While Machine learning gives rise to astonishing results in automated systems, it is usually at the cost of large data requirements. This makes many successful algorithms from machine learning unsuitable for human-machine interaction, where the machine must learn from a small number of training samples that can be provided by a user within a reasonable time frame. Fortunately, the user can tailor the training data they create to be as useful as possible, severely limiting its necessary size -- as long as they know about the machine's requirements and limitations. Of course, acquiring this knowledge can in turn be cumbersome and costly. This raises the question of how easy machine learning algorithms are to interact with. In this work, we address this issue by analyzing the intuitiveness of certain algorithms when they are actively taught by users. After developing a theoretical framework of intuitiveness as a property of algorithms, we introduce an active teaching paradigm involving a prototypical two-dimensional spatial learning task as a method to judge the efficacy of human-machine interactions. Finally, we present and discuss the results of a large-scale user study into the performance and teaching strategies of 800 users interacting with two prominent machine learning algorithms in our system, providing first evidence for the role of intuition as an important factor impacting human-machine interaction.
翻译:虽然机器学习在自动化系统中产生了惊人的结果,但通常以大量数据要求的代价为代价。这使得机器学习中的许多成功算法不适于人体机器互动,机器必须从用户在合理时间框架内提供的少量培训样本中学习。幸运的是,用户可以调整他们制作的培训数据,使其尽可能有用,严重限制其必要的规模,只要他们知道机器的要求和限制,获得这种知识就会变得繁琐和昂贵。这提出了机器学习算法如何互动的问题。在这项工作中,我们通过分析某些算法在用户积极教授时的直观性来解决这个问题。在开发了一种本能的理论框架作为算法的属性之后,我们引入了一种积极的教学模式,包括一种准的二维空间学习任务,作为判断机器互动效率的方法。最后,我们介绍并讨论大规模用户研究的结果,以800名用户的性表现和教学战略与两种重要的机器学习算法在系统中进行互动,为作为人感应力的第一作用提供证据。