[Statlist] Fwd: Next talk: Tuesday, 19 December 2017, with Sören Künzel (University of California, Berkeley)
Maurer Letizia
letiziamaurer at ethz.ch
Mon Dec 18 13:28:48 CET 2017
REMINDER:
Anfang der weitergeleiteten Nachricht:
Von: Maurer Letizia <cletizia at ethz.ch<mailto:cletizia at ethz.ch>>
Betreff: Next talk: Tuesday, 19 December 2017, with Sören Künzel (University of California, Berkeley)
Datum: 13. Dezember 2017 09:42:09 MEZ
An: <statlist at stat.ch<mailto:statlist at stat.ch>>
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_________________________________________________
ETH and University of Zurich
Organisers:
Proff. P. Bühlmann - L. Held - T. Hothorn - M. Maathuis -
N. Meinshausen - S. van de Geer - M. Wolf
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We are glad to announce the following talk:
Tuesday, 19.12.2017 at 15.15h ETH Zurich HG G19.2
with Sören Künzel (University of California, Berkeley)
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Title:
Meta-learners for Estimating Heterogeneous Treatment Effects using Machine Learning <https://www.math.ethz.ch/sfs/news-and-events/research-seminar.html?s=hs17#e_11407>
Abstract:
There is growing interest in estimating and analyzing heterogeneous treatment effects in experimental and observational studies. We describe a number of meta-algorithms that can take advantage of any machine learning or regression method to estimate the conditional average treatment effect (CATE) function. Meta-algorithms build on base algorithms --- such as OLS, the Nadaraya-Watson estimator, Random Forests (RF), Bayesian Additive Regression Trees (BART) or neural networks --- to estimate the CATE, a function that the base algorithms are not designed to estimate directly. We introduce a new meta-algorithm, the X-learner, that is provably efficient when the number of units in one treatment group is much larger than another, and it can exploit structural properties of the CATE function. For example, if the CATE function is parametrically linear and the response functions in treatment and control are Lipschitz continuous, the X-learner can still achieve the parametric rate under regularity conditions. We then introduce versions of the X-learner that use RF and BART as base learners. In our extensive simulation studies, the X-learner performs favorably, although none of the meta-learners is uniformly the best. We also analyze two real data applications and provide a software package that implements our methods.
This abstract is also to be found under the following link: http://stat.ethz.ch/events/research_seminar
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ETH Zürich
Letizia Maurer
Administration
Seminar für Statistik
HG G 10.3
Rämistrasse 101
8092 Zürich
Telefon +41 44 632 34 38
letizia.maurer at stat.math.ethz.ch<mailto:letizia.maurer at stat.math.ethz.ch>
sekretariat at stat.math.ethz.ch
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