Difference between revisions of "Probabilistic Latent Semantic Analysis (PLSA)"

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[http://www.google.com/search?q=LSA+PLSA+Probabilistic+Latent+Semantic+Analysis+nlp+nli+natural+language+semantics+machine+learning+ML+artificial+intelligence ...Google search]
 
[http://www.google.com/search?q=LSA+PLSA+Probabilistic+Latent+Semantic+Analysis+nlp+nli+natural+language+semantics+machine+learning+ML+artificial+intelligence ...Google search]
  
* [[Natural Language Processing (NLP)]]
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* [[Large Language Model (LLM)]] ... [[Natural Language Processing (NLP)]]  ...[[Natural Language Generation (NLG)|Generation]] ... [[Natural Language Classification (NLC)|Classification]] ...  [[Natural Language Processing (NLP)#Natural Language Understanding (NLU)|Understanding]] ... [[Language Translation|Translation]] ... [[Natural Language Tools & Services|Tools & Services]]
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* [[Topic Model/Mapping]]
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* [[Latent]]
 
* [http://www.crummy.com/software/BeautifulSoup/ Beautiful Soup] a Python library designed for quick turnaround projects like screen-scraping
 
* [http://www.crummy.com/software/BeautifulSoup/ Beautiful Soup] a Python library designed for quick turnaround projects like screen-scraping
 
* [[Term Frequency–Inverse Document Frequency (TF-IDF)]]
 
* [[Term Frequency–Inverse Document Frequency (TF-IDF)]]
  
<youtube>BJ0MnawUpaU</youtube>
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PLSA is a probabilistic generative model used for topic modeling in text data. It is an extension of [[Latent]] Semantic Analysis that introduces a probabilistic framework to the topic modeling problem.
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* </b>How PLSA Works</b>: In PLSA, it is assumed that documents are generated through a probabilistic process. Specifically, it assumes that there are [[latent]] topics, and each document is a mixture of these topics. Each word in a document is generated from one of these topics with a certain probability.
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* </b>Applications</b>: PLSA is mainly used for discovering topics in large document collections. By analyzing the word-topic and topic-document distributions learned by PLSA, you can identify the prevalent themes or topics within the corpus.
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<youtube>vtadpVDr1hM</youtube>
 
<youtube>vtadpVDr1hM</youtube>
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= Latent Semantic Analysis (LSA) =
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LSA is a technique used for dimensionality reduction and discovering the underlying structure in a collection of documents. It's primarily used for tasks like document clustering, information retrieval, and document summarization.
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* </b>How LSA Works</b>: LSA operates by performing Singular Value Decomposition (SVD) on a term-document matrix. This matrix represents the frequency of terms (words) in documents. SVD reduces the dimensionality of this matrix and extracts [[latent]] semantic patterns. The resulting lower-dimensional representations can help identify relationships between words and documents.
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* </b>Applications</b>: LSA can be used for clustering similar documents, finding related documents in information retrieval, and generating document summaries by identifying key terms and phrases.
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<youtube>BJ0MnawUpaU</youtube>
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= Key Differences: LSA & PLSA =
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* LSA is primarily focused on dimensionality reduction and finding semantic patterns in documents, whereas PLSA is a generative probabilistic model designed specifically for topic modeling.
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* LSA does not involve a probabilistic generative process, while PLSA explicitly models the probability of word generation from topics.
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* In PLSA, the number of topics is typically a parameter to be determined, whereas LSA does not inherently model topics.

Latest revision as of 10:07, 16 September 2023

Youtube search... ...Google search


PLSA is a probabilistic generative model used for topic modeling in text data. It is an extension of Latent Semantic Analysis that introduces a probabilistic framework to the topic modeling problem.

  • How PLSA Works: In PLSA, it is assumed that documents are generated through a probabilistic process. Specifically, it assumes that there are latent topics, and each document is a mixture of these topics. Each word in a document is generated from one of these topics with a certain probability.
  • Applications: PLSA is mainly used for discovering topics in large document collections. By analyzing the word-topic and topic-document distributions learned by PLSA, you can identify the prevalent themes or topics within the corpus.

Latent Semantic Analysis (LSA)

LSA is a technique used for dimensionality reduction and discovering the underlying structure in a collection of documents. It's primarily used for tasks like document clustering, information retrieval, and document summarization.

  • How LSA Works: LSA operates by performing Singular Value Decomposition (SVD) on a term-document matrix. This matrix represents the frequency of terms (words) in documents. SVD reduces the dimensionality of this matrix and extracts latent semantic patterns. The resulting lower-dimensional representations can help identify relationships between words and documents.
  • Applications: LSA can be used for clustering similar documents, finding related documents in information retrieval, and generating document summaries by identifying key terms and phrases.

Key Differences: LSA & PLSA

  • LSA is primarily focused on dimensionality reduction and finding semantic patterns in documents, whereas PLSA is a generative probabilistic model designed specifically for topic modeling.
  • LSA does not involve a probabilistic generative process, while PLSA explicitly models the probability of word generation from topics.
  • In PLSA, the number of topics is typically a parameter to be determined, whereas LSA does not inherently model topics.