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Pojasnjevalni priporočilni sistem za filme
ID Klander, Domen (Author), ID Košir, Andrej (Mentor) More about this mentor... This link opens in a new window

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Abstract
Ta magistrska naloga raziskuje razvoj pojasnjevalnega priporočilnega sistema za filme. Ukvarja se s problemom informacijske preobremenjenosti in potrebo po bolj preglednih ter razumljivih priporočilih, zlasti v kontekstu platform za pretakanje filmov. Glavni cilj je implementirati sistem, ki ne le daje priporočila za filme, temveč tudi razloži zakaj so ta priporočila podana. Delo uporablja dva javno dostopna nabora podatkov: MovieLens in CoMoDa. Preučena sta bila dva algoritma priporočilnih sistemov, matrična faktorizacija in Bayesova matrična faktorizacija. Študija preučuje tudi vpliv odstranitve uporabniške pristranskosti iz podatkov o ocenah. Poudarek je na uporabi Shapleyevih vrednosti za določanje prispevka posameznih značilk k posameznem priporočilu, kar omogoča generiranje razlag v naravnem jeziku. Predstavljeni so eksperimentalni rezultati za oba nabora podatkov, primerjava uspešnosti obeh algoritmov z in brez odstranitve uporabniške pristranskosti. Ocenjuje se ne samo natančnost sistema, ampak tudi razložljivost s pomočjo analize entropije. Ugotovitve kažejo, da odstranjevanje uporabniške pristranskosti izboljša nekatere vidike razložljivosti, a negativno vpliva na splošno natančnost priporočil. Nadaljnji rezultati razkrivajo, da dodajanje več konteksta jezikovnim modelom lahko izboljša tako kakovost, kot tudi raznolikost pojasnil.

Language:Slovenian
Keywords:priporočilni sistemi, pojasnilna umetna inteligenca, matrična faktorizacija, Shapleyeve vrednosti, uporabniška pristranskost, MovieLens, CoMoDa
Work type:Master's thesis/paper
Typology:2.09 - Master's Thesis
Organization:FE - Faculty of Electrical Engineering
Year:2025
PID:20.500.12556/RUL-173463 This link opens in a new window
COBISS.SI-ID:257785091 This link opens in a new window
Publication date in RUL:17.09.2025
Views:309
Downloads:59
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Secondary language

Language:English
Title:Explainable movie recommender system
Abstract:
This master thesis explores the development of an explainable recommender system for movies. It addresses the problem of information overload and the need for more transparent and understandable recommendation systems, particularly within the context of movie streaming platforms. The core purpose is to implement a system that not only provides recommendations but also explains why those recommendations are made. The work utilizes two publicly available datasets: MovieLens and CoMoDa. Investigated were two recommendation system algorithms, matrix factorization and Bayesian matrix factorization. The study also examines the impact of removing user bias from rating data. The thesis focuses on incorporating Shapley values to determine the contribution of individual features to a given recommendation, enabling the generation of explanations in natural language. Experimental results are presented for both datasets, comparing the performance of both algorithms with and without user bias removal. The thesis not only evaluates the performance of the system, but also the explainability through entropy analysis. The findings suggest that while removing user bias improves certain aspects of explainability, it negatively impacts overall recommendation accuracy. Furthermore, the results reveal that adding more context to language models can improve both the quality and diversity of explanations.

Keywords:recommender systems, explainable artificial intelligence, matrix factorization, Shapley values, user bias, MovieLens, CoMoDa

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