NeuralFactors: A Novel Factor Learning Approach to Generative Modeling of Equities
Achintya Gopal

TL;DR
NeuralFactors introduces a neural network-based factor analysis method for equities that improves interpretability, performance, and efficiency in generative modeling, risk estimation, and portfolio management.
Contribution
This work presents NeuralFactors, a novel deep learning approach that enables interpretable factor analysis with superior performance over prior models.
Findings
Outperforms previous models in log-likelihood and efficiency
Generates realistic synthetic data and estimates covariance effectively
Provides interpretable factor exposures for stock embedding
Abstract
The use of machine learning for statistical modeling (and thus, generative modeling) has grown in popularity with the proliferation of time series models, text-to-image models, and especially large language models. Fundamentally, the goal of classical factor modeling is statistical modeling of stock returns, and in this work, we explore using deep generative modeling to enhance classical factor models. Prior work has explored the use of deep generative models in order to model hundreds of stocks, leading to accurate risk forecasting and alpha portfolio construction; however, that specific model does not allow for easy factor modeling interpretation in that the factor exposures cannot be deduced. In this work, we introduce NeuralFactors, a novel machine-learning based approach to factor analysis where a neural network outputs factor exposures and factor returns, trained using the same…
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Taxonomy
TopicsNeural Networks and Applications
