澳大利亚悉尼科技大学徐贯东教授学术报告通知

来源:计算机与人工智能学院 发布日期: Thu Sep 09 00:00:00 CST 2021 浏览次数:890

报告题目:Causal learning for recommender systems

报告人:澳大利亚悉尼科技大学徐贯东教授

报告时间:2021年9月22日(周三)下午7:00

报告地点:ZOOM线上会议(会议号:86409794408;密码:212121)

主持人:李天瑞教授

报告摘要

Causal learning has attracted a lot of research attention with the advance in explainable artificial intelligence. Causal learning contains causal discovery and causal inference two directions, where causal inference is to estimate the causal effects in treatment guided by causal graph structure and has been extended in tasks of counterfactual analysis, disentanglement learning, and debiasing. In this talk, we will introduce our new proposal of incorporating causal learning into recommender systems, and present two recent research on de-biasing confounding in recommendation and causal disentanglement for Intent Learning in Recommendation. Experimental studies on real world datasets have proven the effectiveness of the proposed models.

报告人简介

Dr Guandong Xu is an Australian Computer Society (ACS) Fellow and Professor at School of Computer Science, University of Technology Sydney, specialising in Data Science, Recommender Systems, and Social Computing. He has published 250+ papers in leading journals and conferences. He leads Smart Future Research Centre and Data Science and Machine Intelligence Lab at UTS. He is the Editor-in-Chief of Human-centric Intelligent Systems and assistant Editor-in-Chief of World Wide Web Journal and serving in editorial board or guest editors for several international journals. He has received several Awards from academia and industry, e.g., Top-10 Australian Analytics Leader Award and Australian Computer Society Disruptors Award.