Factor Rebalancing (2026)
CFAM-ARX Paper Award, Finance Down Under Conference, 2022
Chicago Quantitative Alliance Academic Competition Second Prize, 2022
Abstract
Mutual funds with persistent demand for a priced factor must rebalance their portfolios as stock characteristics drift over time. We document this behavior, which we term factor rebalancing, and study its implications for asset prices. Focusing on value and momentum, we show that factor rebalancing is prevalent in mutual fund holdings and constitutes a source of predictable price pressure that operates independently of retail flows. Stocks misaligned with their underlying funds’ factor demand subsequently underperform well-aligned stocks by 5–10% per year, with the spread reverting over roughly eight quarters. We formalize the mechanism within a demand framework: because characteristics such as book-to-market and past returns move mechanically with price, growth- and momentum-targeting funds can exhibit upward-sloping demand, and the rest of the market absorbs their correlated trades at a price concession. We rule out alternative explanations based on subsequent fundamentals, skill, and herding.
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Quantity, Risk, and Return (2024)
Financial Markets and Corporate Governance Conference Runner-up for Best Paper
Abstract
We propose a new model of expected stock returns that incorporates quantity information from market trading activities into the factor pricing framework. We posit that the expected return of a stock is determined by not only its factor risk exposures (beta) but also the factor’s quantity fluctuations (q) induced by trading flows, and hence term the model beta times quantity (BTQ). The rationale is that sophisticated investors should require a greater factor premium when they are more exposed to that factor after noise traders sell lots of stocks with high exposures to that factor. The BTQ model provides a compelling risk-based explanation for stock returns, which is otherwise obscured without considering the quantity information. The cross-sectional risk-return association, which is nearly flat unconditionally, strongly depends on the quantity variable. The structured BTQ model reliably predicts monthly stock returns out of sample, and addresses the factor zoo problem by selecting a small number of factors.
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Pre-Refunding Announcement Gains in U.S. Treasurys (2024)
Quantpedia Awards 2024 – 1st Place
Q Group Jack Treynor Prize Finalist 2025
Abstract
We document substantial and intensifying positive returns in medium- and long-term Treasury bonds on the day before the Treasury Refunding Announcements (TRAs), an important quarterly fiscal event where future issuance plans are unveiled. Pre-TRA gains are distinct from known calendar effects, account for a sizable portion of annual yield and term premium changes, and cannot be attributed to information leakage. We show that reduction in Treasury market uncertainty—particularly fiscal-related uncertainty—prior to TRAs is the key driver. Consistent with this, pre-TRA gains are stronger when immediately following an FOMC meeting, and when national debt approaches the debt ceiling.
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