报告题目:胶囊网络及其应用
报告时间:2018年6月7日(周四)下午1:30-5:30
报告地点:yl6809永利官网南校区计算机大楼A521讲学厅
报告人: 许东教授
Department of Electrical Engineering and Computer Science
Christopher S. Bond Life Sciences Center
University of Missouri, Columbia, MO, 65201, USA
报告摘要:
To address the problems of scalar neurons, a novel deep-learning architecture, known as Capsule Network (CapsNet) was introduced in 2017. The main building block of CapsNet is the capsule, which is a group of neuron vectors whose lengths represent the entity probabilities. Capsule provides a unique and powerful deep-learning building block to better model the diverse relationships inside internal representations of a neural network. We have applied CapsNet in several applications and achieved improved performance over previous deep-learning methods. In this talk, I will discuss the concept, implementation and applications of CapsNet in details.
主办单位:
yl6809永利官网
yl6809永利官网软件学院
yl6809永利官网计算机科学技术研究所
符号计算与知识工程教育部重点实验室