Topic Categorization on Social Network Using Latent Dirichlet Allocation
Journal: Bonfring International Journal of Software Engineering and Soft Computing (Vol.8, No. 2)Publication Date: 2018-04-30
Authors : S.S. Ramyadharshni; Dr.P. Pabitha;
Page : 16-20
Keywords : LDA; Topic Model; Multinomial Distribution; Probabilistic Distribution.;
Abstract
Topic modelling is a powerful technique for analysis of large document collection. Topic modelling is used for finding hidden topic from the collection of document. In the twitter api, it is essential all the tweet documents are properly categorized. For automatically categorizing the twitter document topics The efficient detection is modelled by an LDA method for probabilistic model and for separation of words from the document. LDA is widely used to estimate the multinomial observation and each topic is categorized by a probabilistic distribution over the words. The multinomial distribution of the topics is regarded as the feature of the document. The proposed system resulted in an increase in accuracy for detection of the topic categorization.
Other Latest Articles
- Topic Categorization based on User behaviour in Random Social Networks Using Firefly Algorithm
- Fit for Life: Home Personal Coach
- Enhanced Automatically Mining Facets for Queries and Clustering with Side Information Model
- Enhanced Scalable Learning for Identifying and Ranking for Big Data Using Social Media Factors
- Enhanced Adaptive Multimedia Data Forwarding for Privacy Preservation in Vehicular Ad-Hoc Networks Using Authentication Group Key
Last modified: 2018-10-27 15:53:42