The effect of explanations and algorithmic accuracy on visual recommender systems of artistic images

Vicente Dominguez, Pablo Messina, Ivania Donoso-Guzmán, Denis Parra
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引用次数: 37

Abstract

There are very few works about explaining content-based recommendations of images in the artistic domain. Current works do not provide a perspective of the many variables involved in the user perception of several aspects of the system such as domain knowledge, relevance, explainability, and trust. In this paper, we aim to fill this gap by studying three interfaces, with different levels of explainability, for artistic image recommendation. Our experiments with N=121 users confirm that explanations of recommendations in the image domain are useful and increase user satisfaction, perception of explainability and relevance. Furthermore, our results show that the observed effects are also dependent on the underlying recommendation algorithm used. We tested two algorithms: Deep Neural Networks (DNN), which has high accuracy, and Attractiveness Visual Features (AVF) with high transparency but lower accuracy. Our results indicate that algorithms should not be studied in isolation, but rather in conjunction with interfaces, since both play a significant role in the perception of explainability and trust for image recommendation. Finally, using the framework by Knijnenburg et al., we provide a comprehensive model which synthesizes the effects between different variables involved in the user experience with explainable visual recommender systems of artistic images.
解释和算法精度对艺术图像视觉推荐系统的影响
很少有作品解释艺术领域中基于内容的图像推荐。目前的工作并没有提供用户对系统几个方面的感知所涉及的许多变量的视角,如领域知识、相关性、可解释性和信任。在本文中,我们旨在通过研究具有不同可解释性水平的艺术图像推荐的三个接口来填补这一空白。我们对N=121个用户的实验证实,图像域的推荐解释是有用的,可以提高用户满意度、可解释性和相关性的感知。此外,我们的结果表明,观察到的效果也依赖于所使用的底层推荐算法。我们测试了两种算法:具有高准确度的深度神经网络(Deep Neural Networks, DNN)和具有高透明度但准确度较低的吸引力视觉特征(attraction Visual Features, AVF)。我们的研究结果表明,算法不应该孤立地研究,而应该与界面结合起来研究,因为两者在图像推荐的可解释性和信任感知中都起着重要作用。最后,使用Knijnenburg等人的框架,我们提供了一个综合模型,该模型综合了用户体验中涉及的不同变量之间的影响,并提供了可解释的艺术图像视觉推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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