Deep vs. Diverse Architectures for Classification Problems

08/21/2017
by   Colleen M. Farrelly, et al.
0

This study compares various superlearner and deep learning architectures (machine-learning-based and neural-network-based) for classification problems across several simulated and industrial datasets to assess performance and computational efficiency, as both methods have nice theoretical convergence properties. Superlearner formulations outperform other methods at small to moderate sample sizes (500-2500) on nonlinear and mixed linear/nonlinear predictor relationship datasets, while deep neural networks perform well on linear predictor relationship datasets of all sizes. This suggests faster convergence of the superlearner compared to deep neural network architectures on many messy classification problems for real-world data. Superlearners also yield interpretable models, allowing users to examine important signals in the data; in addition, they offer flexible formulation, where users can retain good performance with low-computational-cost base algorithms. K-nearest-neighbor (KNN) regression demonstrates improvements using the superlearner framework, as well; KNN superlearners consistently outperform deep architectures and KNN regression, suggesting that superlearners may be better able to capture local and global geometric features through utilizing a variety of algorithms to probe the data space.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/15/2023

Unveiling Invariances via Neural Network Pruning

Invariance describes transformations that do not alter data's underlying...
research
03/06/2018

Deep Super Learner: A Deep Ensemble for Classification Problems

Deep learning has become very popular for tasks such as predictive model...
research
04/06/2021

Point classification with Runge-Kutta networks and feature space augmentation

In this paper we combine an approach based on Runge-Kutta Nets considere...
research
07/03/2017

Automated Problem Identification: Regression vs Classification via Evolutionary Deep Networks

Regression or classification? This is perhaps the most basic question fa...
research
04/24/2019

Horseshoe Regularization for Machine Learning in Complex and Deep Models

Since the advent of the horseshoe priors for regularization, global-loca...
research
11/03/2019

Generalized Learning with Rejection for Classification and Regression Problems

Learning with rejection (LWR) allows development of machine learning sys...

Please sign up or login with your details

Forgot password? Click here to reset