Font Size: a A A

Behavioral pattern prediction for stream-based data

Posted on:2014-07-26Degree:M.S.C.SType:Thesis
University:The University of Texas at DallasCandidate:Qumruzzaman, Sheikh MuhammadFull Text:PDF
GTID:2458390008451913Subject:Computer Science
Abstract/Summary:
Behavioral pattern prediction has many applications, ranging from consumer buying behavior analysis, web surfing prediction to network attack prediction. The traditional behavioral pattern prediction technique works mainly on a fixed dataset. But recent advances in digital technology generates a huge amount of data which contributes to data stream. Data evolves over time due to the concept drift. Stream-based classification also needs to evolve over time. Our goal is not to predict a single action/behavior, but a sequence of actions that can occur later depending on the previous actions. We call this problem “Behavioral Pattern Extrapolation”. In our research, we exploited a stream mining based technique along with markovian model, where we used an incremental and ensemble based technique for predicting a set of future actions. We have experimented using a number of benchmark datasets and shown the effectiveness of our approach.
Keywords/Search Tags:Behavioral pattern, Pattern prediction, Data
Related items