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학술논문한국경영과학회지2025.08 발행

머신러닝 기반 공매도 지표와 주식 수익률의 횡단면

Machine Learning-Based Short-Selling Indicators and the Cross-Section of Stock Returns

정단열(한국과학영재학교); 이가현(한국과학영재학교); 조서현(한국과학영재학교); 이민혁(부산대학교); 고지훈(부산대학교)

50권 3호, 93~104쪽

초록

This study examines the impact of short-selling volume on future stock returns in the Korean stock market and proposes new short-selling indicators using machine learning techniques. Stocks with higher relative short-selling volume tend to exhibit significantly lower future returns, and this negative predictive power is confirmed through portfolio analysis and Fama-MacBeth regressions. Noting the limitation that existing indicators rely solely on past short-selling volume and thus have a lagging nature, this study develops leading indicators by predicting next month’s short-selling volume using stock loan balance data. In this process, various machine learning models are compared, and the ridge regression-based linear model demonstrates the best predictive performance. By presenting new predictive indicators derived from short-selling data, this study complements the existing literature and offers practical implications for investment strategies.

Abstract

This study examines the impact of short-selling volume on future stock returns in the Korean stock market and proposes new short-selling indicators using machine learning techniques. Stocks with higher relative short-selling volume tend to exhibit significantly lower future returns, and this negative predictive power is confirmed through portfolio analysis and Fama-MacBeth regressions. Noting the limitation that existing indicators rely solely on past short-selling volume and thus have a lagging nature, this study develops leading indicators by predicting next month’s short-selling volume using stock loan balance data. In this process, various machine learning models are compared, and the ridge regression-based linear model demonstrates the best predictive performance. By presenting new predictive indicators derived from short-selling data, this study complements the existing literature and offers practical implications for investment strategies.

발행기관:
한국경영과학회
분류:
경영학

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머신러닝 기반 공매도 지표와 주식 수익률의 횡단면 | 한국경영과학회지 2025 | AskLaw | 애스크로 AI