成AV人片一区二区三区久久-精品国产综合区久久久久久-人妻免费久久久久久久了-亚洲综合无码久久精品综合

智能決策與機器學習研究中心系列講座(三) 2019-12-18


講座題目:When to and When Not To Make a Recommendation? A Product-Centric Approach to Optimize the Timing Decision of Online Recommendations

報告人:常象宇 bwin必贏唯一官網副教授

報告時間:2019年12月23日星期一下午15:00-16:30

報告地點:管院311會議室


報告內容: Recommending the right product at the right time for consumers is the goal of modern online recommendation systems. However, consumers who shop in e-commerce often complain about a phenomenon that the product which you just bought is recommended again. There are two possibilities for this kind of complaint. First, the recommended items do not need to be purchased repeatedly. Second, the recommended item is repurchable, but the recommendation time is not proper. To optimize current recommendation systems and improve consumer’s satisfactions, this paper studies the following problems:

1. Why recommend products that you just purchased?

2. What type of products are prone to repurchase? What type of products are not prone to repurchase?

3. What is an optimal time interval for the recommendation?

4. Can we optimize the current recommendation system so that we can reduce customer complaints while still keep the purchase rate?

To this end, we introduce the consumer-based analysis which has been well studied in the marketing science into the machine-learning-based recommendation systems to handle the above problems.

 

報告人簡介:常象宇, bwin必贏唯一官網副教授,華盛頓大學西雅圖分校工業(yè)與系統工程系客座副教授。2017年入選陜西省高等學校優(yōu)秀青年學者支持計劃。研究主要集中在統計機器學習,及其在管理問題上的應用。曾在統計學期刊AOS,JOE,SS,EJS等;機器學習期刊JMLR,TNNLS,TC,TSP等發(fā)表論文三十余篇。同時也曾是人工智能與數據挖掘相關會議:ICML,AAAI,IJCAI,SDM,ICDM,ICDS 等的程序委員會委員。

成AV人片一区二区三区久久-精品国产综合区久久久久久-人妻免费久久久久久久了-亚洲综合无码久久精品综合