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Decoding Momentum Spillover Effects

Published online by Cambridge University Press:  11 November 2025

Huaixin Wang*
Affiliation:
University of Macau, Faculty of Business Administration
*
huaixinwang@um.edu.mo (corresponding author)
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Abstract

This article studies the making of return predictability among economically linked firms. I characterize an asymmetric cross-firm tug-of-war: i) High peer overnight returns are followed by elevated overnight returns for focal stocks, which fully reverse during intraday, and ii) high peer intraday returns are followed by high intraday returns but minor overnight price reactions. This pattern aligns with the story that individuals’ persistent trading on salient information distorts opening prices, while slow-moving arbitrage by professional investors gradually corrects mispricing. Mutual fund and hedge fund flows exhibit distinct associations with the tug-of-war, supporting the hypothesis that heterogeneous demand drives the return predictability.

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Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2025. Published by Cambridge University Press on behalf of the Michael G. Foster School of Business, University of Washington
Figure 0

Figure 1 Decomposition of Lead–Lag Returns RelationshipFigure 1 depicts the decomposition of cross-firm return predictability. We partition both peer- and focal-firms’ monthly returns into the overnight and the intraday components. Peer firms’ average overnight return in month $ t $ positively (negatively) predicts focal firms’ overnight (intraday) return in month $ t+1 $; peer firms’ average intraday return positively predicts focal firms’ intraday return in month $ t+1 $, while displaying only a weak association with focal firms’ subsequent overnight return.

Figure 1

Table 1 Summary Statistics

Figure 2

Figure 2 Strategy Returns Based on Shared Analyst Coverage SignalsGraphs A and B of Figure 2 plot the average returns and Carhart (1997) alphas of the shared analyst coverage strategies based on the 24-hour signal (CF RET), the intraday return signal (CF Day), and the overnight return signal (CF Night), respectively. Each month, two stocks are defined as connected if at least one analyst covered both stocks in the previous 12 months. CF RET is the connected-firm portfolio return constructed following Ali and Hirshleifer (2020). CF Day and CF Night are respectively intraday and overnight return signals, calculated using the same procedure as CF RET by replacing peer stocks’ monthly close-to-close returns with monthly intraday and overnight returns. Each month, stocks are sorted into quintile portfolios based on peer firm returns. Portfolios are held for 1 month. The blue bars represent equal-weighted returns, whereas the gray bars represent value-weighted returns. The strategy is the hedge portfolio that longs stocks in the top quintile and shorts stocks in the bottom quintile. The sample period is from July 1992 to December 2021.

Figure 3

Table 2 Performance of Shared Analyst Coverage Strategies

Figure 4

Figure 3 Strategy Returns Based on Alternative Lead–Lag SettingsFigure 3 presents the lead–lag returns relationship of settings based on the Fama–French 49 industry classification (INDFF), the 3-digit SIC codes industry classification (INDSIC), the text-based industry classification (INDTIC), geographic links (GEO), technological links (TECH), and conglomerate firms (CONGLM). For each setting, stocks each month are divided into five groups based on the 24-hour signal, the day signal, and the night signal, respectively. Then, equal-weighted portfolios are formed and held for 1 month. This figure reports profits of the long-short strategy measured by close-to-close returns. The sample period is from July 1992 to December 2021.

Figure 5

Table 3 Fama–MacBeth Regressions

Figure 6

Figure 4 Intraday and Overnight Returns Based on CF Day and CF NightFigure 4 plots the average intraday and overnight returns of the shared analyst coverage strategies based on CF Day (Graph A) and CF Night (Graph B), respectively. Each month, two stocks are defined as connected if at least one analyst covered both stocks in the previous 12 months (Ali and Hirshleifer (2020)). CF Day and CF Night represent the intraday and overnight returns, respectively, of the connected-firm portfolio. Each month, stocks are sorted into quintiles based on CF Day (Graph A) and CF Night (Graph B). The return of the long-short strategy of buying stocks within the top quintile and selling those within the bottom quintile is calculated. Blue bars represent equal-weighted returns, whereas gray bars represent value-weighted returns. The sample period is from July 1992 to December 2021.

Figure 7

Table 4 Intraday/Overnight Performance of Shared Analyst Coverage Strategies

Figure 8

Figure 5 Intraday and Overnight Returns Based on Alternative Lead–Lag SettingsGraphs A and B of Figure 5 present the lead–lag returns relationship of settings based on the Fama–French 49 industry classification (INDFF), the 3-digit SIC codes industry classification (INDSIC), the text-based industry classification (INDTIC), geographic links (GEO), technological links (TECH), and conglomerate firms (CONGLM). For each setting, stocks each month are divided into five groups based on the 24-hour signal, the day signal, and the night signal, respectively. Then, equal-weighted portfolios are formed and held for 1 month. This figure reports profits of the long-short strategy measured by intraday returns and overnight returns. The sample period is from July 1992 to December 2021.

Figure 9

Table 5 Fama–MacBeth Regressions: Intraday and Overnight Returns

Figure 10

Table 6 Fama–MacBeth Regressions: Control for Focal Stocks’ Tug-of-War

Figure 11

Figure 6 Illustration of MechanismFigure 6 depicts the mechanism underlying cross-predictability among economically linked stocks. For illustration, it considers scenarios of positive shocks to peer stocks’ overnight returns or intraday returns.

Figure 12

Table 7 Institutional Investors’ Recognition and Trading

Figure 13

Table 8 Retail Investors’ Attention and Net Purchase

Figure 14

Table 9 Order Imbalance

Figure 15

Table 10 Aggregate Fund Flows and Cross-Firm Tug-of-War

Figure 16

Table 11 The Information Content of Peer Stocks’ Intraday and Overnight Returns

Figure 17

Figure 7 Intraday Return Patterns of CF Day and CF Night StrategiesGraphs A and B of Figure 7 show the average interval returns and $ t $-statistics of CF Day and CF Night strategies throughout the intraday period. For each trading day from 9:45AM to 4:00PM, I calculate 15-minute interval returns using midpoint prices. Then, I calculate cumulative interval returns within the month. At the end of each month, stocks are ranked into quintiles based on CF Day and CF Night, respectively. The CF Day (CF Night) strategy longs stocks within the top quintile and shorts those within the bottom quintile. This figure shows the performance of these strategies during different time intervals throughout the intraday period. The dashed lines in the Graph B indicate significance at the 10% level. The $ t $-statistics are calculated based on Newey and West (1987) standard errors. Portfolios are rebalanced monthly, and stocks are equally weighted. The sample period is from January 1993 to December 2021.

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