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Machine Learning for Text Document Relevance Ranking

103,49 
103,49 
2025-07-31 103.4900 InStock
Nemokamas pristatymas į paštomatus per 13-17 darbo dienų užsakymams nuo 19,00 

Knygos aprašymas

The context oriented information retrieval has always been based on some or the other explicit ontologies. The emphasis is laid on on the Implicit Ontologies extracted from input text documents themselves. The research focuses upon design of a system (tool) to rank text documents available in machine-readable format by analyzing them upon softcopies of the syllabus content, through congenial content filtering techniques. The notion of n-gram co-occurrences is used to give the semantic interpretation to the core sentences and their neighboring components. The semantic depths of search key phrases can be learnt by analyzing term-to-term associations from the underlying conceptual dependencies of the extracted content. Two metric measures were chosen for exploring text-semantic depths namely, Topical boundaries and Topical vicinities. The degree of relative relevance was investigated by computing other relevance metric, contextual levels of term-significance from the filtered pages with meaningfully related content. The text-document ranking results were compared for both relevance number and fuzzy-ordering approaches and were found interpretable in finite directions.

Informacija

Autorius: Arpana Rawal, H. R. Sharma, Mahoj Kumar Kowar,
Leidėjas: LAP LAMBERT Academic Publishing
Išleidimo metai: 2014
Knygos puslapių skaičius: 180
ISBN-10: 3659233455
ISBN-13: 9783659233456
Formatas: Knyga minkštu viršeliu
Kalba: Anglų
Žanras: Digital and Information technology: general topics

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