On-The-Fly Feature Selection And Classification With Application To Civic Engagement Platforms
Yasitha Warahena Liyanage, Daphney-Stavroula Zois, Charalampos Chelmis
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 12:16
Online feature selection and classification is crucial for time sensitive decision making. Existing work however either assumes that features are independent or produces a fixed number of features for classification. Instead, we propose an optimal framework to perform joint feature selection and classification on-the-fly while relaxing the assumption on feature independence. The effectiveness of the proposed approach is showed by classifying urban issue reports on the SeeClickFix civic engagement platform. A significant reduction in the average number of features used is observed without a drop in the classification accuracy.