Asynchronously Trained Distributed Topographic Maps

01/20/2023
by   Abbas Siddiqui, et al.
0

Topographic feature maps are low dimensional representations of data, that preserve spatial dependencies. Current methods of training such maps (e.g. self organizing maps - SOM, generative topographic maps) require centralized control and synchronous execution, which restricts scalability. We present an algorithm that uses N autonomous units to generate a feature map by distributed asynchronous training. Unit autonomy is achieved by sparse interaction in time & space through the combination of a distributed heuristic search, and a cascade-driven weight updating scheme governed by two rules: a unit i) adapts when it receives either a sample, or the weight vector of a neighbor, and ii) broadcasts its weight vector to its neighbors after adapting for a predefined number of times. Thus, a vector update can trigger an avalanche of adaptation. We map avalanching to a statistical mechanics model, which allows us to parametrize the statistical properties of cascading. Using MNIST, we empirically investigate the effect of the heuristic search accuracy and the cascade parameters on map quality. We also provide empirical evidence that algorithm complexity scales at most linearly with system size N. The proposed approach is found to perform comparably with similar methods in classification tasks across multiple datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/11/2019

Global Collaboration through Local Interaction in Competitive Learning

Feature maps, that preserve the global topology of arbitrary datasets, c...
research
07/10/2018

On the choice of weight functions for linear representations of persistence diagrams

Persistence diagrams are efficient descriptors of the topology of a poin...
research
01/26/2021

Self Sparse Generative Adversarial Networks

Generative Adversarial Networks (GANs) are an unsupervised generative mo...
research
03/23/2018

Pattern Analysis with Layered Self-Organizing Maps

This paper defines a new learning architecture, Layered Self-Organizing ...
research
08/22/2021

Guiding Query Position and Performing Similar Attention for Transformer-Based Detection Heads

After DETR was proposed, this novel transformer-based detection paradigm...
research
05/07/2013

Somoclu: An Efficient Parallel Library for Self-Organizing Maps

Somoclu is a massively parallel tool for training self-organizing maps o...
research
08/12/2023

Seed Feature Maps-based CNN Models for LEO Satellite Remote Sensing Services

Deploying high-performance convolutional neural network (CNN) models on ...

Please sign up or login with your details

Forgot password? Click here to reset