Hsiao (2003, 6 ) Maddala, Li, Trost and Joutz (1997) Hsiao and Pesaran (2004) 4.2 y it = γy it 1 + x itβ + ε it i = 1, 2,..., N t = 1, 2,...T (
|
|
|
- まれあ かわらい
- 9 years ago
- Views:
Transcription
1 Balestra and Nerlove (1966) (GMM) Arellano and Bond (1991) Arellano (2003) N T N T Smith and Fuerter (2004) 1 (the random coefficient model) Singer and Willett ( ) 2004)
2 Hsiao (2003, 6 ) Maddala, Li, Trost and Joutz (1997) Hsiao and Pesaran (2004) 4.2 y it = γy it 1 + x itβ + ε it i = 1, 2,..., N t = 1, 2,...T (1) γ x it K β K ε it ε it = µ i + u it (2) µ i iidn(0, σµ) 2, u it iidn(0, σu) 2 ε it N T 2 u it Maddala (2001) y it = x itβ + µ i + w it (3) w it = ρw it 1 + u it ρ < 1 (4) y it = γy it 1 + x itβ + µ i + u it (5) 2
3 Lillard and Willis (1978) AR(1) Lillard and Weiss (1979) Baltagi and Li (1991) Wansbeek (1992) (4) the Paris-Winsten (PW) transformation Maddala(2001) Nerlove(( ) (3) LSDV ŵ it 4) OLS ˆρ 3) y it = x itβ + µ i + u it (6) y it = y it ˆρy it 1 x it = x it ˆρx it 1 µ i = µ i (1 ˆρ) LSDV β µ i Bhargava, Franizini and Narendranathan (1982) Durbin-Watson Statistic w it = ρw it 1 + u it H 0 : ρ = 0 H 1 : ρ < 1 N T i=1 t=2 d = (ŵ wit ŵ wit 1 ) 2 N T i=1 t=1ŵ2 wit (7) û wit AR(1) AR(n) Baltagi and Li (1995) AR(1) AR(1) AR(1)
4 AR(1) MA(1) Balestra and Nerlove(1966) OLS Maddala (1971a, 1971b) Nickell (1981) (GMM) Maddala (2001) 4 Sevestre and Trognon (1996, pp ) Maddala (1971a) λ λ class β = 0 γ(λ) p lim ˆγ(0) < γ < p lim ˆγ(λ) < p lim ˆγ(1) < p within GLS poolingols lim between ˆγ( ) (8) GLS 3 Baltagi and Li (1995) Baltagi (2001,pp.90-95) (survival analysis)
5 Ridder and Wansbeek (1990, pp ) Trognon(1978) AR(1) x it = δx it 1 + w it w it N(0, σ 2 w) y i0 T γ Anderson and Hsiao (1981,1982) 4.3 Anderson and Hsiao (1981,1982) w it = γw it 1 + ρ z i + β x it + µ i + u it i = 1, 2,..N. t = 1, 2,...T (9) y it = w it + η i (10) µ i = (1 γ)η i E(η i ) = 0 V ar(η i ) = σ 2 η = σ 2 µ/(1 γ) 2 (11) z i 1 y i0 (µ i +ρ z i )/(1 γ) + β j=0 x it jγ j µ i y i0 y i0 µ i y i0 y i1 y i1... µ i 2 y i0 µ i u it y i0 = ȳ 0 + ε i ȳ 0 0 ε i iid ( 2a y i0 µ i ( 2b)y i0 µ i cov(y i0, µ i ) = ϕσy 2 0 y it [ϕε i /(1 γ)] = lim t E[y it ρ z i /(1 γ) β t 1 j=0 x it jγ j ε i ] 3 w i0 y it = w it + η i µ i = (1 γ)η i y it µ i y i0 η i + ρ z i /(1 γ) + β t 1 j=0 x it jγ j
6 w i0 3 w it 4 ( 4a)w i0 θ w σu/(1 2 γ 2 ) ( 4b)w i0 θ w σw 2 0 ( 4c)w i0 θ i0 σu/(1 2 γ 2 ) ( 4d)w i0 θ i0 σw0 2 Anderson and Hsiao (1981,1982) 8 5 L(γ, ρ, β, γ, η, σ 2 u, σ 2 w, σ 2 µ) = (2π) NT/2 v N/2 exp{ 1 2σ 2 (y it γy it 1 ρ z i β x it ) 2 } i t (12) v N T σ 2 µ = 0 Anderson and Hsiao (1981) (9) 10 z i µ i y it y it 1 = (x it x it 1 ) β + γ(y it 1 y it 2 ) + (u it u it 1 ) (13) u it 6 β γ 7 (y it 2 y it 3 ) 5 Anderson and Hsiao (1982) Hisao ( ) 6 y it 1 u it Hsiao (2003, pp.85-86)
7 ( γ iv β iv ) [ ( N T (y i,t 1 y i,t 2 )(y it 2 y it 3 ) (y it 2 y it 3 )(x it x it 1 ) ) = (x it x it 1 )(y it 2 y it 3 ) (x it x it 1 )(x it x it 1 ) i=1t=3 [ ( N T i=1t=3 (14) ) ] y it 2 y it 3 (y it y it 1 ) x it x it 1 )] 1 y it 2 ( γ iv β iv ) [ ( N T y it 2 (y i,t 1 y i,t 2 ) y it 2 (x it x it 1 ) ) = (x it x it 1 )y it 2 (x it x it 1 )(x it x it 1 ) i=1t=2 [ ( ) ] N T y it 2 (y it y it 1 ) i=1t=2 x it x it 1 )] 1 (15) (y i,t 1 y i,t 2 ) (y it 2 y it 3 ) y it ˆβ ˆγ 9 ρ ȳ it ˆγȳ it 1 ˆβ x it = ρ z i + µ i + ū it i = 1,..N (16) ȳ i = T t=1 y it/t, x i = T t=1 x it/t, ū i = T t=1 u it/t 3 σ 2 u σ2 µ N T σu 2 i=1 t=2 = it y it 1 ) ˆγ(y it 1 y it 2 ) ˆβ (x it x it 1 )] 2 2N(T 1) (17) N σµ 2 i=1 = i ˆγȳ i, 1 ˆρ z i ˆβ x i ) 1 N T ˆσ2 u (18) N T γ β σ 2 u ρ σµ 2 N N T Anderson and Hsiao (1982) N T T N 8 8 Arellano (1989) y it 2 y it 3 (y it 2 y it 3 )
