Text-Based Correlation Matrix in Multi-Asset Allocation
- URL: http://arxiv.org/abs/2405.14247v1
- Date: Thu, 23 May 2024 07:25:51 GMT
- Title: Text-Based Correlation Matrix in Multi-Asset Allocation
- Authors: Yasuhiro Nakayama, Tomochika Sawaki, Issei Furuya, Shunsuke Tamura,
- Abstract summary: The purpose of this study is to estimate the correlation structure between multiple assets using financial text analysis.
We performed natural language processing on news text and central bank text to verify the prediction accuracy of future correlation coefficient changes.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The purpose of this study is to estimate the correlation structure between multiple assets using financial text analysis. In recent years, as the background of elevating inflation in the global economy and monetary policy tightening by central banks, the correlation structure between assets, especially interest rate sensitivity and inflation sensitivity, has changed dramatically, increasing the impact on the performance of investors' portfolios. Therefore, the importance of estimating a robust correlation structure in portfolio management has increased. On the other hand, the correlation coefficient using only the historical price data observed in the financial market is accompanied by a certain degree of time lag, and also has the aspect that prediction errors can occur due to the nonstationarity of financial time series data, and that the interpretability from the viewpoint of fundamentals is a little poor when a phase change occurs. In this study, we performed natural language processing on news text and central bank text to verify the prediction accuracy of future correlation coefficient changes. As a result, it was suggested that this method is useful in comparison with the prediction from ordinary time series data.
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