Batch Mode Active Learning for Individual Treatment Effect Estimation

Author(s):  
Zoltan Puha ◽  
Maurits Kaptein ◽  
Aurelie Lemmens
2021 ◽  
pp. 103940
Author(s):  
Jiebin Chu ◽  
Zhoujian Sun ◽  
Wei Dong ◽  
Jinlong Shi ◽  
Zhengxing Huang

Author(s):  
Maggie Makar ◽  
Adith Swaminathan ◽  
Emre Kıcıman

The potential for using machine learning algorithms as a tool for suggesting optimal interventions has fueled significant interest in developing methods for estimating heterogeneous or individual treatment effects (ITEs) from observational data. While several methods for estimating ITEs have been recently suggested, these methods assume no constraints on the availability of data at the time of deployment or test time. This assumption is unrealistic in settings where data acquisition is a significant part of the analysis pipeline, meaning data about a test case has to be collected in order to predict the ITE. In this work, we present Data Efficient Individual Treatment Effect Estimation (DEITEE), a method which exploits the idea that adjusting for confounding, and hence collecting information about confounders, is not necessary at test time. DEITEE allows the development of rich models that exploit all variables at train time but identifies a minimal set of variables required to estimate the ITE at test time. Using 77 semi-synthetic datasets with varying data generating processes, we show that DEITEE achieves significant reductions in the number of variables required at test time with little to no loss in accuracy. Using real data, we demonstrate the utility of our approach in helping soon-to-be mothers make planning and lifestyle decisions that will impact newborn health.


Circulation ◽  
2019 ◽  
Vol 139 (25) ◽  
pp. 2846-2856 ◽  
Author(s):  
Manon C. Stam-Slob ◽  
Stuart J. Connolly ◽  
Yolanda van der Graaf ◽  
Joep van der Leeuw ◽  
Jannick A.N. Dorresteijn ◽  
...  

Author(s):  
Zhao Wang ◽  
Aron Culotta

Studies across many disciplines have shown that lexical choice can affect audience perception. For example, how users describe themselves in a social media profile can affect their perceived socio-economic status. However, we lack general methods for estimating the causal effect of lexical choice on the perception of a specific sentence. While randomized controlled trials may provide good estimates, they do not scale to the potentially millions of comparisons necessary to consider all lexical choices. Instead, in this paper, we first offer two classes of methods to estimate the effect on perception of changing one word to another in a given sentence. The first class of algorithms builds upon quasi-experimental designs to estimate individual treatment effects from observational data. The second class treats treatment effect estimation as a classification problem. We conduct experiments with three data sources (Yelp, Twitter, and Airbnb), finding that the algorithmic estimates align well with those produced by randomized-control trials. Additionally, we find that it is possible to transfer treatment effect classifiers across domains and still maintain high accuracy.


2021 ◽  
Vol 161 ◽  
pp. S677-S678
Author(s):  
W. van Amsterdam ◽  
J. Verhoeff ◽  
N. Harlianto ◽  
G. Bartholomeus ◽  
A. Manas Puli ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document