2021
DOI: 10.48550/arxiv.2111.08060
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A Multi-criteria Approach to Evolve Sparse Neural Architectures for Stock Market Forecasting

Abstract: This study proposes a new framework to evolve efficacious yet parsimonious neural architectures for the movement prediction of stock market indices using technical indicators as inputs. In the light of a sparse signal-to-noise ratio under the Efficient Market hypothesis, developing machine learning methods to predict the movement of a financial market using technical indicators has shown to be a challenging problem. To this end, the neural architecture search is posed as a multi-criteria optimization problem t… Show more

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