Iterative machine learning algorithms used to power recommender systems often change people's preferences by trying to learn them. Further a recommender can better predict what a user will do by making its users more predictable. Some preference changes on the part of the user are self-induced and desired whether the recommender caused them or not. This paper proposes that solutions to preference manipulation in recommender systems must take into account certain meta-preferences (preferences over another preference) in order to respect the autonomy of the user and not be manipulative.
翻译:用于为推荐者系统提供动力的迭代机学习算法往往会通过试图学习来改变人们的偏好。 进一步的建议者可以更好地预测用户将如何通过使其用户更加可预测来做。 用户的某些偏好变化是自发的,希望是建议者是否造成。 本文建议,在推荐者系统中选择操纵的解决方案必须考虑到某些元偏好(优于另一种偏好 ), 以便尊重用户的自主性而不是操纵性。