2017
DOI: 10.19153/cleiej.20.1.6
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Automatic parameterization of Support Vector Machines for Short Texts Polarity Detection

Abstract: Abstract: The information from social media is emerging as a valuable source in decision-making, unfortunately the tools to turn these data into useful information still need some work. Using Support Vector Machines for polarity detection in short texts are popular among researchers for their good results, but parameter optimization to train classification models is a complex and costly process. This article compares two algorithms for automated parameter optimization in the process of creating classific… Show more

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