LDA model with keyword generation
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The goal is to propose a topic model that is efficiently trainable and can infer the keywords for each document. The most immediate application of the project is to monitor the discussions on social media that do not only directly mention a certain brand or company and the most prominent keywords ...learn more
Project status: Under Development
Intel Technologies
DevCloud
Overview / Usage
The goal of the project is to propose a topic model that is efficiently trainable and can infer the keywords for each document. The most immediate application of the project is to monitor the discussions on social media that do not only directly mention a certain brand or company but also mention the most prominent keywords that are picked up by the model.
Methodology / Approach
We propose a new probabilistic graph model that revises LDA model to incorporate the generation of keywords, which dictates the prior for topic-word matrices and topic weights. Several computational tricks in variational inference or sampling will be used to improve the speed and robustness during training.