Even though AI has advanced rapidly in recent years displaying success in solving highly complex problems, the class of Bongard Problems (BPs) yet remain largely unsolved by modern ML techniques. In this paper, we propose a new approach in an attempt to not only solve BPs but also extract meaning out of learned representations. This includes the reformulation of the classical BP into a reinforcement learning (RL) setting which will allow the model to gain access to counterfactuals to guide its decisions but also explain its decisions. Since learning meaningful representations in BPs is an essential sub-problem, we further make use of contrastive learning for the extraction of low level features from pixel data. Several experiments have been conducted for analyzing the general BP-RL setup, feature extraction methods and using the best combination for the feature space analysis and its interpretation.
翻译:尽管大赦国际近年来在解决高度复杂的问题方面取得了迅速的进展,但“邦加德问题”这一类问题在很大程度上仍没有通过现代ML技术得到解决。在本文中,我们提出一种新的办法,不仅试图解决BP,而且还从所学的表述中吸取意义,其中包括将传统的BP重新改编为强化学习(RL)设置,使模型能够获取反事实,以指导其决定,同时也解释其决定。由于在BP中学习有意义的表述是一个基本的次问题,我们进一步利用对比性学习,从像素数据中提取低水平特征。已经进行了一些实验,分析一般BP-RL设置、特征提取方法以及利用最佳组合进行地貌空间分析及其解释。