Familywise Error Rate Control by Interactive Unmasking

02/20/2020
by   Boyan Duan, et al.
0

We propose a method for multiple hypothesis testing with familywise error rate (FWER) control, called the i-FWER test. Most testing methods are predefined algorithms that do not allow modifications after observing the data. However, in practice, analysts tend to choose a promising algorithm after observing the data; unfortunately, this violates the validity of the conclusion. The i-FWER test allows much flexibility: a human (or a computer program acting on the human's behalf) may adaptively guide the algorithm in a data-dependent manner. We prove that our test controls FWER if the analysts adhere to a particular protocol of "masking" and "unmasking". We demonstrate via numerical experiments the power of our test under structured non-nulls, and then explore new forms of masking.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/24/2022

Online multiple hypothesis testing for reproducible research

Modern data analysis frequently involves large-scale hypothesis testing,...
research
02/22/2021

Interactive identification of individuals with positive treatment effect while controlling false discoveries

Out of the participants in a randomized experiment with anticipated hete...
research
03/21/2022

Sequential algorithmic modification with test data reuse

After initial release of a machine learning algorithm, the model can be ...
research
01/06/2020

Closed testing with Globaltest with applications on metabolomics data

We derive a shortcut for closed testing with Globaltest, which is powerf...
research
12/28/2019

Approval policies for modifications to Machine Learning-Based Software as a Medical Device: A study of bio-creep

Successful deployment of machine learning algorithms in healthcare requi...
research
08/10/2021

Why multiple hypothesis test corrections provide poor control of false positives in the real world

Most scientific disciplines use significance testing to draw conclusions...
research
10/26/2020

Dynamic Algorithms for Online Multiple Testing

We demonstrate new algorithms for online multiple testing that provably ...

Please sign up or login with your details

Forgot password? Click here to reset