The human ability to flexibly reason using analogies with domain-general content depends on mechanisms for identifying relations between concepts, and for mapping concepts and their relations across analogs. Building on a recent model of how semantic relations can be learned from non-relational word embeddings, we present a new computational model of mapping between two analogs. The model adopts a Bayesian framework for probabilistic graph matching, operating on semantic relation networks constructed from distributed representations of individual concepts and of relations between concepts. Through comparisons of model predictions with human performance in a novel mapping task requiring integration of multiple relations, as well as in several classic studies, we demonstrate that the model accounts for a broad range of phenomena involving analogical mapping by both adults and children. We also show the potential for extending the model to deal with analog retrieval. Our approach demonstrates that human-like analogical mapping can emerge from comparison mechanisms applied to rich semantic representations of individual concepts and relations.
翻译:人类使用与一般领域内容相似的灵活理性能力取决于确定概念之间关系的机制,以及绘制概念及其在模拟关系中的关系的机制。我们以最近如何从非关联词嵌入中学习语义关系的模式为基础,提出了两个类比之间新的绘图计算模型。模型采用贝叶斯框架进行概率图比比比比图比对,利用根据个人概念分布式表述和概念之间关系的语义关系网络运作。通过将模型预测与人类在需要融合多种关系的新式绘图任务中的性能进行比较,以及在若干经典研究中,我们证明涉及成人和儿童模拟绘图的广泛现象的模型账户。我们还展示了扩大模型处理模拟检索的潜力。我们的方法表明,从用于丰富个体概念和关系的语义表达的比较机制中可以产生人式模拟制图。