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Robust and adaptive algorithms for online portfolio selection
Authors:Theodoros Tsagaris  Ajay Jasra  Niall Adams
Affiliation:1. Tudor Capital Europe LLP , UK theodoros.tsagaris@tudor.com;3. Department of Statistics and Applied Probability , National University of Singapore , Singapore 117546;4. Department of Mathematics , Imperial College London , London SW7 2AZ , UK
Abstract:We present an online approach to portfolio selection. The motivation is within the context of algorithmic trading, which demands fast and recursive updates of portfolio allocations as new data arrives. In particular, we look at two online algorithms: Robust-Exponentially Weighted Least Squares (R-EWRLS) and a regularized Online minimum Variance algorithm (O-VAR). Our methods use simple ideas from signal processing and statistics, which are sometimes overlooked in the empirical financial literature. The two approaches are evaluated against benchmark allocation techniques using four real data sets. Our methods outperform the benchmark allocation techniques in these data sets in terms of both computational demand and financial performance.
Keywords:Adaptive systems  Quantitative trading strategies  Statistics  Portfolio allocation
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