Efficient Support Vector Regression with Reduced Training Data

2019 Federated Conference on Computer Science and Information Systems (FedCSIS)(2019)

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摘要
Support Vector Regression (SVR) as a supervised machine learning algorithm have gained popularity in various fields. However, the quadratic complexity of the SVR in the number of training examples prevents it from many practical applications with large training datasets. This paper aims to explore efficient ways that maximize prediction accuracy of the SVR at the minimum number of training examples. For this purpose, a clustered greedy strategy and a Genetic Algorithm (GA) based approach are proposed for optimal subset selection. The performance of the developed methods has been illustrated in the context of Clash Royale Challenge 2019, concerned with decks' win rate prediction. The training dataset with 100,000 examples were reduced to hundreds, which were fed to SVR training to maximize model prediction performance measured in validation $R^{2}$ score. Our approach achieved the second highest score among over hundred participating teams in this challenge.
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关键词
support Vector Regression (SVR),K-means clustering,greedy search,R-squared metric,Clash Royale
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