Generalization in Neural Networks: A Broad Survey

09/04/2022
by   Chris Rohlfs, et al.
0

This paper reviews concepts, modeling approaches, and recent findings along a spectrum of different levels of abstraction of neural network models including generalization across (1) Samples, (2) Distributions, (3) Domains, (4) Tasks, (5) Modalities, and (6) Scopes. Results on (1) sample generalization show that, in the case of ImageNet, nearly all the recent improvements reduced training error while overfitting stayed flat; with nearly all the training error eliminated, future progress will require a focus on reducing overfitting. Perspectives from statistics highlight how (2) distribution generalization can be viewed alternately as a change in sample weights or a change in the input-output relationship. Transfer learning approaches to (3) domain generalization are summarized, as are recent advances and the wealth of domain adaptation benchmark datasets available. Recent breakthroughs surveyed in (4) task generalization include few-shot meta-learning approaches and the BERT NLP engine, and recent (5) modality generalization studies are discussed that integrate image and text data and that apply a biologically-inspired network across olfactory, visual, and auditory modalities. Recent (6) scope generalization results are reviewed that embed knowledge graphs into deep NLP approaches. Additionally, concepts from neuroscience are discussed on the modular architecture of brains and the steps by which dopamine-driven conditioning leads to abstract thinking.

READ FULL TEXT

page 11

page 22

page 28

research
03/13/2023

Meta-learning approaches for few-shot learning: A survey of recent advances

Despite its astounding success in learning deeper multi-dimensional data...
research
08/05/2023

Meta-learning in healthcare: A survey

As a subset of machine learning, meta-learning, or learning to learn, ai...
research
07/07/2020

Meta-Learning with Network Pruning

Meta-learning is a powerful paradigm for few-shot learning. Although wit...
research
07/17/2019

Low-Shot Classification: A Comparison of Classical and Deep Transfer Machine Learning Approaches

Despite the recent success of deep transfer learning approaches in NLP, ...
research
03/02/2017

Meta Networks

Neural networks have been successfully applied in applications with a la...
research
07/25/2022

Self-Distilled Vision Transformer for Domain Generalization

In recent past, several domain generalization (DG) methods have been pro...
research
04/18/2023

Parameterized Neural Networks for Finance

We discuss and analyze a neural network architecture, that enables learn...

Please sign up or login with your details

Forgot password? Click here to reset