「スウェーデン企業におけるワーク・ライフ・バランス調査 」報告書
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- けいしょう みしま
- 5 years ago
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59 i H 0 : i = 1,,6 p = 1 i p2 i H 0 : i p > 1 i p2 i p < 1 i p2i
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61 5 [ y z, z, z, s, l ] exp( α + α z + α z + α z + β ( s ) l + β s l ) E i 2i 3i 4i i i 1 2 2i 3 3i 4 4i 1 1 i i 2 = (1) i i yi z 2 =1 =0 i z 3 =1 =0 i z 4 =1 =0 i i s =1 =0 l =1,, =5 i α1 α 1 + α 2 α 1 + α 3 α 1 + α 4 α 2 α 3 α 4 β β 1 2 (2)
62
63 21 22 (3) 1 (1) Hurdle model Count data model 0 138
64 0 1 (2.1) (2.2) Pr Pr [ y 0 ] = ( 1+ µ ) 1 i = i 1i [, > 0] x i y i y i x (2.1) µ y i 1 2i x i = µ 2i 1+ µ (2.2) 2i ( z z, z, s, l ) = 2i, 3i 4i i i ( α11 + α12 z2i + α13z3i + α14 z4i + β11li 1sili ) ( α + α + α z + α z + β l s l ) µ + 1i exp γ i z2i 23 3i 24 4i 21 i 2 µ 2 exp + γ i i (1) Cameron and Trivedi (1998) Chapter 4 139
65 5% 3 5% (2.1) (2.1) 0 0 (2.2) [ y i x, y i > 0] = 1+ µ i E i % 6 Cameron and Trivedi (1998) Chapter 4 140
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67 Cameron A.C. and P.K. Trivedi (1998) Regression Analysis of Count Data, Cambridge: Cambridge University Press. Conover, W.J. (1999) Practical Nonparametric Statistics Third Edition, NY: John Wiley & Sons. 142
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