Wisdom of the Ensemble: Improving Consistency of Deep Learning Models

11/13/2020
by   Lijing Wang, et al.
10

Deep learning classifiers are assisting humans in making decisions and hence the user's trust in these models is of paramount importance. Trust is often a function of constant behavior. From an AI model perspective it means given the same input the user would expect the same output, especially for correct outputs, or in other words consistently correct outputs. This paper studies a model behavior in the context of periodic retraining of deployed models where the outputs from successive generations of the models might not agree on the correct labels assigned to the same input. We formally define consistency and correct-consistency of a learning model. We prove that consistency and correct-consistency of an ensemble learner is not less than the average consistency and correct-consistency of individual learners and correct-consistency can be improved with a probability by combining learners with accuracy not less than the average accuracy of ensemble component learners. To validate the theory using three datasets and two state-of-the-art deep learning classifiers we also propose an efficient dynamic snapshot ensemble method and demonstrate its value.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/29/2019

Deep Neural Network Ensembles against Deception: Ensemble Diversity, Accuracy and Robustness

Ensemble learning is a methodology that integrates multiple DNN learners...
research
12/17/2020

Towards Understanding Ensemble, Knowledge Distillation and Self-Distillation in Deep Learning

We formally study how Ensemble of deep learning models can improve test ...
research
07/17/2018

Improving the "Correct Eventual Consistency" Tool

Preserving invariants while designing distributed applications under wea...
research
05/19/2018

On Deep Ensemble Learning from a Function Approximation Perspective

In this paper, we propose to provide a general ensemble learning framewo...
research
11/25/2019

Making Learners (More) Monotone

Learning performance can show non-monotonic behavior. That is, more data...
research
07/10/2021

Is a Single Model Enough? MuCoS: A Multi-Model Ensemble Learning for Semantic Code Search

Recently, deep learning methods have become mainstream in code search si...
research
11/03/2020

Decoupling entrainment from consistency using deep neural networks

Human interlocutors tend to engage in adaptive behavior known as entrain...

Please sign up or login with your details

Forgot password? Click here to reset