Optimal Testing in the Experiment-rich Regime

05/30/2018
by   Sven Schmit, et al.
0

Motivated by the widespread adoption of large-scale A/B testing in industry, we propose a new experimentation framework for the setting where potential experiments are abundant (i.e., many hypotheses are available to test), and observations are costly; we refer to this as the experiment-rich regime. Such scenarios require the experimenter to internalize the opportunity cost of assigning a sample to a particular experiment. We fully characterize the optimal policy and give an algorithm to compute it. Furthermore, we develop a simple heuristic that also provides intuition for the optimal policy. We use simulations based on real data to compare both the optimal algorithm and the heuristic to other natural alternative experimental design frameworks. In particular, we discuss the paradox of power: high-powered classical tests can lead to highly inefficient sampling in the experiment-rich regime.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/29/2021

Doubly Robust Interval Estimation for Optimal Policy Evaluation in Online Learning

Evaluating the performance of an ongoing policy plays a vital role in ma...
research
01/25/2018

Individual testing is optimal for nonadaptive group testing in the linear regime

We consider nonadaptive probabilistic group testing in the linear regime...
research
02/25/2019

Optimal Online Transmission Policy for Energy-Constrained Wireless-Powered Communication Networks

This work considers the design of online transmission policy in a wirele...
research
07/15/2023

Evaluation of Deep Reinforcement Learning Algorithms for Portfolio Optimisation

We evaluate benchmark deep reinforcement learning (DRL) algorithms on th...
research
07/09/2022

Optimal policies for Bayesian olfactory search in turbulent flows

In many practical scenarios, a flying insect must search for the source ...
research
04/02/2023

Experimentation Platforms Meet Reinforcement Learning: Bayesian Sequential Decision-Making for Continuous Monitoring

With the growing needs of online A/B testing to support the innovation i...
research
11/03/2021

Implicit Deep Adaptive Design: Policy-Based Experimental Design without Likelihoods

We introduce implicit Deep Adaptive Design (iDAD), a new method for perf...

Please sign up or login with your details

Forgot password? Click here to reset