Relevance Ranking for Vertical Search Engines Relevance Ranking for Vertical Search Engines

Relevance Ranking for Vertical Search Engines

    • $87.99
    • $87.99

Publisher Description

In plain, uncomplicated language, and using detailed examples to explain the key concepts, models, and algorithms in vertical search ranking, Relevance Ranking for Vertical Search Engines teaches readers how to manipulate ranking algorithms to achieve better results in real-world applications.

This reference book for professionals covers concepts and theories from the fundamental to the advanced, such as relevance, query intention, location-based relevance ranking, and cross-property ranking. It covers the most recent developments in vertical search ranking applications, such as freshness-based relevance theory for new search applications, location-based relevance theory for local search applications, and cross-property ranking theory for applications involving multiple verticals.

Introduces ranking algorithms and teaches readers how to manipulate ranking algorithms for the best resultsCovers concepts and theories from the fundamental to the advancedDiscusses the state of the art: development of theories and practices in vertical search ranking applicationsIncludes detailed examples, case studies and real-world examples

GENRE
Computing & Internet
RELEASED
2014
25 January
LANGUAGE
EN
English
LENGTH
264
Pages
PUBLISHER
Elsevier Science
SELLER
Elsevier Ltd.
SIZE
10.8
MB

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