8 γ 3 T N ρ N T 3 T N ρ N T γ ρ γ N T ( 3) T N T N Hsiao, Pesaran and Tahmiscioglu (2002) Fujiki, Hsiao and Shen (2002) Chamberlain (1982,1984) (Minimum Distance Estimation: MDE) 9 2 (β, γ) min[ N u i=1 i Ω 1 u i ] (19) Ω u i u i = [ y i1 β x i1 γ y i0, y i2 β x i2 γ y i1,...] N 4.4 Arellano and Bond (1991) Ahn and Schmidt (1995) 2 y 10 E[y is, (u it u i,t 1 )] = 0, s = 0, 1,...t 2, t = 2,...T (20) Arellano and Bond (1991) GMM) 1 n i=1 n y is[(y it y i,t 1 ) (y i,t 1 y i,t 2 ) γ (x it x i,t 1 ) β] = 0 (21) s = 0,..., t 2, t = 2,..., T 9 MDE Chamberlain (1982,1984) Lee(2002, 3 ) 10 Holtz-Eakin(1988) Holtz-Eakin, Newey and Rosen(1988)
9 (y i1, y i2, y i3,...y it 2 ) 11 [y i1 ] W i = 0 [y i1, y i2 ] (22) [y i1,...y it 2 ] 20) E(W i u i ) = 0 (23) 1 (y it y it 1 ) = (y it 1 y it 2 ) γ + (x it x it 1 ) β + (u it u it 1 ) (24) y it = y it 1γ+ x itβ+ u it i = 1, 2...N W i Arellano and Bond (1991) (GMM) (24) W y it = W y it 1γ + W x itβ + W u it (25) γ β ˆγ GMM = [( y it 1 ) W ˆβ GMM = [( x it 1 ) W 1 ˆV N W ( y it 1 )] 1 [( y it 1 ) 1 W ˆV N W ( y it )] (26) 1 ˆV N W ( x it 1 )] 1 [( x it 1 ) 1 W ˆV N W ( y it )] (27) V N = N i=1 W i ( u i)( u i ) W i 12 x it E(x it u is ) = 0, t, s = 1, 2,..., T x it µ i 24) x it x it (predetermined) E(x it u is ) 0 for s < t E(x it u is ) = 0 for s t (x i1, x i2,..., x is 1 ) W i 11 Baltagi (2001, p Arellano and Bond (1991, p.279) 25) one-step GMM two-step iid
10 Arellano and Bond (1991) GMM GMM Arellano and Bond (1991) j 13 1 r j = T 3 j T t=4+j r tj (28) r tj = E( u it u it j ) H 0 : r j = 0 m j = ˆr j SE(ˆr j ) (29) ˆr j û it ˆr tj = N 1 N i=1 û it û it j Arellano and Bond (1991) Sargan (1958) s = û W [ N i=1 W i ( û i )( û i ) W i ] 1 W ( û) χ 2 p k 1 (30) p W û 25) Arellano and Bond (1991) Ahn and Schmidt(1995) y y (u it u it 1 ) () E(y is u it ) = 0 t = 2,...T, s = 0, 1,...t 2 (31) E(u it u it ) = 0 t = 2,...T 1 (32) T (T 1)/2 + (T 2) (32) γ 1 σµ/σ 2 u 2 Ahn and Schmidt(1995) (31)(32) 1 i t cov(u it, y i0 ) cov(u it, y i0 ) = 0 13 Arellano (2003, pp )
11 i t cov(u it, µ i ) cov(u it, µ i ) = 0 3 i t s cov(u it, u is ) cov(u it, u is ) = GMM Chamberlain (1982,1984) (Minimum Distance Estomator) Blundell and Bond (1998) GMM GMM Anderson and Hsiao (1981,1982) GMM GMM Arellano and Bond GMM γ 1 µ i Blundell and Bond (1998) T=3 E(y i1 u i3 ) = 0 γ GMM y i2 = πy i1 + µ i + u i2 i = 1, 2,...N (33) γ 1 µ i π 0 y i1 y i2 E(y i1 µ i ) > 0 σ 2 µ = var(µ i ) σ 2 u = var(u it ) π k p lim ˆπ = (γ 1) (σµ/σ 2 u) 2 + k k = (1 γ) (1 + γ) (34) Blundell and Bond (1998) GMM Nelson amd Startz (1990) Staiger and Stock (1997) Ahn and Schumidt (1995) T-3 E(u it y it 1 ) = 0 t = 4, 5,...T (35) y i2 E(u i3 y i2 ) = 0 (36) y i y i0 y i0 t
12 y i1 = µ i 1 γ + u i1 (37) t = 2 y it (36) E[(µ i + u i3 )(u i2 + (γ 1)u i1 )] = 0 (38) E(u i1 µ i ) = E(u i1 u i3 ) = 0 i = 1, 2,...N (39) y i0 u i1 µ i /(1 γ) Blundell and Bond (1998) γ 1 σ µ/σ 2 u 2 (35)(36) GMM GMM Z + i GMM Z i y i Z + i = 0 0 y i (40) y it 1 Z i (T-2) m GMM y i Z i = 0 y i1 y i (41) y i1... y it 2 GMM σµ/σ 2 u 2 = 1, T = 4 GMM GMM γ = γ = γ = γ GMM GMM γ 1 σµ/σ 2 u 2
