This paper presents a computational model of concept learning using Bayesian inference for a grammatically structured hypothesis space, and test the model on multisensory (visual and haptics) recognition of 3D objects. The study is performed on a set of artificially generated 3D objects known as fribbles, which are complex, multipart objects with categorical structures. The goal of this work is to develop a working multisensory representational model that integrates major themes on concepts and concepts learning from the cognitive science literature. The model combines the representational power of a probabilistic generative grammar with the inferential power of Bayesian induction.
翻译:本文介绍了利用巴伊西亚语学推理法结构假设空间概念学习的计算模型,并测试了3D天体多感官(视觉和机能)识别模型。该研究针对一组人工生成的3D天体,称为卷轴,这些天体复杂、多部分,具有绝对结构。这项工作的目标是开发一个工作多感官代表模型,将从认知科学文献中学习的概念和概念的主要主题结合起来。该模型将概率性突变语法的表示力与贝耶斯人感应的推断力结合起来。