Evolution in Groups: A deeper look at synaptic cluster driven evolution of deep neural networks

04/07/2017
by   Mohammad Javad Shafiee, et al.
0

A promising paradigm for achieving highly efficient deep neural networks is the idea of evolutionary deep intelligence, which mimics biological evolution processes to progressively synthesize more efficient networks. A crucial design factor in evolutionary deep intelligence is the genetic encoding scheme used to simulate heredity and determine the architectures of offspring networks. In this study, we take a deeper look at the notion of synaptic cluster-driven evolution of deep neural networks which guides the evolution process towards the formation of a highly sparse set of synaptic clusters in offspring networks. Utilizing a synaptic cluster-driven genetic encoding, the probabilistic encoding of synaptic traits considers not only individual synaptic properties but also inter-synaptic relationships within a deep neural network. This process results in highly sparse offspring networks which are particularly tailored for parallel computational devices such as GPUs and deep neural network accelerator chips. Comprehensive experimental results using four well-known deep neural network architectures (LeNet-5, AlexNet, ResNet-56, and DetectNet) on two different tasks (object categorization and object detection) demonstrate the efficiency of the proposed method. Cluster-driven genetic encoding scheme synthesizes networks that can achieve state-of-the-art performance with significantly smaller number of synapses than that of the original ancestor network. (∼125-fold decrease in synapses for MNIST). Furthermore, the improved cluster efficiency in the generated offspring networks (∼9.71-fold decrease in clusters for MNIST and a ∼8.16-fold decrease in clusters for KITTI) is particularly useful for accelerated performance on parallel computing hardware architectures such as those in GPUs and deep neural network accelerator chips.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2016

Evolutionary Synthesis of Deep Neural Networks via Synaptic Cluster-driven Genetic Encoding

There has been significant recent interest towards achieving highly effi...
research
06/14/2016

Deep Learning with Darwin: Evolutionary Synthesis of Deep Neural Networks

Taking inspiration from biological evolution, we explore the idea of "Ca...
research
07/01/2017

Exploring the Imposition of Synaptic Precision Restrictions For Evolutionary Synthesis of Deep Neural Networks

A key contributing factor to incredible success of deep neural networks ...
research
09/07/2017

The Mating Rituals of Deep Neural Networks: Learning Compact Feature Representations through Sexual Evolutionary Synthesis

Evolutionary deep intelligence was recently proposed as a method for ach...
research
07/01/2017

Synthesizing Deep Neural Network Architectures using Biological Synaptic Strength Distributions

In this work, we perform an exploratory study on synthesizing deep neura...
research
01/16/2018

StressedNets: Efficient Feature Representations via Stress-induced Evolutionary Synthesis of Deep Neural Networks

The computational complexity of leveraging deep neural networks for extr...
research
04/19/2018

Limited Evaluation Cooperative Co-evolutionary Differential Evolution for Large-scale Neuroevolution

Many real-world control and classification tasks involve a large number ...

Please sign up or login with your details

Forgot password? Click here to reset