13 (GMM) GMM (OLS) GLS) (IV) (MDE) GMM GMM GMM Blundell and Bond (1998) GMM empirical likelihood empirical likelihood Owen (2001) Mittelhammer, Judge and Miller (2000) 16 STATA Johnston and DiNardo (
14 GMM Arellano and Bond (1991) N=100 T= GMM 2 GMM (IV) 3 two-step GMM Ziliak (1997) Ziliak (1997) N=532 T=8 iid GMM Keane and Runkle (1992) forward filter 2SLS(FF) 18 Ahn and Schmidt (1999) Crepon, Kramarz and Trognon (1997) Alonso-Borrego and Arellano (1999) N=100 T=4, GMM Alvarez and Arellano (2003) one-step GMM (LIML) N T 17 seed STATA seed Hayashi and Sims (1983) forward filtering
15 T/N 1/T 1/N 1/(2N-T) T GMM LIML T LIML GMM Blundell and Bond (1998) GMM N=100,200,500 T=4 GMM Binder, Hsiao, and Pesaran (2000) Hsiao, Pesaran and Tahmiscioglu (2002) Hsiao (2003) GMM GMM T=5 N=50, % GMM 15-20% GMM MDE GMM MDE GMM Hahn, Hausman and Kuersteiner (2002) 3 y n y n 3 (long differences;ld) Wansbeek and Bekker (1996) GMM Ahn and Schmidt (1995) Alvarez and Arellano (2003) T N T/N N/T N T
16 Frankel and Rose (1996) Pedroni(2001) Sala-i-Martin (1996) Nerlove (2000) Quah (1996) 2 Nagahata, Saita, Sekine and Tachibana (2004) spurious Levin-Lin (LL) test(1992,1993) Im-Pesaran-Shin (IPS) test(2003) Maddala-Wu (MW) test (1999) y it = γy it 1 + u it i = 1, 2,...N (42) t H 0 : γ 1 = 1 vs H 1 : γ 1 < 1 (43) Levin-Lin (LL) test H 0 : γ 1 = γ 2 =... = γ N = γ = 1 vs H 1 : γ 1 = γ 2 =... = γ N = γ < 1 (44)
17 O Connell(1998) Levin-Lin test Im-Pesaran-Shin (IPS) test Levin-Lin test H 0 : γ i = 1 for all i vs H 1 : γ i < 1 at least one i Maddala (2001, p.554) N Levin-Lin test Augmented Dickey-Fuller test N t M σ 2 t t M σ 2 /N Maddala-Wu test N Ronald A. Fisher (1973a) P i i p λ = 2 N i=1 log e P i 2N χ N P λ test Maddala and Wu (1999) Fisher Choi(1999) Fisher Fisher 4.7 STATA Wooldridge (2003) ( msu.edu/ ec/wooldridge/book2.htm) WAGEPAN.DTA Vella and Verbeek (1998) Wooldridge (2003) ln wage it = α + γ ln wage it 1 + β exp er it + δ exp er 2 it + ζhours it + ηhours it 1 + θunion i + κeduc i + λmarried i + νpoorhlth i + µ i + ν t + u it
18 ln wage = exp er = hours = union = 1 educ = married = 1 poorhlth = 1 ν t = STATA /**Dynamic Panel **/ /*Pooled OLS*/ reg lwage lwage 1 d81 d82 d83 d84 d85 d86 d87 exper expersq hours hours 1 union educ married poorhlth /*LSDV*/ xtreg lwage lwage 1 d81 d82 d83 d84 d85 d86 d87 exper expersq hours hours 1 union educ married poorhlth, fe est store fixed xtreg lwage lwage 1 d81 d82 d83 d84 d85 d86 d87 exper expersq hours hours 1 union educ married poorhlth, re xttest0 est store random hausman fixed random /*Anderson-Hsiao IV Estimation*/ xtivreg lwage lwage 1 d81 d82 d83 d84 d85 d86 exper expersq ( hours hours 1 = union educ married poorhlth ), re ec2sls /*Anderson-Hsiao Maximum Likelihood Estimation*/ xtreg lwage lwage 1 d81 d82 d83 d84 d85 d86 d87 exper expersq hours hours 1 union educ married poorhlth, mle /*Arellano-Bond GMM Estimation*/ xtabond lwage hours hours 1 d81 d82 d83 d84 d85 d86 d87, lags(1) inst(exper expersq union educ married poorhlth) artests(2) xtabond lwage hours hours 1 d81 d82 d83 d84 d85 d86 d87, lags(1) inst(exper expersq union educ married poorhlth) artests(2) robust
