OU Portal
Log In
Welcome
Applicants
Z6_60GI02O0O8IDC0QEJUJ26TJDI4
Error:
Javascript is disabled in this browser. This page requires Javascript. Modify your browser's settings to allow Javascript to execute. See your browser's documentation for specific instructions.
{}
Zavřít
Publikační činnost
Probíhá načítání, čekejte prosím...
publicationId :
tempRecordId :
actionDispatchIndex :
navigationBranch :
pageMode :
tabSelected :
isRivValid :
Typ záznamu:
stať ve sborníku (D)
Domácí pracoviště:
Katedra informatiky a počítačů (31400)
Název:
Comparison of different approaches for the recommending suitable products in e-shop recommender system
Citace
Walek, B. a Fajmon, P. Comparison of different approaches for the recommending suitable products in e-shop recommender system.
In:
1st World Conference on Innovation in Technology and Engineering Sciences: 1st World Conference on Innovation in Technology and Engineering Sciences 2021-12-03 Atény.
Podnázev
Rok vydání:
2021
Obor:
Počet stran:
10
Strana od:
neuvedeno
Strana do:
neuvedeno
Forma vydání:
Elektronická verze
Kód ISBN:
neuvedeno
Kód ISSN:
Název sborníku:
1st World Conference on Innovation in Technology and Engineering Sciences
Sborník:
Mezinárodní
Název nakladatele:
neuvedeno
Místo vydání:
neuvedeno
Stát vydání:
Název konference:
1st World Conference on Innovation in Technology and Engineering Sciences
Místo konání konference:
Atény
Datum zahájení konference:
Typ akce podle státní
příslušnosti účastníků akce:
Celosvětová akce
Kód UT WoS:
EID:
Klíčová slova anglicky:
recommender system, e-shop recommender system, hybrid recommender system, content-based filtering, collaborative filtering, products
Popis v původním jazyce:
This article compares different approaches for recommending suitable products in the e-shop recommender system. The proposed recommender system consists of two main modules - a module for recommending suitable products based on viewed products and a module recommending suitable products based on the rated products. The first module uses a content-based filtering approach, and the TF-IDF algorithm is used for product recommendations. The second module uses a collaborative filtering approach, and the SVD algorithm is used for product recommendations. Furthermore, three approaches that combine the results of both modules are proposed. These approaches were experimentally verified on a group of 32 real users. The users tested the proposed recommender system and marked the relevant products from the list of recommended products. The results of the experimental verification are discussed.
Popis v anglickém jazyce:
Seznam ohlasů
Ohlas
R01:
Complementary Content
Deferred Modules
${title}
${badge}
${loading}
Deferred Modules