TY - GEN
T1 - User behavior analysis and commodity recommendation for point-earning apps
AU - Chen, Yu Ching
AU - Yang, Chia Ching
AU - Liau, Yan Jian
AU - Chang, Chia Hui
AU - Chen, Pin Liang
AU - Yang, Ping Che
AU - Ku, Tsun
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2017/3/16
Y1 - 2017/3/16
N2 - In recent years, due to the rapid development of e-commerce, personalized recommendation systems have prevailed in product marketing. However, recommendation systems rely heavily on big data, creating a difficult situation for businesses at initial stages of development. We design several methods - including a traditional classifier, heuristic scoring, and machine learning - to build a recommendation system and integrate content-based collaborative filtering for a hybrid recommendation system using Co-Clustering with Augmented Matrices (CCAM). The source, which include users' persona from action taken in the app & Facebook as well as product information derived from the web. For this particular app, more than 50% users have clicks less than 10 times in 1.5 year leading to insufficient data. Thus, we face the challenge of a cold-start problem in analyzing user information. In order to obtain sufficient purchasing records, we analyzed frequent users and used web crawlers to enhance our item-based data, resulting in F-scores from 0.756 to 0.802. Heuristic scoring greatly enhances the efficiency of our recommendation system.
AB - In recent years, due to the rapid development of e-commerce, personalized recommendation systems have prevailed in product marketing. However, recommendation systems rely heavily on big data, creating a difficult situation for businesses at initial stages of development. We design several methods - including a traditional classifier, heuristic scoring, and machine learning - to build a recommendation system and integrate content-based collaborative filtering for a hybrid recommendation system using Co-Clustering with Augmented Matrices (CCAM). The source, which include users' persona from action taken in the app & Facebook as well as product information derived from the web. For this particular app, more than 50% users have clicks less than 10 times in 1.5 year leading to insufficient data. Thus, we face the challenge of a cold-start problem in analyzing user information. In order to obtain sufficient purchasing records, we analyzed frequent users and used web crawlers to enhance our item-based data, resulting in F-scores from 0.756 to 0.802. Heuristic scoring greatly enhances the efficiency of our recommendation system.
KW - co-clustering with augmented matrices
KW - matrix factorization
KW - time sequential patterns
KW - user behavior models
UR - http://www.scopus.com/inward/record.url?scp=85017622810&partnerID=8YFLogxK
U2 - 10.1109/TAAI.2016.7880109
DO - 10.1109/TAAI.2016.7880109
M3 - 會議論文篇章
AN - SCOPUS:85017622810
T3 - TAAI 2016 - 2016 Conference on Technologies and Applications of Artificial Intelligence, Proceedings
SP - 170
EP - 177
BT - TAAI 2016 - 2016 Conference on Technologies and Applications of Artificial Intelligence, Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2016 Conference on Technologies and Applications of Artificial Intelligence, TAAI 2016
Y2 - 25 November 2016 through 27 November 2016
ER -