19 OLS γ F E(0.092) < MLE(0.17) < RE(0.49) = OLS(0.49) (IV) one-step GMM γ GMM IV GMM(0.31) < IV (0.57)
20
21 Dependent Variable: lwage Estimated Coefficient Pool OLS t-statistics Estimated Coefficient t-statistics Estimated Coefficient z-statistics Estimated Coefficient z-statistics lwage_ d d d d d d d (dropped) exper expersq hours hours_ union educ (dropped) married poorhlth _cons Fixed Random MLE Diagnostic Test Number of observation Number of groups (ari) R-sq: within between overall Log Likelihood F test that all u_i=0: sigma_u sigma_e rho Breusch and Pagan Lagrangian multiplier test for random effects: Hausman specification test Likelihood-ratio test of sigma_u = 0 for MLE F(544, 3757) = 6.19 Prob>F = chi2(1) = Prob > chi2 = chi2(13) = chibar2(01) = Prob>chibar2 =
22 Dependent Variable: lwage Estimated Coefficient z-statistics hours hours_ lwage_ d d d d d d exper expersq _cons Diagnostic Test Number of observation Number of groups R-sq: Wald test sigma_u sigma_e rho within between overall IV chi2(11) = Prob>chi2 = hours hours_1 lwage_1 d81 d82 d83 d84 d85 d86 exper Baltagi(2001) the error component two-stage least square (EC2SLS)
23 Dependent Variable: lwage one-step results Estimated Coefficient Robust z-statistics lwage_ hours hours_ d d d d d _cons Diagnostic Test Number of observation Number of groups Sargan test Wald test Arellano-Bond test for residual AR(1) Arellano-Bond test for residual AR(2) GMM chi2(26) = Prob>chi2 = chi2(8) = z = Prob>z = z = 2.20 Prob>z =
2004 2 µ i ν it IN(0, σ 2 ) 1 i ȳ i = β x i + µ i + ν i (2) 12 y it ȳ i = β(x it x i ) + (ν it ν i ) (3) 3 β 1 µ i µ i = ȳ i β x i (4) (least square d
2004 1 3 3.1 1 5 1 2 3.2 1 α = 0, λ t = 0 y it = βx it + µ i + ν it (1) 1 (1995)1998Fujiki and Kitamura (1995). 2004 2 µ i ν it IN(0, σ 2 ) 1 i ȳ i = β x i + µ i + ν i (2) 12 y it ȳ i = β(x it x i ) +
% 10%, 35%( 1029 ) p (a) 1 p 95% (b) 1 Std. Err. (c) p 40% 5% (d) p 1: STATA (1). prtesti One-sample test of pr
1 1. 2014 6 2014 6 10 10% 10%, 35%( 1029 ) p (a) 1 p 95% (b) 1 Std. Err. (c) p 40% 5% (d) p 1: STATA (1). prtesti 1029 0.35 0.40 One-sample test of proportion x: Number of obs = 1029 Variable Mean Std.
(p.2 ( ) 1 2 ( ) Fisher, Ronald A.1932, 1971, 1973a, 1973b) treatment group controll group (error function) 2 (Legendre, Adrian
2004 1 1 1.1 Maddala(1993) Mátyás and Sevestre (1996) Hsiao(2003) Baltagi(2001) Lee(2002) Woolridge(2002a), Arellano(2003) Journal of Econometrics Econometrica Greene(2000) Maddala(2001) Johnston and Di-
.. est table TwoSLS1 TwoSLS2 GMM het,b(%9.5f) se Variable TwoSLS1 TwoSLS2 GMM_het hi_empunion totchr
3,. Cameron and Trivedi (2010) Microeconometrics Using Stata, Revised Edition, Stata Press 6 Linear instrumentalvariables regression 9 Linear panel-data models: Extensions.. GMM xtabond., GMM(Generalized
4.9 Hausman Test Time Fixed Effects Model vs Time Random Effects Model Two-way Fixed Effects Model
1 EViews 5 2007 7 11 2010 5 17 1 ( ) 3 1.1........................................... 4 1.2................................... 9 2 11 3 14 3.1 Pooled OLS.............................................. 14
医系の統計入門第 2 版 サンプルページ この本の定価 判型などは, 以下の URL からご覧いただけます. このサンプルページの内容は, 第 2 版 1 刷発行時のものです.
