Similarity Function with Temporal Factor in Collaborative Filtering: Data Mining - Chhavi Rana - Knihy - LAP LAMBERT Academic Publishing - 9783659179952 - 29. júla 2012
V prípade, že obal a názov nesedia, platí názov

Similarity Function with Temporal Factor in Collaborative Filtering: Data Mining

Cena
€ 44,49

Objednané zo vzdialeného skladu

Očakávané doručenie 1. - 9. júl
Pridať do vášho zoznamu prianí na iMusic

Similarity function is the key to accuracy of collaborative filtering algorithms. Adding a time factor to it addresses the problem of handling the web data efficiently as it is highly dynamic in nature. The data used in collaborative filtering algorithms is collected over as long period of time, in the form of feedbacks, clicks, etc. The interest of user or popularity of an item tends to change as new seasons, moods or festivals. The similarity function with temporal factor can efficiently handle the dynamics of web data as it captures and assigns weightage to the data. More recent data is given more weightage when similarity is calculated. in this way, the recent trends and older and obsolete data values are discarded when new unobserved items are predicted using collaborative filtering algorithms. Hence, better results and more accuracy.

Médium Knihy     Paperback Book   (Kniha s mäkkou väzbou a lepeným chrbtom)
Vydané 29. júla 2012
ISBN13 9783659179952
Vydavatelia LAP LAMBERT Academic Publishing
Strany 56
Rozmery 150 × 3 × 226 mm   ·   102 g
Jazyk Nemčina