DocumentCode :
2247832
Title :
A combination of temporal and general preferences for app recommendation
Author :
Bo-Ram Jang ; Yunseok Noh ; Sang-Jo Lee ; Seong-Bae Park
Author_Institution :
Sch. of Comput. Sci. & Eng., Kyungpook Nat. Univ., Daegu, South Korea
fYear :
2015
fDate :
9-11 Feb. 2015
Firstpage :
178
Lastpage :
185
Abstract :
User preferences in various kinds of recommendations are in general made from the contents of recommending targets or the patterns that the targets are consumed in. As a result, a great number of previous works have focused on designing a good user preference. However, one important thing that is missed in the previous studies on user preference is that user preferences are affected by time. That is, it is of importance to capture the change of user preferences over time for better recommendations. This phenomenon is salient especially in using mobile apps. Therefore, this paper presents a time-based personalized application recommendation system which captures temporal changes in user preference. The proposed recommendation system can recommend dynamically the apps from an application market by considering the user preference and time. In order to recommend apps, the app descriptions are used to recommend new apps to users, and user preference is modeled using a probabilistic topic model from the descriptions. In order to incorporate time to the topic model, the proposed temporal topic model considers the usage of mobile apps over time for a specific user. The main problem of this temporal topic model is that it is not well trained when the number of apps that the user has used is small, and it can be remedied by incorporating a normal LDA-based topic model. As a result, the final recommendation model is a combination of temporal and LDA-based topic models. The proposed method is validated through a series of experiments. For app usages of three users for 35 days on average, it is compared with LDA-based topic model and the model that uses only temporal topic model. According to the experimental results, the proposed method outperforms the two baseline models up to 18% point in nDCG. This result proves that the proposed method is effective in content-based app recommendation.
Keywords :
mobile computing; recommender systems; statistical analysis; LDA-based topic model; content-based app recommendation model; general preferences; mobile apps; nDCG; probabilistic topic model; temporal preferences; temporal topic model; time-based personalized application recommendation system; user preferences; Context; Equations; Games; Google; Mathematical model; Vectors; Vocabulary; App Recommendation; Personalized Recommendation; Topic Model; Topics over Time; User Preference;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Big Data and Smart Computing (BigComp), 2015 International Conference on
Conference_Location :
Jeju
Type :
conf
DOI :
10.1109/35021BIGCOMP.2015.7072829
Filename :
7072829
Link To Document :
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