医系の統計入門第 2 版 サンプルページ この本の定価 判型などは, 以下の URL からご覧いただけます. http://www.morikita.co.jp/books/mid/009192 このサンプルページの内容は, 第 2 版 1 刷発行時のものです. i 2 t 1. 2. 3 2 3. 6 4. 7 5. n 2 ν 6. 2 7. 2003 ii 2 2013 10 iii 1987
2 1,2, , 2 ( ) (1) (2) (3) (4) Cameron and Trivedi(1998) , (1987) (1982) Agresti(2003)
3 1 1 1 2 1 2 1,2,3 1 0 50 3000, 2 ( ) 1 3 1 0 4 3 (1) (2) (3) (4) 1 1 1 2 3 Cameron and Trivedi(1998) 4 1974, (1987) (1982) Agresti(2003) 3 (1)-(4) AAA, AA+,A (1) (2) (3) (4) (5) (1)-(5) 1 2 5 3 5 (DI)
第11回:線形回帰モデルのOLS推定
11 OLS 2018 7 13 1 / 45 1. 2. 3. 2 / 45 n 2 ((y 1, x 1 ), (y 2, x 2 ),, (y n, x n )) linear regression model y i = β 0 + β 1 x i + u i, E(u i x i ) = 0, E(u i u j x i ) = 0 (i j), V(u i x i ) = σ 2, i
²�ËÜËܤǻþ·ÏÎó²òÀÏÊÙ¶¯²ñ - Â裱¾Ï¤ÈÂ裲¾ÏÁ°È¾
Kano Lab. Yuchi MATSUOKA December 22, 2016 1 / 32 1 1.1 1.2 1.3 1.4 2 ARMA 2.1 ARMA 2 / 32 1 1.1 1.2 1.3 1.4 2 ARMA 2.1 ARMA 3 / 32 1.1.1 - - - 4 / 32 1.1.2 - - - - - 5 / 32 1.1.3 y t µ t = E(y t ), V
最小2乗法
2 2012 4 ( ) 2 2012 4 1 / 42 X Y Y = f (X ; Z) linear regression model X Y slope X 1 Y (X, Y ) 1 (X, Y ) ( ) 2 2012 4 2 / 42 1 β = β = β (4.2) = β 0 + β (4.3) ( ) 2 2012 4 3 / 42 = β 0 + β + (4.4) ( )
s = 1.15 (s = 1.07), R = 0.786, R = 0.679, DW =.03 5 Y = 0.3 (0.095) (.708) X, R = 0.786, R = 0.679, s = 1.07, DW =.03, t û Y = 0.3 (3.163) + 0
7 DW 7.1 DW u 1, u,, u (DW ) u u 1 = u 1, u,, u + + + - - - - + + - - - + + u 1, u,, u + - + - + - + - + u 1, u,, u u 1, u,, u u +1 = u 1, u,, u Y = α + βx + u, u = ρu 1 + ɛ, H 0 : ρ = 0, H 1 : ρ 0 ɛ 1,
( 30 ) 30 4 5 1 4 1.1............................................... 4 1.............................................. 4 1..1.................................. 4 1.......................................
Microsoft Word - 表紙.docx
黒住英司 [ 著 ] サピエンティア 計量経済学 訂正および練習問題解答 (206/2/2 版 ) 訂正 練習問題解答 3 .69, 3.8 4 (X i X)U i i i (X i μ x )U i ( X μx ) U i. i E [ ] (X i μ x )U i i E[(X i μ x )]E[U i ]0. i V [ ] (X i μ x )U i i 2 i j E [(X i
renshumondai-kaito.dvi
3 1 13 14 1.1 1 44.5 39.5 49.5 2 0.10 2 0.10 54.5 49.5 59.5 5 0.25 7 0.35 64.5 59.5 69.5 8 0.40 15 0.75 74.5 69.5 79.5 3 0.15 18 0.90 84.5 79.5 89.5 2 0.10 20 1.00 20 1.00 2 1.2 1 16.5 20.5 12.5 2 0.10
³ÎΨÏÀ
2017 12 12 Makoto Nakashima 2017 12 12 1 / 22 2.1. C, D π- C, D. A 1, A 2 C A 1 A 2 C A 3, A 4 D A 1 A 2 D Makoto Nakashima 2017 12 12 2 / 22 . (,, L p - ). Makoto Nakashima 2017 12 12 3 / 22 . (,, L p
Microsoft Word - 計量研修テキスト_第5版).doc
Q10-2 テキスト P191 1. 記述統計量 ( 変数 :YY95) 表示変数として 平均 中央値 最大値 最小値 標準偏差 観測値 を選択 A. 都道府県別 Descriptive Statistics for YY95 Categorized by values of PREFNUM Date: 05/11/06 Time: 14:36 Sample: 1990 2002 Included
TOP URL 1
TOP URL http://amonphys.web.fc.com/ 3.............................. 3.............................. 4.3 4................... 5.4........................ 6.5........................ 8.6...........................7
ii 3.,. 4. F. (), ,,. 8.,. 1. (75%) (25%) =7 20, =7 21 (. ). 1.,, (). 3.,. 1. ().,.,.,.,.,. () (12 )., (), 0. 2., 1., 0,.
24(2012) (1 C106) 4 11 (2 C206) 4 12 http://www.math.is.tohoku.ac.jp/~obata,.,,,.. 1. 2. 3. 4. 5. 6. 7.,,. 1., 2007 (). 2. P. G. Hoel, 1995. 3... 1... 2.,,. ii 3.,. 4. F. (),.. 5... 6.. 7.,,. 8.,. 1. (75%)
y = x x R = 0. 9, R = σ $ = y x w = x y x x w = x y α ε = + β + x x x y α ε = + β + γ x + x x x x' = / x y' = y/ x y' =
y x = α + β + ε =,, ε V( ε) = E( ε ) = σ α $ $ β w ( 0) σ = w σ σ y α x ε = + β + w w w w ε / w ( w y x α β ) = α$ $ W = yw βwxw $β = W ( W) ( W)( W) w x x w x x y y = = x W y W x y x y xw = y W = w w
N cos s s cos ψ e e e e 3 3 e e 3 e 3 e
3 3 5 5 5 3 3 7 5 33 5 33 9 5 8 > e > f U f U u u > u ue u e u ue u ue u e u e u u e u u e u N cos s s cos ψ e e e e 3 3 e e 3 e 3 e 3 > A A > A E A f A A f A [ ] f A A e > > A e[ ] > f A E A < < f ; >
.2 ρ dv dt = ρk grad p + 3 η grad (divv) + η 2 v.3 divh = 0, rote + c H t = 0 dive = ρ, H = 0, E = ρ, roth c E t = c ρv E + H c t = 0 H c E t = c ρv T
NHK 204 2 0 203 2 24 ( ) 7 00 7 50 203 2 25 ( ) 7 00 7 50 203 2 26 ( ) 7 00 7 50 203 2 27 ( ) 7 00 7 50 I. ( ν R n 2 ) m 2 n m, R = e 2 8πε 0 hca B =.09737 0 7 m ( ν = ) λ a B = 4πε 0ħ 2 m e e 2 = 5.2977
006 11 8 0 3 1 5 1.1..................... 5 1......................... 6 1.3.................... 6 1.4.................. 8 1.5................... 8 1.6................... 10 1.6.1......................
