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Investor Sentiment as a Predictor of Market Returns

Research output: Working paper

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Investor Sentiment as a Predictor of Market Returns. / Kaivanto, Kim; Zhang, Peng.
Lancaster University, Department of Economics, 2019. (Economics Working Papers Series).

Research output: Working paper

Harvard

Kaivanto, K & Zhang, P 2019 'Investor Sentiment as a Predictor of Market Returns' Economics Working Papers Series, Lancaster University, Department of Economics.

APA

Kaivanto, K., & Zhang, P. (2019). Investor Sentiment as a Predictor of Market Returns. (Economics Working Papers Series). Lancaster University, Department of Economics.

Vancouver

Kaivanto K, Zhang P. Investor Sentiment as a Predictor of Market Returns. Lancaster University, Department of Economics. 2019 Jun. (Economics Working Papers Series).

Author

Kaivanto, Kim ; Zhang, Peng. / Investor Sentiment as a Predictor of Market Returns. Lancaster University, Department of Economics, 2019. (Economics Working Papers Series).

Bibtex

@techreport{6ee8fa2e07d64dd080d8273393017e1b,
title = "Investor Sentiment as a Predictor of Market Returns",
abstract = "Investor sentiment's effect on asset prices has been studied extensively to date, without delivering consistent results across samples and datasets. We investigate the asset-pricing impacts of eight widely cited investor-sentiment indicators (one direct, six indirect, one composite), within a unified long-horizon regression framework, predicting real NYSE-index returns over horizon lengths of 1, 3, 12, 24, 36, and 48 months. Results reveal that three of the non-composite indicators have consistent predictive power: the Michigan Index of Consumer Sentiment (MICS), IPO volume (NIPO), and the dividend premium (PDND). This finding has implications for the widely cited Baker-Wurgler first principal component (SFPC) composite indicator, which extracts information from the full set of six indirect indicators. As the diffusion-index literature shows, this type of wide-net approach is likely to impound idiosyncratic noise into the composite summary indicator, exacerbating forecasting errors. Therefore we create a new `targeted' composite indicator from the first principal component of the three indicators that perform well in long-horizon regressions, i.e. MICS, NIPO, and PDND. The resulting targeted composite indicator outperforms SFPC in a market-returns prediction horse race. Whereas SFPC primarily predicts Equally Weighted Returns (EWR) rather than Value Weighted Returns (VWR), our new sentiment indicator performs better than SFPC in predicting both VWR and EWR. This improved performance is due in part to a reduction in overfitting, and in part to incorporation of the direct sentiment indicator MICS. ",
keywords = "investor sentiment, market return, predictability, long-horizon regression, bootstrap diffusion index, composite index, overfitting",
author = "Kim Kaivanto and Peng Zhang",
year = "2019",
month = jun,
language = "English",
series = "Economics Working Papers Series",
publisher = "Lancaster University, Department of Economics",
type = "WorkingPaper",
institution = "Lancaster University, Department of Economics",

}

RIS

TY - UNPB

T1 - Investor Sentiment as a Predictor of Market Returns

AU - Kaivanto, Kim

AU - Zhang, Peng

PY - 2019/6

Y1 - 2019/6

N2 - Investor sentiment's effect on asset prices has been studied extensively to date, without delivering consistent results across samples and datasets. We investigate the asset-pricing impacts of eight widely cited investor-sentiment indicators (one direct, six indirect, one composite), within a unified long-horizon regression framework, predicting real NYSE-index returns over horizon lengths of 1, 3, 12, 24, 36, and 48 months. Results reveal that three of the non-composite indicators have consistent predictive power: the Michigan Index of Consumer Sentiment (MICS), IPO volume (NIPO), and the dividend premium (PDND). This finding has implications for the widely cited Baker-Wurgler first principal component (SFPC) composite indicator, which extracts information from the full set of six indirect indicators. As the diffusion-index literature shows, this type of wide-net approach is likely to impound idiosyncratic noise into the composite summary indicator, exacerbating forecasting errors. Therefore we create a new `targeted' composite indicator from the first principal component of the three indicators that perform well in long-horizon regressions, i.e. MICS, NIPO, and PDND. The resulting targeted composite indicator outperforms SFPC in a market-returns prediction horse race. Whereas SFPC primarily predicts Equally Weighted Returns (EWR) rather than Value Weighted Returns (VWR), our new sentiment indicator performs better than SFPC in predicting both VWR and EWR. This improved performance is due in part to a reduction in overfitting, and in part to incorporation of the direct sentiment indicator MICS.

AB - Investor sentiment's effect on asset prices has been studied extensively to date, without delivering consistent results across samples and datasets. We investigate the asset-pricing impacts of eight widely cited investor-sentiment indicators (one direct, six indirect, one composite), within a unified long-horizon regression framework, predicting real NYSE-index returns over horizon lengths of 1, 3, 12, 24, 36, and 48 months. Results reveal that three of the non-composite indicators have consistent predictive power: the Michigan Index of Consumer Sentiment (MICS), IPO volume (NIPO), and the dividend premium (PDND). This finding has implications for the widely cited Baker-Wurgler first principal component (SFPC) composite indicator, which extracts information from the full set of six indirect indicators. As the diffusion-index literature shows, this type of wide-net approach is likely to impound idiosyncratic noise into the composite summary indicator, exacerbating forecasting errors. Therefore we create a new `targeted' composite indicator from the first principal component of the three indicators that perform well in long-horizon regressions, i.e. MICS, NIPO, and PDND. The resulting targeted composite indicator outperforms SFPC in a market-returns prediction horse race. Whereas SFPC primarily predicts Equally Weighted Returns (EWR) rather than Value Weighted Returns (VWR), our new sentiment indicator performs better than SFPC in predicting both VWR and EWR. This improved performance is due in part to a reduction in overfitting, and in part to incorporation of the direct sentiment indicator MICS.

KW - investor sentiment

KW - market return

KW - predictability

KW - long-horizon regression

KW - bootstrap diffusion index

KW - composite index

KW - overfitting

M3 - Working paper

T3 - Economics Working Papers Series

BT - Investor Sentiment as a Predictor of Market Returns

PB - Lancaster University, Department of Economics

ER -