LM101-056: How to Build Generative Latent Probabilistic Topic Models for Search Engine and Recommender System Applications - podcast episode cover

LM101-056: How to Build Generative Latent Probabilistic Topic Models for Search Engine and Recommender System Applications

Sep 20, 201628 minSeason 1Ep. 56
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Episode description

In this NEW episode we discuss Latent Semantic Indexing type machine learning algorithms which have a PROBABILISTIC  interpretation. We explain why such a probabilistic interpretation is important and discuss how such algorithms can be used in the design of document retrieval systems, search engines, and recommender systems. Check us out at: www.learningmachines101.com

and follow us on twitter at: @lm101talk

 

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LM101-056: How to Build Generative Latent Probabilistic Topic Models for Search Engine and Recommender System Applications | Learning Machines 101 podcast - Listen or read transcript on Metacast