论文标题
通过批评与解释互动
Interacting with Explanations through Critiquing
论文作者
论文摘要
使用个性化解释来支持建议可以提高信任和感知的质量。但是,要实际获得更好的建议,需要有一种方法让用户通过与解释进行互动来修改建议标准。我们使用方面标记提出了一种新颖的技术,该技术学会从评论文本中生成个性化的建议解释,我们表明,人类用户非常喜欢这些解释,而不是最先进的技术所产生的解释。我们的作品最重要的创新是,它允许用户通过批评文本解释来对建议做出反应:删除(对称地添加)他们不喜欢或不再相关的某些方面(对称性地是有意义的)。该系统根据评论更新其用户模型和最终建议。这是基于一种新颖的无监督批评方法,用于用文本解释进行单步批评。两个现实世界数据集的实验表明,我们的系统是第一个在适应多步批评中表达的偏好方面实现良好性能的实验。
Using personalized explanations to support recommendations has been shown to increase trust and perceived quality. However, to actually obtain better recommendations, there needs to be a means for users to modify the recommendation criteria by interacting with the explanation. We present a novel technique using aspect markers that learns to generate personalized explanations of recommendations from review texts, and we show that human users significantly prefer these explanations over those produced by state-of-the-art techniques. Our work's most important innovation is that it allows users to react to a recommendation by critiquing the textual explanation: removing (symmetrically adding) certain aspects they dislike or that are no longer relevant (symmetrically that are of interest). The system updates its user model and the resulting recommendations according to the critique. This is based on a novel unsupervised critiquing method for single- and multi-step critiquing with textual explanations. Experiments on two real-world datasets show that our system is the first to achieve good performance in adapting to the preferences expressed in multi-step critiquing.