基于本体的摩托车会话推荐系统

Muhammad Nur Iqbal Wariesky, Z. Baizal
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引用次数: 0

摘要

客户在选择适合其现代生活方式的汽车时,通常会遇到各种挑战。尽管有许多推荐系统可以帮助人们根据独特的需求做出明智的决定,但这些系统往往缺乏用户的直接参与。此外,它们的推荐主要基于技术规格而非功能需求。为了解决这些局限性,最近的一项研究旨在创建一个基于本体的会话推荐系统。该系统结合了用户偏好,并根据功能需求提供个性化推荐。该研究根据准确性和用户满意度指标对系统进行了评估,发现其推荐准确率高达 87.84%,令人印象深刻。此外,该研究还收到了根据各种功能要求搜索摩托车的用户的积极反馈。这些反馈证明了该系统在帮助客户做出明智决策方面的有效性。
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Ontology-Based Conversational Recommender System for Motorcycle
It is common for customers to face challenges when trying to choose a vehicle that fits their modern lifestyle. Even though there are many recommender systems available to assist with making informed decisions based on unique needs, these systems often lack direct user involvement. Additionally, their recommendations are primarily based on technical specifications rather than functional requirements. To address these limitations, a recent study aimed to create an ontology-based conversational recommender system. This system incorporates user preferences and offers personalized recommendations based on functional requirements. The study evaluated the system based on accuracy and user satisfaction metrics and found that it achieved an impressive recommendation accuracy rate of 87.84%. Furthermore, the study received positive feedback from users searching for motorcycles based on various functional requirements. This feedback is a testament to the system's effectiveness in aiding customers in making informed decisions.
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