Counterfactual Evaluation and Learning from Logged User Feedback
- Adith Swaminathan | Cornell University
Interactive systems like search engines, recommender systems, and ad placement platforms are ubiquitous. Evaluating and optimizing these systems is hard – users’ feedback governs system performance, and gathering their feedback in repeated randomized experiments is costly. I study how we can use logs collected from deployed systems to perform offline evaluation and learning. I will outline two projects (Evaluation: Recommendations as Treatments, ICML’16 and Learning: Counterfactual Risk Minimization, ICML’15) that advance the state of the art for these problems. I will also briefly reference the tutorial Thorsten Joachims and I taught at SIGIR’16 (http://www.cs.cornell.edu/~adith/CfactSIGIR2016/ (opens in new tab)) that explores these counterfactual evaluation and learning problems in more detail.
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Adith Swaminathan
Principal Researcher
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Lihong Li
Principal Researcher
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接下来观看
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Session: Compute & Trust (Systems)
- Ashish Panwar,
- Aditya Desai,
- Abhilash Jindal
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Multimodal & Embodied Intelligence (Pt 1), Panel on Multimodal AI: Progress, Pitfalls, Possibilities
- Madhava Krishna,
- Sriram Ganapathy,
- Somak Aditya
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Session on Compute & Trust (Security)
- Krishna Pillutla,
- Danish Pruthi
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Session on Reasoning
- Hongxiang Fan,
- Nagarajan Natarajan
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Session on Retrieval
- Lokesh Nagalapatti,
- Soumen Chakrabarti
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