We examine the role of large information sets in the predictability of US stock using a large data set of over 400 predictors covering macro-, financial-, trade- and commodity-related variables over the period of 1960:Q1 to 2018:Q4. We consider 13 alternative models ranging from autoregressive models with no predictors to 5-factor, 60-factor and high dimensional models with over 400 predictors including assumptions of constant and time varying coefficients. We find that models that incorporate large predictors improve US stock return predictability. The outcome particularly favours models involving Dynamic Variable Selection prior with Variational Bayes (VBDV) for density forecast.
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Manchester Business Sch, Ctr Anal Investment Risk, Manchester M15 6PB, Lancs, England
Bocconi Univ, Dept Finance, I-20136 Milan, ItalyManchester Business Sch, Ctr Anal Investment Risk, Manchester M15 6PB, Lancs, England
Guidolin, Massimo
McMillan, David G.
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Univ Stirling, Accounting & Finance Div, Stirling Management Sch, Stirling FK9 4LA, ScotlandManchester Business Sch, Ctr Anal Investment Risk, Manchester M15 6PB, Lancs, England
McMillan, David G.
Wohar, Mark E.
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Univ Nebraska, Dept Econ, Omaha, NE 68182 USAManchester Business Sch, Ctr Anal Investment Risk, Manchester M15 6PB, Lancs, England
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Korea Dev Inst, Dept Financial Policy, Seoul, South KoreaKorea Dev Inst, Dept Financial Policy, Seoul, South Korea
Choi, Yongok
Jacewitz, Stefan
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Fed Deposit Insurance Corp, Ctr Financial Res, Washington, DC USAKorea Dev Inst, Dept Financial Policy, Seoul, South Korea
Jacewitz, Stefan
Park, Joon Y.
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Indiana Univ, Dept Econ, Bloomington, IN 47405 USA
Sungkyunkwan Univ, Dept Econ, Seoul, South KoreaKorea Dev Inst, Dept Financial Policy, Seoul, South Korea