On the Efficacy of Shorting Corporate Bonds as a Tail Risk Hedging Solution

ArXiv ID: 2504.06289 “View on arXiv”

Authors: Unknown

Abstract

United States (US) IG bonds typically trade at modest spreads over US Treasuries, reflecting the credit risk tied to a corporation’s default potential. During market crises, IG spreads often widen and liquidity tends to decrease, likely due to increased credit risk (evidenced by higher IG Credit Default Index spreads) and the necessity for asset holders like mutual funds to liquidate assets, including IG credits, to manage margin calls, bolster cash reserves, or meet redemptions. These credit and liquidity premia occur during market drawdowns and tend to move non-linearly with the market. The research herein refers to this non-linearity (during periods of drawdown) as downside convexity, and shows that this market behavior can effectively be captured through a short position established in IG Exchange Traded Funds (ETFs). The following document details the construction of three signals: Momentum, Liquidity, and Credit, that can be used in combination to signal entries and exits into short IG positions to hedge a typical active bond portfolio (such as PIMIX). A dynamic hedge initiates the short when signals jointly correlate and point to significant future hedged return. The dynamic hedge removes when the short position’s predicted hedged return begins to mean revert. This systematic hedge largely avoids IG Credit drawdowns, lowers absolute and downside risk, increases annualised returns and achieves higher Sortino ratios compared to the benchmark funds. The method is best suited to high carry, high active risk funds like PIMIX, though it also generalises to more conservative funds similar to DODIX.

Keywords: Credit Spreads, Downside Convexity, Liquidity Premia, Dynamic Hedging, ETF Shorting, Fixed Income (Investment Grade)

Complexity vs Empirical Score

  • Math Complexity: 7.0/10
  • Empirical Rigor: 8.0/10
  • Quadrant: Holy Grail
  • Why: The paper employs advanced statistical methods like Canonical Correlation Analysis (CCA) to combine multiple signals and uses option-implied volatility for credit risk modeling, showing high mathematical density. It also demonstrates high empirical rigor by using real market data (TRACE, Bloomberg), incorporating transaction/funding costs, and reporting backtested performance metrics like Sortino ratios for specific fund implementations.
  flowchart TD
    A["Research Goal:<br>Can shorting IG ETFs hedge<br>downside convexity in bond drawdowns?"] --> B["Input Data: US IG ETFs (LQD, AGG)<br>US Treasuries (TLT)<br>IG Credit Default Index (CDX)"] --> C["Methodology: Construct Three Signals<br>Momentum | Liquidity | Credit"]
    C --> D["Computational Process:<br>Dynamic Hedge Entry/Exit<br>Short IG ETF when signals align<br>Cover when predicted hedged return mean reverts"]
    D --> E["Key Outcomes: <br>Reduces downside risk & volatility<br>Improves Sortino & returns<br>Effective hedge for high carry funds"]