Evaluating parallel logistic regression models

BigData Conference(2013)

引用 23|浏览19
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摘要
Logistic regression (LR) has been widely used in applications of machine learning, thanks to its linear model. However, when the size of training data is very large, even such a linear model can consume excessive memory and computation time. To tackle both resource and computation scalability in a big-data setting, we evaluate and compare different approaches in distributed platform, parallel algorithm, and sublinear approximation. Our empirical study provides design guidelines for choosing the most effective combination for the performance requirement of a given application.
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关键词
design guidelines,design,distributed platform,linear model,sublinear method,big data,approximation theory,learning (artificial intelligence),regression analysis,parallel logistic regression models,logistic regression model,sublinear approximation,parallel algorithms,performance requirement,parallel algorithm,computation scalability,parallel computing,machine learning,learning artificial intelligence
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