Asset Selection via Correlation Blockmodel Clustering
About
We aim to cluster financial assets in order to identify a small set of stocks to approximate the level of diversification of the whole universe of stocks. We develop a data-driven approach to clustering based on a correlation blockmodel in which assets in the same cluster are highly correlated with each other and, at the same time, have the same correlations with all other assets. We devise an algorithm to detect the clusters, with theoretical analysis and practical guidance. Finally, we conduct an empirical analysis to verify the performance of the algorithm.
Wenpin Tang, Xiao Xu, Xun Yu Zhou• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Variable Clustering | Simulation Data | Average AMI34 | 19 | |
| Subspace Clustering | Extended Yale B (3 standard splits + 20 random trials) | Mean AMI0.006 | 10 | |
| Face Clustering | Extended Yale-B | Mean AMI0.001 | 10 | |
| Portfolio Optimization | S&P 500 stocks Minimum Variance Portfolios | VAMI5.83e+3 | 10 |
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