I A A441 : April 15, 2013 Version : 1.1 I Kawahira, Tomoki TA (Shigehiro, Yoshida )
I013 00-1 : April 15, 013 Version : 1.1 I Kawahira, Tomoki TA (Shigehiro, Yoshida) http://www.math.nagoya-u.ac.jp/~kawahira/courses/13s-tenbou.html pdf * 4 15 4 5 13 e πi = 1 5 0 5 7 3 4 6 3 6 10 6 17
微分積分 サンプルページ この本の定価 判型などは, 以下の URL からご覧いただけます. このサンプルページの内容は, 初版 1 刷発行時のものです.
微分積分 サンプルページ この本の定価 判型などは, 以下の URL からご覧いただけます. ttp://www.morikita.co.jp/books/mid/00571 このサンプルページの内容は, 初版 1 刷発行時のものです. i ii 014 10 iii [note] 1 3 iv 4 5 3 6 4 x 0 sin x x 1 5 6 z = f(x, y) 1 y = f(x)
Hanbury-Brown Twiss (ver. 2.0) van Cittert - Zernike mutual coherence
Hanbury-Brown Twiss (ver. 2.) 25 4 4 1 2 2 2 2.1 van Cittert - Zernike..................................... 2 2.2 mutual coherence................................. 4 3 Hanbury-Brown Twiss ( ) 5 3.1............................................
ii 3.,. 4. F. (), ,,. 8.,. 1. (75% ) (25% ) =9 7, =9 8 (. ). 1.,, (). 3.,. 1. ( ).,.,.,.,.,. ( ) (1 2 )., ( ), 0. 2., 1., 0,.
23(2011) (1 C104) 5 11 (2 C206) 5 12 http://www.math.is.tohoku.ac.jp/~obata,.,,,.. 1. 2. 3. 4. 5. 6. 7.,,. 1., 2007 ( ). 2. P. G. Hoel, 1995. 3... 1... 2.,,. ii 3.,. 4. F. (),.. 5.. 6.. 7.,,. 8.,. 1. (75%
パネル・データの分析
パネル データの分析 内容 パネル データとは pooled cross section data の分析 パネルデータの分析 DID (Difference in Differences) モデル パネル データの分析 階差モデル (first difference model) fixed effects model random effects model パネル分析の実際 データ セットの作成
Stata 11 Stata ts (ARMA) ARCH/GARCH whitepaper mwp 3 mwp-083 arch ARCH 11 mwp-051 arch postestimation 27 mwp-056 arima ARMA 35 mwp-003 arima postestim
TS001 Stata 11 Stata ts (ARMA) ARCH/GARCH whitepaper mwp 3 mwp-083 arch ARCH 11 mwp-051 arch postestimation 27 mwp-056 arima ARMA 35 mwp-003 arima postestimation 49 mwp-055 corrgram/ac/pac 56 mwp-009 dfgls
1 1 1 1-1 1 1-9 1-3 1-1 13-17 -3 6-4 6 3 3-1 35 3-37 3-3 38 4 4-1 39 4- Fe C TEM 41 4-3 C TEM 44 4-4 Fe TEM 46 4-5 5 4-6 5 5 51 6 5 1 1-1 1991 1,1 multiwall nanotube 1993 singlewall nanotube ( 1,) sp 7.4eV
第13回:交差項を含む回帰・弾力性の推定
13 2018 7 27 1 / 31 1. 2. 2 / 31 y i = β 0 + β X x i + β Z z i + β XZ x i z i + u i, E(u i x i, z i ) = 0, E(u i u j x i, z i ) = 0 (i j), V(u i x i, z i ) = σ 2, i = 1, 2,, n x i z i 1 3 / 31 y i = β
5 : 1 1
5 : 1 1 2 2 1 y = β 0 + β 1 x + u x u Cov(x, u) 0 β 0 β 1 x x u z Cov(z, u) = 0 Cov(z, x) 0 z x (1) z u (2)z x (3)z x Cov(z, u) = 0 Cov(z, x) 0 1 = 0 x = π 0 + π 1 z + v 1 Bowden and Turkington (1984)
Part () () Γ Part ,
Contents a 6 6 6 6 6 6 6 7 7. 8.. 8.. 8.3. 8 Part. 9. 9.. 9.. 3. 3.. 3.. 3 4. 5 4.. 5 4.. 9 4.3. 3 Part. 6 5. () 6 5.. () 7 5.. 9 5.3. Γ 3 6. 3 6.. 3 6.. 3 6.3. 33 Part 3. 34 7. 34 7.. 34 7.. 34 8. 35
waseda2010a-jukaiki1-main.dvi
November, 2 Contents 6 2 8 3 3 3 32 32 33 5 34 34 6 35 35 7 4 R 2 7 4 4 9 42 42 2 43 44 2 5 : 2 5 5 23 52 52 23 53 53 23 54 24 6 24 6 6 26 62 62 26 63 t 27 7 27 7 7 28 72 72 28 73 36) 29 8 29 8 29 82 3
n (1.6) i j=1 1 n a ij x j = b i (1.7) (1.7) (1.4) (1.5) (1.4) (1.7) u, v, w ε x, ε y, ε x, γ yz, γ zx, γ xy (1.8) ε x = u x ε y = v y ε z = w z γ yz
1 2 (a 1, a 2, a n ) (b 1, b 2, b n ) A (1.1) A = a 1 b 1 + a 2 b 2 + + a n b n (1.1) n A = a i b i (1.2) i=1 n i 1 n i=1 a i b i n i=1 A = a i b i (1.3) (1.3) (1.3) (1.1) (ummation convention) a 11 x
n ξ n,i, i = 1,, n S n ξ n,i n 0 R 1,.. σ 1 σ i .10.14.15 0 1 0 1 1 3.14 3.18 3.19 3.14 3.14,. ii 1 1 1.1..................................... 1 1............................... 3 1.3.........................
