A generalized stereotype learning approach and its instantiation in trust modeling

عنوان A generalized stereotype learning approach and its instantiation in trust modeling
نویسنده Fang, H., Zhang, J., Şensoy, Murat
تاریخ انتشار: 2018-08
محل انتشار - Elsevier
موضوع User modeling, Stereotype trust model, Fuzzy semantic framework, E-commerce
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه: دانشگاه اوزیغین
شناسه دارایی کتابخانه 1567-4223
شماره ثبت 34c5ef3b-2a76-46c5-a1d1-2365f0163ebe
محل کتابخانه Computer Science
تاریخ 2018-08
یادداشت‌ها National Natural Science Foundation of China ; Basic Academic Discipline Program for Shanghai University of Finance and Economics
متن نمونه Owing to the lack of historical data regarding an entity in online communities, a user may rely on stereotyping to estimate its behavior based on historical data about others. However, these stereotypes cannot accurately reflect the user's evaluation if they are based on limited historical data about other entities. In view of this issue, we propose a novel generalized stereotype learning approach: the fuzzy semantic framework. Specifically, we propose a fuzzy semantic process, incorporated with traditional machine-learning techniques to construct stereotypes. It consists of two sub-processes: a fuzzy process that generalizes over non-nominal attributes (e.g., price) by splitting their values in a fuzzy manner, and a semantic process that generalizes over nominal attributes (e.g., location) by replacing their specific values with more general terms according to a predefined ontology. We also implement the proposed framework on the traditional decision tree method to learn users' stereotypes and validate the effectiveness of our framework for computing trust in e-marketplaces. Experiments on real data confirm that our proposed model can accurately measure the trustworthiness of sellers with which buyers have limited experience.
DOI 10.1016/j.elerap.2018.06.004
Cilt 30
مشاهده در منبع دانشگاه اوزیغین دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی دانشگاه اوزیغین

A generalized stereotype learning approach and its instantiation in trust modeling

نویسنده Fang, H., Zhang, J., Şensoy, Murat
تاریخ انتشار 2018-08
محل انتشار - Elsevier
موضوع User modeling, Stereotype trust model, Fuzzy semantic framework, E-commerce
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه دانشگاه اوزیغین
شناسه دارایی کتابخانه 1567-4223
شماره ثبت 34c5ef3b-2a76-46c5-a1d1-2365f0163ebe
محل کتابخانه Computer Science
تاریخ 2018-08
یادداشت‌ها National Natural Science Foundation of China ; Basic Academic Discipline Program for Shanghai University of Finance and Economics
متن نمونه Owing to the lack of historical data regarding an entity in online communities, a user may rely on stereotyping to estimate its behavior based on historical data about others. However, these stereotypes cannot accurately reflect the user's evaluation if they are based on limited historical data about other entities. In view of this issue, we propose a novel generalized stereotype learning approach: the fuzzy semantic framework. Specifically, we propose a fuzzy semantic process, incorporated with traditional machine-learning techniques to construct stereotypes. It consists of two sub-processes: a fuzzy process that generalizes over non-nominal attributes (e.g., price) by splitting their values in a fuzzy manner, and a semantic process that generalizes over nominal attributes (e.g., location) by replacing their specific values with more general terms according to a predefined ontology. We also implement the proposed framework on the traditional decision tree method to learn users' stereotypes and validate the effectiveness of our framework for computing trust in e-marketplaces. Experiments on real data confirm that our proposed model can accurately measure the trustworthiness of sellers with which buyers have limited experience.
DOI 10.1016/j.elerap.2018.06.004
Cilt 30
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
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