Matches in DBpedia 2016-04 for { <http://dbpedia.org/resource/Latent_semantic_indexing> ?p ?o }
Showing triples 1 to 66 of
66
with 100 triples per page.
- Latent_semantic_indexing abstract "Latent semantic indexing (LSI) is an indexing and retrieval method that uses a mathematical technique called singular value decomposition (SVD) to identify patterns in the relationships between the terms and concepts contained in an unstructured collection of text. LSI is based on the principle that words that are used in the same contexts tend to have similar meanings. A key feature of LSI is its ability to extract the conceptual content of a body of text by establishing associations between those terms that occur in similar contexts.LSI is also an application of correspondence analysis, a multivariate statistical technique developed by Jean-Paul Benzécri in the early 1970s, to a contingency table built from word counts in documents.Called Latent Semantic Indexing because of its ability to correlate semantically related terms that are latent in a collection of text, it was first applied to text at Bellcore in the late 1980s. The method, also called latent semantic analysis (LSA), uncovers the underlying latent semantic structure in the usage of words in a body of text and how it can be used to extract the meaning of the text in response to user queries, commonly referred to as concept searches. Queries, or concept searches, against a set of documents that have undergone LSI will return results that are conceptually similar in meaning to the search criteria even if the results don’t share a specific word or words with the search criteria.".
- Latent_semantic_indexing wikiPageExternalLink fsnlp.
- Latent_semantic_indexing wikiPageExternalLink gensim.
- Latent_semantic_indexing wikiPageExternalLink TMG.
- Latent_semantic_indexing wikiPageExternalLink ~lsi.
- Latent_semantic_indexing wikiPageExternalLink watch?v=QGd06MTRMHs.
- Latent_semantic_indexing wikiPageExternalLink view?usp=sharing.
- Latent_semantic_indexing wikiPageID "21109827".
- Latent_semantic_indexing wikiPageLength "29448".
- Latent_semantic_indexing wikiPageOutDegree "36".
- Latent_semantic_indexing wikiPageRevisionID "704357109".
- Latent_semantic_indexing wikiPageWikiLink Automated_essay_scoring.
- Latent_semantic_indexing wikiPageWikiLink Category:Information_retrieval_techniques.
- Latent_semantic_indexing wikiPageWikiLink Category:Semantic_Web.
- Latent_semantic_indexing wikiPageWikiLink Concept.
- Latent_semantic_indexing wikiPageWikiLink Content_Analyst_Company.
- Latent_semantic_indexing wikiPageWikiLink Context_(language_use).
- Latent_semantic_indexing wikiPageWikiLink Contingency_table.
- Latent_semantic_indexing wikiPageWikiLink Correspondence_analysis.
- Latent_semantic_indexing wikiPageWikiLink Document_classification.
- Latent_semantic_indexing wikiPageWikiLink Factor_analysis.
- Latent_semantic_indexing wikiPageWikiLink Gensim.
- Latent_semantic_indexing wikiPageWikiLink Information_retrieval.
- Latent_semantic_indexing wikiPageWikiLink Jean-Paul_Benzécri.
- Latent_semantic_indexing wikiPageWikiLink Latent_Dirichlet_allocation.
- Latent_semantic_indexing wikiPageWikiLink Latent_semantic_analysis.
- Latent_semantic_indexing wikiPageWikiLink Latent_semantic_structure_indexing.
- Latent_semantic_indexing wikiPageWikiLink Literature-based_discovery.
- Latent_semantic_indexing wikiPageWikiLink NumPy.
- Latent_semantic_indexing wikiPageWikiLink Polysemy.
- Latent_semantic_indexing wikiPageWikiLink Principal_component_analysis.
- Latent_semantic_indexing wikiPageWikiLink Probabilistic_latent_semantic_analysis.
- Latent_semantic_indexing wikiPageWikiLink Science_Applications_International_Corporation.
- Latent_semantic_indexing wikiPageWikiLink Search_algorithm.
- Latent_semantic_indexing wikiPageWikiLink Singular_value_decomposition.
- Latent_semantic_indexing wikiPageWikiLink Spamming.
- Latent_semantic_indexing wikiPageWikiLink Synonym.
- Latent_semantic_indexing wikiPageWikiLink Telcordia_Technologies.
- Latent_semantic_indexing wikiPageWikiLink Terminology.
- Latent_semantic_indexing wikiPageWikiLink Text_corpus.
- Latent_semantic_indexing wikiPageWikiLink Tf–idf.
- Latent_semantic_indexing wikiPageWikiLinkText "Latent Semantic Indexing '''(LSI)'''".
- Latent_semantic_indexing wikiPageWikiLinkText "Latent Semantic Indexing".
- Latent_semantic_indexing wikiPageWikiLinkText "Latent semantic indexing".
- Latent_semantic_indexing wikiPageWikiLinkText "latent semantic indexing".
- Latent_semantic_indexing wikiPageWikiLinkText "natural language analysis".
- Latent_semantic_indexing wikiPageWikiLinkText "semantic indexing".
- Latent_semantic_indexing wikiPageUsesTemplate Template:Citation_needed.
- Latent_semantic_indexing wikiPageUsesTemplate Template:Cite_book.
- Latent_semantic_indexing wikiPageUsesTemplate Template:Natural_Language_Processing.
- Latent_semantic_indexing wikiPageUsesTemplate Template:Reflist.
- Latent_semantic_indexing subject Category:Information_retrieval_techniques.
- Latent_semantic_indexing subject Category:Semantic_Web.
- Latent_semantic_indexing hypernym Indexing.
- Latent_semantic_indexing type Software.
- Latent_semantic_indexing type Redirect.
- Latent_semantic_indexing comment "Latent semantic indexing (LSI) is an indexing and retrieval method that uses a mathematical technique called singular value decomposition (SVD) to identify patterns in the relationships between the terms and concepts contained in an unstructured collection of text. LSI is based on the principle that words that are used in the same contexts tend to have similar meanings.".
- Latent_semantic_indexing label "Latent semantic indexing".
- Latent_semantic_indexing sameAs Q890676.
- Latent_semantic_indexing sameAs Indexación_Semántica_Latente.
- Latent_semantic_indexing sameAs نمایهسازی_معنایی_نهان.
- Latent_semantic_indexing sameAs m.05t0zgl.
- Latent_semantic_indexing sameAs Q890676.
- Latent_semantic_indexing sameAs 潜在语义索引.
- Latent_semantic_indexing wasDerivedFrom Latent_semantic_indexing?oldid=704357109.
- Latent_semantic_indexing isPrimaryTopicOf Latent_semantic_indexing.