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User Evaluations on Sentiment-based Recommendation Explanations

机译:基于情绪的推荐解释的用户评估

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The explanation interface has been recognized as important in recommender systems because it can allow users to better judge the relevance of recommendations to their preferences and, hence, make more informed decisions. In different product domains, the specific purpose of explanation can be different. For high-investment products (e.g., digital cameras, laptops), how to educate the typical type of new buyers about product knowledge and, consequently, improve their preference certainty and decision quality is essentially crucial. With this objective, we have developed a novel tradeoff-oriented explanation interface that particularly takes into account sentiment features as extracted from product reviews to generate recommendations and explanations in a category structure. In this manuscript, we first reported the results of an earlier user study (in both before-after and counter-balancing setups) that compared our prototype system with the traditional one that purely considers static specifications for explanations. This experiment revealed that adding sentiment-based explanations can significantly increase users' product knowledge, preference certainty, perceived information usefulness, perceived recommendation transparency and quality, and purchase intention. In order to further identify the reason behind users' perception improvements on the sentiment-based explanation interface, we performed a follow-up lab controlled eye-tracking experiment that investigated how users viewed information and compared products on the interface. This study shows that incorporating sentiment features into the tradeoff-oriented explanations can significantly affect users' eye-gaze pattern. They were stimulated to not only notice bottom categories of products, but also, more frequently, to compare products across categories. The results also disclose users' inherent information needs for sentiment-based explanations, as they allow users to better understand the recommended products and gain more knowledge about static specifications.
机译:解释界面已被识别在推荐系统中很重要,因为它可以让用户更好地判断建议对他们的偏好的相关性,因此做出更明智的决策。在不同的产品域中,解释的特定目的可以是不同的。对于高投资产品(例如,数码相机,笔记本电脑),如何教育关于产品知识的典型类型的新买家,从而提高他们的偏好确定性和决策质量至关重要。为此,我们开发了一种新的权衡导向的解释界面,特别考虑了从产品审查中提取的情绪功能,以在类别结构中生成建议和解释。在这份手稿中,我们首先报告了早期用户学习的结果(在前后和反平衡设置中),将我们的原型系统与纯粹考虑静态规范进行解释的传统系统进行了比较。该实验透露,增加基于情绪的解释可以显着提高用户的产品知识,偏好确定性,感知信息用品,感知推荐透明度和质量,以及购买意图。为了进一步确定用户对基于情绪的解释界面的看法改进的原因,我们执行了一个后续实验室控制的眼跟踪实验,该试验研究了用户在界面上观看信息和比较产品的方式。本研究表明,将情感特征纳入术前解释可以显着影响用户的眼睛凝视图案。他们不仅被刺激,不仅注意到产品底层类别,而且更常见,更频繁地比较各类产品。结果还披露了用户对基于情绪的解释的固有信息需求,因为它们允许用户更好地了解推荐的产品并获得更多关于静态规范的知识。

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