数学の基礎訓練I
I 9 6 13 1 1 1.1............... 1 1................ 1 1.3.................... 1.4............... 1.4.1.............. 1.4................. 3 1.4.3........... 3 1.4.4.. 3 1.5.......... 3 1.5.1..............
II III II 1 III ( ) [2] [3] [1] 1 1:
2015 4 16 1. II III II 1 III () [2] [3] 2013 11 18 [1] 1 1: [5] [6] () [7] [1] [1] 1998 4 2008 8 2014 8 6 [1] [1] 2 3 4 5 2. 2.1. t Dt L DF t A t (2.1) A t = Dt L + Dt F (2.1) 3 2 1 2008 9 2008 8 2008
1 (Berry,1975) 2-6 p (S πr 2 )p πr 2 p 2πRγ p p = 2γ R (2.5).1-1 : : : : ( ).2 α, β α, β () X S = X X α X β (.1) 1 2
2005 9/8-11 2 2.2 ( 2-5) γ ( ) γ cos θ 2πr πρhr 2 g h = 2γ cos θ ρgr (2.1) γ = ρgrh (2.2) 2 cos θ θ cos θ = 1 (2.2) γ = 1 ρgrh (2.) 2 2. p p ρgh p ( ) p p = p ρgh (2.) h p p = 2γ r 1 1 (Berry,1975) 2-6
,. Black-Scholes u t t, x c u 0 t, x x u t t, x c u t, x x u t t, x + σ x u t, x + rx ut, x rux, t 0 x x,,.,. Step 3, 7,,, Step 6., Step 4,. Step 5,,.
9 α ν β Ξ ξ Γ γ o δ Π π ε ρ ζ Σ σ η τ Θ θ Υ υ ι Φ φ κ χ Λ λ Ψ ψ µ Ω ω Def, Prop, Th, Lem, Note, Remark, Ex,, Proof, R, N, Q, C [a, b {x R : a x b} : a, b {x R : a < x < b} : [a, b {x R : a x < b} : a,
2 G(k) e ikx = (ik) n x n n! n=0 (k ) ( ) X n = ( i) n n k n G(k) k=0 F (k) ln G(k) = ln e ikx n κ n F (k) = F (k) (ik) n n= n! κ n κ n = ( i) n n k n
. X {x, x 2, x 3,... x n } X X {, 2, 3, 4, 5, 6} X x i P i. 0 P i 2. n P i = 3. P (i ω) = i ω P i P 3 {x, x 2, x 3,... x n } ω P i = 6 X f(x) f(x) X n n f(x i )P i n x n i P i X n 2 G(k) e ikx = (ik) n
solutionJIS.dvi
May 0, 006 6 [email protected] /9/005 (7 0/5/006 1 1.1 (a) (b) (c) c + c + + c = nc (x 1 x)+(x x)+ +(x n x) =(x 1 + x + + x n ) nx = nx nx =0 c(x 1 x)+c(x x)+ + c(x n x) =c (x i x) =0 y i (x
と入力する すると最初の 25 行が表示される 1 行目は変数の名前であり 2 列目は企業番号 (1,,10),3 列目は西暦 (1935,,1954) を表している ( 他のパネルデータを分析する際もデ ータをこのように並べておかなくてはならない つまりまず i=1 を固定し i=1 の t に関
R によるパネルデータモデルの推定 R を用いて 静学的パネルデータモデルに対して Pooled OLS, LSDV (Least Squares Dummy Variable) 推定 F 検定 ( 個別効果なしの F 検定 ) GLS(Generalized Least Square : 一般化最小二乗 ) 法による推定 およびハウスマン検定を行うやり方を 動学的パネルデータモデルに対して 1 階階差
1 15 R Part : website:
1 15 R Part 4 2017 7 24 4 : website: email: http://www3.u-toyama.ac.jp/kkarato/ [email protected] 1 2 2 3 2.1............................... 3 2.2 2................................. 4 2.3................................
