,185 ]^3 − 0,039 ]^5 − 0,116 ]^7 + 0,005 ]^9
+ 0,927. 104a ]^11 − 0,002 ]^12 + 0,774 ]^15 + 1,023 ]^16 − 0,006 ]^17
− 0,035 ]^18 − 0,809. 104c ]^19 + 0,004 ]^23 − 0,001 ]^25
+ 0,489. 104d ]^28 + 0,004 ]^30 − 0,362. 104d ]^31 + 0,003 ]^33
− 0,219. 104a ]^34 + 0,985. 104a ]^35 − 0,009 ]^36 + 0,004 ]^38
+ 0,006 ]^39 − 0,199. 104c ]^40 − 0,005 ]^41 − 0,921. 104c ]^45
+ 0,048 ]^47 − 0,198 ]^48 − 0,082 ]^49 − 0,099 ]^51 + 0,024 ]^54
+ 0,742. 104a ]^56 + 0,020 ]^58 + 0,020 ]^59 − 0,006 ]^60
+ 0,864. 104c ]^62 + 0,469. 104a ]^64 + 0,172. 104c ]^68 − 0,015 ]^74
+ 0,133. 104c ]^76 + 0,322. 104c ]^78 − 0,129 ]^80

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]^1 = max 0, h2 − 611,910 ;
]^3 = max 0, h3 − 70,430 ;
]^4 = max 0, 70,430 − h3 ;
]^5 = max 0, h10 − 91,400 ;
]^7 = max 0, h5 − 94,890 ;
]^9 = max 0, h21 − 3,280 ;
]^11 = max 0, h18 − 21,200 ]^1 ;
]^12 = max 0, 21,200 − h18 ]^1 ;
]^14 = max 0, 27,270 − h24 ]^9 ;
]^15 = max 0, h15 − 0,185 ]^7 ;
]^16 = max 0, 0,185 − h15 ]^7 ;
]^17 = max 0, h18 − 36,810 ]^15 ;
]^18 = max 0, 36,810 − h18 ]^15 ;
]^19 = max 0, h6 − 129,000 ]^4 ;
]^23 = max 0, h2 − 621,320 ]^5 ;
]^24 = max 0, 621,320 − h2 ]^5 ;
]^25 = max 0, h12 − 60,760 ]^5 ;
]^26 = max 0, 60,760 − h12 ]^5 ;

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]^28 = max
]^30 = max
]^31 = max
]^33 = max
]^34 = max
]^35 = max
]^36 = max
]^38 = max
]^39 = max
]^40 = max
]^41 = max
]^45 = max
]^46 = max
]^47 = max
]^48 = max
]^49 = max
]^51 = max
]^54 = max
]^55 = max
]^56 = max
]^58 = max
]^59 = max
]^60 = max
]^62 = max
]^64 = max
]^68 = max
]^74 = max
]^76 = max
]^78 = max
]^80 = max

0, 286,899 − h17 ]^11 ;
0, 1,410 − h27 ]^24 ;
0, h13 − 3,000 ]^14 ;
0, 1,060 − h26 ]^19 ;
0, h11 − 2,090 ]^11 ;
0, 2,090 − h11 ]^11 ;
0, h2 − 633,190 ]^4 ;
0, h3 − 69,950 ]^1 ;
0, 69,950 − h3 ]^1 ;
0, h27 − 0,530 ]^39 ;
0, 0,530 − h27 ]^39 ;
0, 4,550 − h24 ]^39 ;
0, h18 − 23,450 ;
0, 23,450 − h18 ;
0, h16 − 1,554 ]^5 ;
0, 1,554 − h16 ]^5 ;
0, 1,770 − h11 ]^49 ;
0, h16 − 1,519 ]^1 ;
0, 1,519 − h16 ]^1 ;
0, h17 − 312,951 ]^54 ;
0, h3 − 69,250 ]^7 ;
0, 69,250 − h3 ]^7 ;
0, h1 − 11,730 ]^58 ;
0, h12 − 47,550 ]^55 ;
0, h6 − 266,000 ]^39 ;
0, h6 − 260,000 ]^46 ;
0, h16 − 1,691 ]^39 ;
0, h26 − 1,750 ]^26 ;
0, h1 − 9,560 ]^26 ;
0, h4 − 8,410 ;

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]^1 = max 0, h2 − 611,910
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]^48 = max 0, h16 − 1,554 ]^5 ;
]^5 = max 0, h10 − 91,400 ;
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