2016
DOI: 10.1007/978-3-319-46227-1_6
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Efficient Distributed Decision Trees for Robust Regression

Abstract: Abstract. The availability of massive volumes of data and recent advances in data collection and processing platforms have motivated the development of distributed machine learning algorithms. In numerous real-world applications large datasets are inevitably noisy and contain outliers. These outliers can dramatically degrade the performance of standard machine learning approaches such as regression trees. To this end, we present a novel distributed regression tree approach that utilizes robust regression stati… Show more

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