Arango

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於 2013年2月9日 (六) 15:44 由 Arango (對話 | 貢獻) 所做的修訂 (新页面: The latent semantic indexing data retrieval model builds the prior research of information retrieval. LSI makes use of the singular worth decomposition, or SVD, to decrease the dimensi...)

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The latent semantic indexing data retrieval

model builds the prior research of information

retrieval. LSI makes use of the singular worth decomposition,

or SVD, to decrease the dimensions of the space and

attempts to solve the troubles that seem to plague the

auto info retrieval system.

The LSI represents terms and documents in wealthy and

high dimensional space. This permits the underlying

semantic relationships that come amongst the terms and

documents.

The latent semantic indexing model views the terms in

link

a document as unreliable indicators of the data

inside the document. The variability of word option

obscures the semantic structure of the documents

involved.

When the term-document space is decreased, the

underlying semantic relationships are then revealed.

Considerably of the noise is eliminated when the space is

reduced.

Latent Semantic Indexing differs from other attempts

at using reduced space models for info retrieval. LSI

represents documents in a higher dimensional space.

Each terms and documents are represented in the very same

space and no attempt is created to change the meaning of

every dimension. Limits imposed by the demands of

vector space are focused on relatively tiny document

collections.

LSI is able to represent and manipulate bigger data

sets and tends to make them viable for actual-globe

applications.

Compared to other data retrieving strategies,

the LSI performs fairly properly. Latent Semantic Indexing

supplies thirty percent far more associated documents than

the regular word based retrieval technique,

LSI is also totally automatic and extremely effortless to use. It

demands no complex expressions or confusing syntax.

Terms and documents are represented in the space and

feedback can be integrated with the LSI model.