A Hybrid Approach on Conditional GAN for Portfolio Analysis
- URL: http://arxiv.org/abs/2208.07159v1
- Date: Wed, 13 Jul 2022 00:58:42 GMT
- Title: A Hybrid Approach on Conditional GAN for Portfolio Analysis
- Authors: Jun Lu, Danny Ding
- Abstract summary: We introduce a hybrid approach on conditional GAN based on deep generative models that learns the internal trend of historical data while modeling market uncertainty and future trends.
We show that the proposed HybridCGAN and HybridACGAN models lead to better portfolio allocation compared to the existing Markowitz, CGAN, and ACGAN approaches.
- Score: 4.913248451323163
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Over the decades, the Markowitz framework has been used extensively in
portfolio analysis though it puts too much emphasis on the analysis of the
market uncertainty rather than on the trend prediction. While generative
adversarial network (GAN), conditional GAN (CGAN), and autoencoding CGAN
(ACGAN) have been explored to generate financial time series and extract
features that can help portfolio analysis. The limitation of the CGAN or ACGAN
framework stands in putting too much emphasis on generating series and finding
the internal trends of the series rather than predicting the future trends. In
this paper, we introduce a hybrid approach on conditional GAN based on deep
generative models that learns the internal trend of historical data while
modeling market uncertainty and future trends. We evaluate the model on several
real-world datasets from both the US and Europe markets, and show that the
proposed HybridCGAN and HybridACGAN models lead to better portfolio allocation
compared to the existing Markowitz, CGAN, and ACGAN approaches.
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