Classifying Unordered Feature Sets with Convolutional Deep Averaging Networks

09/10/2017
by   Andrew Gardner, et al.
0

Unordered feature sets are a nonstandard data structure that traditional neural networks are incapable of addressing in a principled manner. Providing a concatenation of features in an arbitrary order may lead to the learning of spurious patterns or biases that do not actually exist. Another complication is introduced if the number of features varies between each set. We propose convolutional deep averaging networks (CDANs) for classifying and learning representations of datasets whose instances comprise variable-size, unordered feature sets. CDANs are efficient, permutation-invariant, and capable of accepting sets of arbitrary size. We emphasize the importance of nonlinear feature embeddings for obtaining effective CDAN classifiers and illustrate their advantages in experiments versus linear embeddings and alternative permutation-invariant and -equivariant architectures.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/10/2018

Learning Representations of Sets through Optimized Permutations

Representations of sets are challenging to learn because operations on s...
research
05/31/2018

Interpretable Set Functions

We propose learning flexible but interpretable functions that aggregate ...
research
03/14/2022

Permutation Invariant Representations with Applications to Graph Deep Learning

This paper presents primarily two Euclidean embeddings of the quotient s...
research
06/21/2023

Relationships between the Phase Retrieval Problem and Permutation Invariant Embeddings

This paper discusses the connection between the phase retrieval problem ...
research
11/14/2016

Deep Learning with Sets and Point Clouds

We introduce a simple permutation equivariant layer for deep learning wi...
research
06/23/2022

Set Norm and Equivariant Skip Connections: Putting the Deep in Deep Sets

Permutation invariant neural networks are a promising tool for making pr...
research
03/08/2022

DuMLP-Pin: A Dual-MLP-dot-product Permutation-invariant Network for Set Feature Extraction

Existing permutation-invariant methods can be divided into two categorie...

Please sign up or login with your details

Forgot password? Click here to reset