学会発表

設計工学研究室
准教授 小林正和

掲載年度 2022
種類 国外
学会名 9TH INTERNATIONAL CONFERENCE ON KANSEI ENGINEERING AND EMOTION RESEARCH 2022 (KEER2022)
発表題目 Design aesthetics recommender system based on customer profile and wanted affect.
発表者 BENAISSA, Brahim
Masakazu Kobayashi
主催団体 The Universitat Politècnica de Catalunya | BarcelonaTech and the Societies of the Kansei Engineering and Emotion Research
発表場所 Barcelona, Spain
発表日 2022/09/06
講演内容 Product recommendation systems have been instrumental in online commerce since the early days. Their development is expanded further with the help of big data and advanced deep learning methods, where consumer profiling is central. The interest of the consumer can now be predicted based on the personal past choices and the choices of similar consumers. However, what is currently defined as a choice is based on quantifiable data, like product features, cost, and type. This paper investigates the possibility of profiling customers based on the preferred
product design and wanted affects. We considered the case of vase design, where we study individual Kansei of each design. The personal aspects of the consumer considered in this study were decided based on our literature review conclusions on the consumer response to product design. We build a representative consumer model that constitutes the recommendation system's core using deep learning. It asks the new consumers to provide what affect they are looking for, through Kansei adjectives, and recommend; as a result, the aesthetic design that will
most likely cause that affect.