18 I ( ) (1) I-1,I-2,I-3 (2) (3) I-1 ( ) (100 ) θ ϕ θ ϕ m m l l θ ϕ θ ϕ 2 g (1) (2) 0 (3) θ ϕ (4) (3) θ(t) = A 1 cos(ω 1 t + α 1 ) + A 2 cos(ω 2 t + α
18 I ( ) (1) I-1,I-2,I-3 (2) (3) I-1 ( ) (100 ) θ ϕ θ ϕ m m l l θ ϕ θ ϕ 2 g (1) (2) 0 (3) θ ϕ (4) (3) θ(t) = A 1 cos(ω 1 t + α 1 ) + A 2 cos(ω 2 t + α 2 ), ϕ(t) = B 1 cos(ω 1 t + α 1 ) + B 2 cos(ω 2 t
, 3, 6 = 3, 3,,,, 3,, 9, 3, 9, 3, 3, 4, 43, 4, 3, 9, 6, 6,, 0 p, p, p 3,..., p n N = p p p 3 p n + N p n N p p p, p 3,..., p n p, p,..., p n N, 3,,,,
6,,3,4,, 3 4 8 6 6................................. 6.................................. , 3, 6 = 3, 3,,,, 3,, 9, 3, 9, 3, 3, 4, 43, 4, 3, 9, 6, 6,, 0 p, p, p 3,..., p n N = p p p 3 p n + N p n N p p p,
オーストラリア研究紀要 36号(P)☆/3.橋本
36 p.9 202010 Tourism Demand and the per capita GDP : Evidence from Australia Keiji Hashimoto Otemon Gakuin University Abstract Using Australian quarterly data1981: 2 2009: 4some time-series econometrics
x 3 a (mod p) ( ). a, b, m Z a b m a b (mod m) a b m 2.2 (Z/mZ). a = {x x a (mod m)} a Z m 0, 1... m 1 Z/mZ = {0, 1... m 1} a + b = a +
1 1 22 1 x 3 (mod ) 2 2.1 ( )., b, m Z b m b (mod m) b m 2.2 (Z/mZ). = {x x (mod m)} Z m 0, 1... m 1 Z/mZ = {0, 1... m 1} + b = + b, b = b Z/mZ 1 1 Z Q R Z/Z 2.3 ( ). m {x 0, x 1,..., x m 1 } modm 2.4
こんにちは由美子です
Analysis of Variance 2 two sample t test analysis of variance (ANOVA) CO 3 3 1 EFV1 µ 1 µ 2 µ 3 H 0 H 0 : µ 1 = µ 2 = µ 3 H A : Group 1 Group 2.. Group k population mean µ 1 µ µ κ SD σ 1 σ σ κ sample mean
0406_total.pdf
59 7 7.1 σ-ω σ-ω σ ω σ = σ(r), ω µ = δ µ,0 ω(r) (6-4) (iγ µ µ m U(r) γ 0 V (r))ψ(x) = 0 (7-1) U(r) = g σ σ(r), V (r) = g ω ω(r) σ(r) ω(r) (6-3) ( 2 + m 2 σ)σ(r) = g σ ψψ (7-2) ( 2 + m 2 ω)ω(r) = g ω ψγ
II ( ) (7/31) II ( [ (3.4)] Navier Stokes [ (6/29)] Navier Stokes 3 [ (6/19)] Re
II 29 7 29-7-27 ( ) (7/31) II (http://www.damp.tottori-u.ac.jp/~ooshida/edu/fluid/) [ (3.4)] Navier Stokes [ (6/29)] Navier Stokes 3 [ (6/19)] Reynolds [ (4.6), (45.8)] [ p.186] Navier Stokes I Euler Navier
1 variation 1.1 imension unit L m M kg T s Q C QT 1 A = C s 1 MKSA F = ma N N = kg m s 1.1 J E = 1 mv W = F x J = kg m s 1 = N m 1.
1.1 1. 1.3.1..3.4 3.1 3. 3.3 4.1 4. 4.3 5.1 5. 5.3 6.1 6. 6.3 7.1 7. 7.3 1 1 variation 1.1 imension unit L m M kg T s Q C QT 1 A = C s 1 MKSA F = ma N N = kg m s 1.1 J E = 1 mv W = F x J = kg m s 1 = N
ω 0 m(ẍ + γẋ + ω0x) 2 = ee (2.118) e iωt x = e 1 m ω0 2 E(ω). (2.119) ω2 iωγ Z N P(ω) = χ(ω)e = exzn (2.120) ϵ = ϵ 0 (1 + χ) ϵ(ω) ϵ 0 = 1 +
2.6 2.6.1 ω 0 m(ẍ + γẋ + ω0x) 2 = ee (2.118) e iωt x = e 1 m ω0 2 E(ω). (2.119) ω2 iωγ Z N P(ω) = χ(ω)e = exzn (2.120) ϵ = ϵ 0 (1 + χ) ϵ(ω) ϵ 0 = 1 + Ne2 m j f j ω 2 j ω2 iωγ j (2.121) Z ω ω j γ j f j
seminar0220a.dvi
1 Hi-Stat 2 16 2 20 16:30-18:00 2 2 217 1 COE 4 COE RA E-MAIL: [email protected] 2004 2 25 S-PLUS S-PLUS S-PLUS S-code 2 [8] [8] [8] 1 2 ARFIMA(p, d, q) FI(d) φ(l)(1 L) d x t = θ(l)ε t ({ε t }
7 π L int = gψ(x)ψ(x)φ(x) + (7.4) [ ] p ψ N = n (7.5) π (π +,π 0,π ) ψ (σ, σ, σ )ψ ( A) σ τ ( L int = gψψφ g N τ ) N π * ) (7.6) π π = (π, π, π ) π ±
7 7. ( ) SU() SU() 9 ( MeV) p 98.8 π + π 0 n 99.57 9.57 97.4 497.70 δm m 0.4%.% 0.% 0.8% π 9.57 4.96 Σ + Σ 0 Σ 89.6 9.46 K + K 0 49.67 (7.) p p = αp + βn, n n = γp + δn (7.a) [ ] p ψ ψ = Uψ, U = n [ α
