Training Data Subset Selection for Regression with Controlled Generalization Error

06/23/2021
by   Durga Sivasubramanian, et al.
0

Data subset selection from a large number of training instances has been a successful approach toward efficient and cost-effective machine learning. However, models trained on a smaller subset may show poor generalization ability. In this paper, our goal is to design an algorithm for selecting a subset of the training data, so that the model can be trained quickly, without significantly sacrificing on accuracy. More specifically, we focus on data subset selection for L2 regularized regression problems and provide a novel problem formulation which seeks to minimize the training loss with respect to both the trainable parameters and the subset of training data, subject to error bounds on the validation set. We tackle this problem using several technical innovations. First, we represent this problem with simplified constraints using the dual of the original training problem and show that the objective of this new representation is a monotone and alpha-submodular function, for a wide variety of modeling choices. Such properties lead us to develop SELCON, an efficient majorization-minimization algorithm for data subset selection, that admits an approximation guarantee even when the training provides an imperfect estimate of the trained model. Finally, our experiments on several datasets show that SELCON trades off accuracy and efficiency more effectively than the current state-of-the-art.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/28/2018

Learning From Less Data: Diversified Subset Selection and Active Learning in Image Classification Tasks

Supervised machine learning based state-of-the-art computer vision techn...
research
04/28/2021

Finding High-Value Training Data Subset through Differentiable Convex Programming

Finding valuable training data points for deep neural networks has been ...
research
05/22/2023

Relabel Minimal Training Subset to Flip a Prediction

Yang et al. (2023) discovered that removing a mere 1 often lead to the f...
research
03/14/2018

Algebraic Machine Learning

Machine learning algorithms use error function minimization to fit a lar...
research
12/19/2020

GLISTER: Generalization based Data Subset Selection for Efficient and Robust Learning

Large scale machine learning and deep models are extremely data-hungry. ...
research
04/30/2021

Submodular Mutual Information for Targeted Data Subset Selection

With the rapid growth of data, it is becoming increasingly difficult to ...
research
02/13/2019

Differential Description Length for Hyperparameter Selection in Machine Learning

This paper introduces a new method for model selection and more generall...

Please sign up or login with your details

Forgot password? Click here to reset