Sciweavers

DIS
2010
Springer

Sentiment Knowledge Discovery in Twitter Streaming Data

13 years 10 months ago
Sentiment Knowledge Discovery in Twitter Streaming Data
Micro-blogs are a challenging new source of information for data mining techniques. Twitter is a micro-blogging service built to discover what is happening at any moment in time, anywhere in the world. Twitter messages are short, and generated constantly, and well suited for knowledge discovery using data stream mining. We briefly discuss the challenges that Twitter data streams pose, focusing on classification problems, and then consider these streams for opinion mining and sentiment analysis. To deal with streaming unbalanced classes, we propose a sliding window Kappa statistic for evaluation in time-changing data streams. Using this statistic we perform a study on Twitter data using learning algorithms for data streams.
Albert Bifet, Eibe Frank
Added 24 Jan 2011
Updated 24 Jan 2011
Type Journal
Year 2010
Where DIS
Authors Albert Bifet, Eibe Frank
Comments (0)