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Adaptive genetic algorithm for feature weighting in multi-criteria recommender systems
Kaur, Gursimarpreet1, Ratnoo, Saroj2.
Recommender Systems (RS) have proven to be a successful personalization technique in
this era of ever increasing information overload. Among many available recommendation
techniques, Collaborative Filtering (CF) is the most popularly used. However, most of the
CF applications use single ratings for recommending items and the use of multi-criteria
ratings in the recommendation process is still under-explored. This paper proposes multicriteria
RS based on Adaptive Genetic Algorithm (AGA). The AGA design, which updates
the crossover and mutation rates dynamically, is employed to model the users’ preferences
for multi-criteria ratings on different attributes of items. The AGA optimizes a user’s
preferences for different attributes in the form of a weight vector. Thus, the AGA finds
an individual optimal weight vector in relation to each user. The weight vector is used to
recommend items to the respective user. The experiments are conducted on Yahoo movies,
a well known multi-criteria rating dataset. The experimental results confirm that the AGA
based multi-criteria RS outperforms the traditional single criteria based Collaborative
Filtering RS and the simple GA based multi-criteria RS.
Affiliation:
- Indian Space Research Organization, India
- Guru Jambheshwar University of Science and Technology, India
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Indexation |
Indexed by |
MyJurnal (2021) |
H-Index
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3 |
Immediacy Index
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0.000 |
Rank |
0 |
Indexed by |
Scopus 2020 |
Impact Factor
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CiteScore (1.1) |
Rank |
Q3 (Agricultural and Biological Sciences (all)) Q3 (Environmental Science (all)) Q3¬¬- (Computer Science (all)) Q3 (Chemical Engineering (all)) |
Additional Information |
SJR (0.174) |
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