Bio-inspired Machine Learning: programmed death and replication

06/30/2022
by   Andrey Grabovsky, et al.
0

We analyze algorithmic and computational aspects of biological phenomena, such as replication and programmed death, in the context of machine learning. We use two different measures of neuron efficiency to develop machine learning algorithms for adding neurons to the system (i.e. replication algorithm) and removing neurons from the system (i.e. programmed death algorithm). We argue that the programmed death algorithm can be used for compression of neural networks and the replication algorithm can be used for improving performance of the already trained neural networks. We also show that a combined algorithm of programmed death and replication can improve the learning efficiency of arbitrary machine learning systems. The computational advantages of the bio-inspired algorithms are demonstrated by training feedforward neural networks on the MNIST dataset of handwritten images.

READ FULL TEXT
research
12/12/2016

Neurogenesis Deep Learning

Neural machine learning methods, such as deep neural networks (DNN), hav...
research
06/13/2018

Enabling End-To-End Machine Learning Replicability: A Case Study in Educational Data Mining

The use of machine learning techniques has expanded in education researc...
research
07/28/2017

Review of Machine Learning Algorithms in Differential Expression Analysis

In biological research machine learning algorithms are part of nearly ev...
research
10/30/2017

A Supervised STDP-based Training Algorithm for Living Neural Networks

Neural networks have shown great potential in many applications like spe...
research
06/25/2020

Replication-Robust Payoff-Allocation with Applications in Machine Learning Marketplaces

The ever-increasing take-up of machine learning techniques requires ever...
research
04/21/2014

Influence of the learning method in the performance of feedforward neural networks when the activity of neurons is modified

A method that allows us to give a different treatment to any neuron insi...
research
06/11/2021

Cross-replication Reliability – An Empirical Approach to Interpreting Inter-rater Reliability

We present a new approach to interpreting IRR that is empirical and cont...

Please sign up or login with your details

Forgot password? Click here to reset