To install click the Add extension button. That's it.

The source code for the WIKI 2 extension is being checked by specialists of the Mozilla Foundation, Google, and Apple. You could also do it yourself at any point in time.

4,5
Kelly Slayton
Congratulations on this excellent venture… what a great idea!
Alexander Grigorievskiy
I use WIKI 2 every day and almost forgot how the original Wikipedia looks like.
What we do. Every page goes through several hundred of perfecting techniques; in live mode. Quite the same Wikipedia. Just better.
.
Leo
Newton
Brights
Milds

Vector space model

From Wikipedia, the free encyclopedia

Vector space model or term vector model is an algebraic model for representing text documents (or more generally, items) as vectors such that the distance between vectors represents the relevance between the documents. It is used in information filtering, information retrieval, indexing and relevancy rankings. Its first use was in the SMART Information Retrieval System.[1]

YouTube Encyclopedic

  • 1/5
    Views:
    47 577
    21 894
    25 805
    510 472
    9 568
  • Lecture 17 — The Vector Space Model - Natural Language Processing | Michigan
  • IR3.2 Overview of the vector space model
  • Learn Vector Space Model For Text Document Ranking | With Example | VSM Basics
  • Understanding Vector Spaces
  • Lecture 5 — Vector Space Model Basic Idea | UIUC

Transcription

Definitions

In this section we consider a particular vector space model based on the bag-of-words representation. Documents and queries are represented as vectors.

Each dimension corresponds to a separate term. If a term occurs in the document, its value in the vector is non-zero. Several different ways of computing these values, also known as (term) weights, have been developed. One of the best known schemes is tf-idf weighting (see the example below).

The definition of term depends on the application. Typically terms are single words, keywords, or longer phrases. If words are chosen to be the terms, the dimensionality of the vector is the number of words in the vocabulary (the number of distinct words occurring in the corpus).

Vector operations can be used to compare documents with queries.[2]

Applications

Candidate documents from the corpus can be retrieved and ranked using a variety of methods. Relevance rankings of documents in a keyword search can be calculated, using the assumptions of document similarities theory, by comparing the deviation of angles between each document vector and the original query vector where the query is represented as a vector with same dimension as the vectors that represent the other documents.

In practice, it is easier to calculate the cosine of the angle between the vectors, instead of the angle itself:

Where is the intersection (i.e. the dot product) of the document (d2 in the figure to the right) and the query (q in the figure) vectors, is the norm of vector d2, and is the norm of vector q. The norm of a vector is calculated as such:

Using the cosine the similarity between document dj and query q can be calculated as:

As all vectors under consideration by this model are element-wise nonnegative, a cosine value of zero means that the query and document vector are orthogonal and have no match (i.e. the query term does not exist in the document being considered). See cosine similarity for further information.[2]

Term frequency-inverse document frequency weights

In the classic vector space model proposed by Salton, Wong and Yang [3] the term-specific weights in the document vectors are products of local and global parameters. The model is known as term frequency-inverse document frequency model. The weight vector for document d is , where

and

  • is term frequency of term t in document d (a local parameter)
  • is inverse document frequency (a global parameter). is the total number of documents in the document set; is the number of documents containing the term t.

Advantages

The vector space model has the following advantages over the Standard Boolean model:

  1. Allows ranking documents according to their possible relevance
  2. Allows retrieving items with a partial term overlap[2]

Most of these advantages are a consequence of the difference in the density of the document collection representation between Boolean and term frequency-inverse document frequency approaches. When using Boolean weights, any document lies in a vertex in a n-dimensional hypercube. Therefore, the possible document representations are and the maximum Euclidean distance between pairs is . As documents are added to the document collection, the region defined by the hypercube's vertices become more populated and hence denser. Unlike Boolean, when a document is added using term frequency-inverse document frequency weights, the inverse document frequencies of the terms in the new document decrease while that of the remaining terms increase. In average, as documents are added, the region where documents lie expands regulating the density of the entire collection representation. This behavior models the original motivation of Salton and his colleagues that a document collection represented in a low density region could yield better retrieval results.

Limitations

The vector space model has the following limitations:

  1. Query terms are assumed to be independent, so phrases might not be represented well in the ranking
  2. Semantic sensitivity; documents with similar context but different term vocabulary won't be associated[2]

Many of these difficulties can, however, be overcome by the integration of various tools, including mathematical techniques such as singular value decomposition and lexical databases such as WordNet.

Models based on and extending the vector space model

Models based on and extending the vector space model include:

Software that implements the vector space model

The following software packages may be of interest to those wishing to experiment with vector models and implement search services based upon them.

Free open source software

Further reading

See also

References

  1. ^ Berry, Michael W.; Drmac, Zlatko; Jessup, Elizabeth R. (January 1999). "Matrices, Vector Spaces, and Information Retrieval". SIAM Review. 41 (2): 335–362. doi:10.1137/s0036144598347035.
  2. ^ a b c d Büttcher, Stefan; Clarke, Charles L. A.; Cormack, Gordon V. (2016). Information retrieval: implementing and evaluating search engines (First MIT Press paperback ed.). Cambridge, Massachusetts London, England: The MIT Press. ISBN 978-0-262-52887-0.
  3. ^ G. Salton , A. Wong , C. S. Yang, A vector space model for automatic indexing, Communications of the ACM, v.18 n.11, p.613–620, Nov. 1975
This page was last edited on 20 May 2024, at 06:45
Basis of this page is in Wikipedia. Text is available under the CC BY-SA 3.0 Unported License. Non-text media are available under their specified licenses. Wikipedia® is a registered trademark of the Wikimedia Foundation, Inc. WIKI 2 is an independent company and has no affiliation with Wikimedia Foundation.