Hedge Fund Portfolio Construction Using PolyModel Theory and iTransformer
Siqiao Zhao, Zhikang Dong, Zeyu Cao, Raphael Douady

TL;DR
This paper introduces a novel hedge fund portfolio construction method combining PolyModel theory to handle sparse financial data and iTransformer deep learning to improve forecasting and risk management, resulting in superior performance.
Contribution
It integrates PolyModel theory with iTransformer deep learning to enhance hedge fund portfolio construction, addressing data sparsity and high-dimensional forecasting challenges.
Findings
Improved Sharpe ratio and annualized return.
Effective risk control with PolyModel and iTransformer.
Multiple strategies outperform benchmarks.
Abstract
When constructing portfolios, a key problem is that a lot of financial time series data are sparse, making it challenging to apply machine learning methods. Polymodel theory can solve this issue and demonstrate superiority in portfolio construction from various aspects. To implement the PolyModel theory for constructing a hedge fund portfolio, we begin by identifying an asset pool, utilizing over 10,000 hedge funds for the past 29 years' data. PolyModel theory also involves choosing a wide-ranging set of risk factors, which includes various financial indices, currencies, and commodity prices. This comprehensive selection mirrors the complexities of the real-world environment. Leveraging on the PolyModel theory, we create quantitative measures such as Long-term Alpha, Long-term Ratio, and SVaR. We also use more classical measures like the Sharpe ratio or Morningstar's MRAR. To enhance…
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Taxonomy
TopicsDistributed and Parallel Computing Systems · Computational Physics and Python Applications
MethodsSparse Evolutionary Training
