Model Linkage Selection for Cooperative Learning

05/15/2020
by   Jiaying Zhou, et al.
0

Rapid developments in data collecting devices and computation platforms produce an emerging number of learners and data modalities in many scientific domains. We consider the setting in which each learner holds a pair of parametric statistical model and a specific data source, with the goal of integrating information across a set of learners to enhance the prediction accuracy of a specific learner. One natural way to integrate information is to build a joint model across a set of learners that shares common parameters of interest. However, the parameter sharing patterns across a set of learners are not known a priori. Misspecifying the parameter sharing patterns and the parametric statistical model for each learner yields a biased estimator and degrades the prediction accuracy of the joint model. In this paper, we propose a novel framework for integrating information across a set of learners that is robust against model misspecification and misspecified parameter sharing patterns. The main crux is to sequentially incorporates additional learners that can enhance the prediction accuracy of an existing joint model based on a user-specified parameter sharing patterns across a set of learners, starting from a model with one learner. Theoretically, we show that the proposed method can data-adaptively select the correct parameter sharing patterns based on a user-specified parameter sharing patterns, and thus enhances the prediction accuracy of a learner. Extensive numerical studies are performed to evaluate the performance of the proposed method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/21/2022

Heterogeneous Ensemble Learning for Enhanced Crash Forecasts – A Frequentest and Machine Learning based Stacking Framework

A variety of statistical and machine learning methods are used to model ...
research
07/14/2021

Mapping Learning Algorithms on Data, a useful step for optimizing performances and their comparison

In the paper, we propose a novel methodology to map learning algorithms ...
research
08/18/2020

Selecting Data Adaptive Learner from Multiple Deep Learners using Bayesian Networks

A method to predict time-series using multiple deep learners and a Bayes...
research
05/25/2023

Dynamic Inter-treatment Information Sharing for Heterogeneous Treatment Effects Estimation

Existing heterogeneous treatment effects learners, also known as conditi...
research
09/20/2009

Random scattering of bits by prediction

We investigate a population of binary mistake sequences that result from...
research
05/29/2020

Meta Clustering for Collaborative Learning

An emerging number of learning scenarios involve a set of learners/analy...
research
08/18/2019

SPOCC: Scalable POssibilistic Classifier Combination -- toward robust aggregation of classifiers

We investigate a problem in which each member of a group of learners is ...

Please sign up or login with your details

Forgot password? Click here to reset