Causal Inference and Machine Learning in Practice with EconML and CausalML: Industrial Use Cases at Microsoft, TripAdvisor, Uber
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Vasilis Syrgkanis | Greg Lewis | Keith Battocchi | Totte Harinen | Maggie Hei | Jing Pan | Miruna Oprescu | Eleanor Dillon | Yifeng Wu | Paul Lo | Huigang Chen | Jeong-Yoon Lee | Vasilis Syrgkanis | Jeong-Yoon Lee | Greg Lewis | Totte Harinen | Huigang Chen | M. Oprescu | Maggie Hei | Keith Battocchi | Eleanor Dillon | Jing Pan | Yifeng Wu | Paul Lo
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