Title
Dynamic Topic Detection Model by Fusing Sentiment Polarity.
Abstract
Traditional static topic models mainly focus on the statistical correlation between words, but ignore the sentiment tendency and the temporal properties which may have great effects on topic detection results. This paper proposed an LDA-based dynamic sentiment-topic (DST) model, which could not only detect and track topics but could also analyse the shift of general’s sentiment tendency towards certain topic. This model combines the data with the sentiment and dynamic properties of time by maximum likelihood estimation and the sliding window. We use Gibbs sampling method to estimate and update model parameters, and use random EM algorithm for model reasoning. Experiments on real dataset demonstrate that DST model outperforms the existing algorithms.
Year
Venue
Field
2015
ACSC
Data mining,Sliding window protocol,Pattern recognition,Expectation–maximization algorithm,Computer science,Maximum likelihood,Statistical correlation,Artificial intelligence,Topic model,Gibbs sampling
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
5
5
Name
Order
Citations
PageRank
Xi Ding100.34
Lan-Shan Zhang200.34
Ye Tian3186.94
Xiangyang Gong416123.01
Wendong Wang582172.69