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On the Persistence of Abnormal Returns: an Analysis Using Structural Equation Models. Albert Satorra Universitat Pompeu Fabra. Barcelona & Juan Carlos Bou Universitat Jaume I. Castelló. Bou and Satorra (2007), SMJ. This talk.
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On the Persistence of Abnormal Returns: an Analysis Using Structural Equation Models Albert Satorra Universitat Pompeu Fabra. Barcelona & Juan Carlos Bou Universitat Jaume I. Castelló Bou and Satorra (2007), SMJ
This talk • Introduction: permanent and transitory components of profits (ROA) • Data & model • Substantive hypotheses • SEM: one- and two-level analyses • Variance decomposition of profits: • temporary vs permanent • Industry vs firm levels
actual profit rates differ widely across firms, both between and within industries. • Some firms show what can be regarded as ``abnormal returns'', i.e. returns that deviate substantially from the mean return level of all the firms. • According to economic theory, in a ``competitive market'' these differences should disappear as the time passes. • How much evidence exists of the persistence of abnormal returns, or how much variation of the returns can be attributed to permanent and time-vanishing components Introduction
Data • Initial sample: 5000 Spanish firms (excluding finance and public companies) • Screened database: 4931 firms • Financial Profit data were collected for each firm (Return On Assets, ROA) • 6 Time Period: 1995 – 2000 • Firms were classified by 4-digit SIC code • Number of Industries: 342(quasi average number of firms: 14.28)
Intraclass Correlations (within industry) Variable Correlation Y1 0.070 Y2 0.082 Y3 0.085 Y4 0.107 Y5 0.121 Y6 0.088
Seminario Modelos de Ecuaciones Estructurales. Universitat Jaume I, Castelló, 12 y 13 de Julio de 2004 Albert Satorra & Juan Carlos Bou Anderson and Hsiao's State-Dependence model (1982) Using SEM, this is Kenny and Zautra's (1985) Trait-State-Error model.Here we extend these models to two-level data
Test statistics See Satorra (1982) for asymptotic robustness of these normal-theory test statistics, and Satorra and Bentler (1994) for robust versions of these statistics.
Estimates for one-level model Chi2 goodness-of-fit test = 17.45, df = 10, p-value = 0.095 All the variances of the D’s are equal except for D of 1998 (that has greater variance, 28.14) . The variances of the E’s are unrestricted. Variance of A1 subject to a non-linear restriction.
IP TWO-LEVEL SEM: * INDUSTRY level: * FIRM level: 1 1 1 1 1 1 ROA95 ROA96 ROA97 ROA98 ROA99 ROA00 E1 E2 E3 E4 E5 E6 1 1 1 1 1 1 b b b b b AI AI AI AI AI AI 0 0 0 0 0 1 2 3 4 5 6 DI DI DI DI DI DI 1 2 3 4 5 6 FP 1 1 1 1 1 1 ROA95 ROA96 ROA97 ROA98 ROA99 ROA00 E1 E2 E3 E4 E5 E6 1 1 1 1 1 1 b b b b b AF AF AF AF AF AF 1 1 1 1 1 1 2 3 4 5 6 DF DF DF DF DF DF 1 2 3 4 5 6
Two-level variation zgi := (Yig1, Yig2, ...., YigT)’ Firm: i=1,2, ..., ng; Industry: g=1, 2, ..., G Time: t=1,2, ..., T zgi = m + ug + vig level 1: vig~ S1 = S1 (q) level 2: ug~S2 = S2 (q)
... in the balanced case See Muthén and Satorra, 1995
TESTS OF MODEL FIT Chi-Square Test of Model Fit Value 32.727* Degrees of Freedom 31 P-Value 0.3821 Scaling Correction Factor 2.411 for MLM
Conclusions: two-level model Var(A) Var(P) • There exist significant permanent and temporary profit differences at industry and firm level INSERT TABLE 5 • Industry effects < Firm effects • Industry permanent differences < firm permanent differences • Industry temporary differences < firm temporary differences • The same “memory” parameter, common b = .72 , of the transitory component of firm and industry levels (noise, Var(D), is not included in this variance decomposition)