Browse > Article
http://dx.doi.org/10.9728/dcs.2017.18.3.535

Mobile Context Based User Behavior Pattern Inference and Restaurant Recommendation Model  

Ahn, Byung-Ik (SikSin Co., Ltd.)
Jung, Ku-Imm (SikSin Co., Ltd.)
Choi, Hae-Lim (SikSin Co., Ltd.)
Publication Information
Journal of Digital Contents Society / v.18, no.3, 2017 , pp. 535-542 More about this Journal
Abstract
The ubiquitous computing made it happen to easily take cognizance of context, which includes user's location, status, behavior patterns and surrounding places. And it allows providing the catered service, designed to improve the quality and the interaction between the provider and its customers. The personalized recommendation service needs to obtain logical reasoning to interpret the context information based on user's interests. We researched a model that connects to the practical value to users for their daily life; information about restaurants, based on several mobile contexts that conveys the weather, time, day and location information. We also have made various approaches including the accurate rating data review, the equation of Naïve Bayes to infer user's behavior-patterns, and the recommendable places pre-selected by preference predictive algorithm. This paper joins a vibrant conversation to demonstrate the excellence of this approach that may prevail other previous rating method systems.
Keywords
Context-Awareness; Inference; Naive Bayes; Place Recommendation System; User Similarity;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 Seung-Wan Ryu, Hyo-Sun Jang, Dong-Cheon Sin and Se-Kwon Park, Context-aware computing technology trends, NIPA, Weekly Technology Trends, the consecutive number of volumes 1435, pp. 1-10, 2010
2 Hyo-Seok Seo, Sang-Yong Lee, A Model to Infer Users' Behavior Patterns for Personalized Recommendation Service based Context-Awareness, The Journal of digital policy & management, v.10, no.1, pp. 293-297, 2012
3 Wikipedia Encyclopedia, https://ko.wikipedia.org/wiki/나이브_베이즈_분류
4 Byung-Ik Ahn, Ku-Imm Jung, Hae-Lim Choi, A Study on Recommendation Systems based on User multi-attribute attitude models and Collaborative filtering Algorithm, Smart Media Journal, Vol.5, No.2, pp. 84-89, 2016
5 Sun-You Kim, Sung-Bae Cho, "A Context-Aware Mobile Music Recommendation System to Consider User's Music Preference", Korean Institute of Information Scientists and Engineers (KIISE), pp. 1047-1049, 2013
6 Yeon-Ju Kim, The Effect of Feeling caused by the Weather on Consumer's Beverage Selection, Master's Thesis, SEJONG Univ., 2016
7 Hee-Taek Kim, Sung-Bae Cho, User Adaptive Restaurant Recommendation Service in Mobile Environment based on Bayesian Network Learning, HCI Conference, pp. 6-10, 2009
8 Ji-Sun Park, Taek-Hun Kim, Yong-Suk, Ryu and Sung-Bong Yang, A Predictive Algorithm using 2 - way Collaborative Filtering for Recommender Systems, Korean Institute of Information Scientists and Engineers (KIISE), Vol.29, No.9-10, pp.669-675, 2002
9 Naver Knowledge Encyclopedia IT Glossary, http://terms.naver.com/entry.nhn?docId=3432452&cid=58457&categoryId=58457
10 Hong-Chol Shin, Location based recommandation system using quadtree index, Master's Thesis, YeonSe Univ., 2016
11 R&D Planning Division, Context Awareness Technology and Future Prospect, Korea Communications Ageny, No.7, pp. 1-11, 2013
12 Su-Mi Chung, The Effect of the Weather on Food Delivery Sales : focus on the weather sentiment factor and difference between a season, Master's Thesis, EHWA Univ., 2016
13 In-Gyung Choi, Ji-Hyun Lee, A Study on the UX Model of Application utilizing System based on Context-Awareness-Focused on Context-Awareness by socially aware computing, GCT-Journal Papers, Korea Institute of Design Science, pp. 269-278, 2013