Hiroki Horino

2papers

2 Papers

IRApr 23, 2019
Topic Classification Method for Analyzing Effect of eWOM on Consumer Game Sales

Yoshiki Horii, Hirofumi Nonaka, Elisa Claire Alemán Carreón et al.

Electronic word-of-mouth (eWOM) has become an important resource for the analysis of marketing research. In this study, in order to analyze user needs for consumer game software, we focus on tweet data. And we proposed topic extraction method using entropy-based feature selection based feature expansion. We also applied it to the classification of the data extracted from tweet data by using SVM. As a result, we achieved a 0.63 F-measure.

IRApr 23, 2019
Development of an Entropy-Based Feature Selection Method and Analysis of Online Reviews on Real Estate

Hiroki Horino, Hirofumi Nonaka, Elisa Claire Alemán Carreón et al.

In recent years, data posted about real estate on the Internet is currently increasing. In this study, in order to analyze user needs for real estate, we focus on "Mansion Community" which is a Japanese bulletin board system (hereinafter referred to as BBS) about Japanese real estate. In our study, extraction of keywords is performed based on the calculation of the entropy value of each word, and we used them as features in a machine learning classifier to analyze 6 million posts at "Mansion Community". As a result, we achieved a 0.69 F-measure and found that the customers are particularly concerned about the facility of apartment, access, and price of an apartment.