报告人:夏志明教授
报告时间:2023-11-14(星期二)9:30-10:30
报告地点:数学楼2-1
#腾讯会议:790-578-592
题目:Multiview PCA: A methodology of feature extraction and dimension reduction for high-order data
摘要:In this talk, we focus on a new PCA methodology for tensor data. Facing with rapidly-increasing demands for analyzing high-order data or multiway data, feature-extracting methods become imperative for analysis and processing. The traditional feature-extracting methods, however, either need to overly vectorize the data and smash the original structure hidden in data, such as PCA and PCA-like methods, which is unfavourable to the data recovery, or can not eliminate the redundant information very well, such as Tucker Decomposition (TD) and TD-like methods. To overcome these limitations, we propose a more flexible and more powerful tool, called the Multiview Principal Components Analysis (Multiview-PCA) in this paper. By segmenting a random tensor into equal-sized subarrays named sections and maximizing variations caused by orthogonal projections of these sections, the Multiview-PCA finds principal components in a parsimonious and flexible way. In so doing, two new operations on tensors, the direction inner/outer product, are introduced to formulate tensor projection and recovery. With different segmentation ways characterized by section depth and direction, the Multiview-PCA can be implemented many times in different ways, which defines the sequential and global Multiview-PCA respectively. These multiple Multiview-PCA take the PCA and PCA-like, Tucker Decomposition and the TD-like as the special cases, which corresponds to the deepest section-depth and the shallowest section depth respectively. We propose an adaptive depth and direction selection algorithm for implementation of Multiview-PCA. The Multiview-PCA is then tested in terms of subspace recovery ability, compression ability and feature extraction performance when applied to a set of artificial data, surveillance videos and hyperspectral imaging data. All the tests support the flexibility, effectiveness and usefulness of Multiview-PCA.
个人简介:夏志明,教授,博士生导师,西北大学数学学院副院长,主要致力于张量数据分析、大数据异质性结构推断、分布式统计推断与计算、生物统计学等数据科学理论与应用研究。在“Biometrika”, “Technometrics”、“IEEE Transaction on Cybernetics”、“Journal of Machine Learning Research”、“Statistics in Medicine”等国际统计与机器学习期刊以及“中国科学”等国内期刊发表论文40余篇;主持国家自然科学基金项目4项,主持省部级项目3项, 作为骨干成员获得“陕西省科学技术进步奖”二、三等奖共2项,“陕西省高校科学技术奖”一等奖共2项;先后赴香港科技大学、佛罗里达大学等科研机构进行专业访问与学术交流。