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Estimating Propensity for Causality-based Recommendation without Exposure Data
Speaker (s):

LIU Zhongzhou
PhD Candidate,
School of Computing and Information Systems
Singapore Management University
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Date:
Time:
Venue:
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23 November 2023, Thursday
11:45am – 12:00pm
Meeting Room 4.4, Level 4,
School of Computing and Information
Systems 1 (SCIS1),
80 Stamford Road, Singapore 178902
We look forward to seeing you at this research seminar.
Please register by 21 November 2023.

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About the Talk
Causality-based recommendation systems focus on the causal effects of user-item interactions resulting from item exposure (i.e., which items are recommended or exposed to the user), as opposed to conventional correlation-based recommendation. They are gaining popularity due to their multi-sided benefits to users, sellers and platforms alike. However, existing causality-based recommendation methods require additional input in the form of exposure data and/or propensity scores (i.e., the probability of exposure) for training. Such data, crucial for modelling causality in recommendation, are often not available in real-world situations due to technical or privacy constraints. In this paper, we bridge the gap by proposing a new framework, called Propensity Estimation for Causality-based Recommendation (PropCare). It can estimate the propensity and exposure from a more practical setup, where only interaction data are available without any ground truth on exposure or propensity in training and inference. We demonstrate that, by relating the pairwise characteristics between propensity and item popularity, PropCare enables competitive causality-based recommendation given only the conventional interaction data. We further present a theoretical analysis on the bias of the causal effect under our model estimation. Finally, we empirically evaluate PropCare through both quantitative and qualitative experiments.
This is a Pre-Conference talk for the Thirty-seventh Conference on Neural Information Processing Systems (NeurIPS 2023).
About the Speaker
LIU Zhongzhou is a Ph.D. candidate in Computer Science at the SMU School of Computing and Information Systems, supervised by Assistant Prof. FANG Yuan. His research aims to investigate the trustworthy recommendation systems that go beyond traditional user-item collaborative filtering.
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