Online Sequential Extreme Learning Machines: Features Combined From
Hundreds of Midlayers
- URL: http://arxiv.org/abs/2006.06893v1
- Date: Fri, 12 Jun 2020 00:50:04 GMT
- Title: Online Sequential Extreme Learning Machines: Features Combined From
Hundreds of Midlayers
- Authors: Chandra Swarathesh Addanki
- Abstract summary: In this paper, we develop an algorithm called hierarchal online sequential learning algorithm (H-OS-ELM)
The algorithm can learn chunk by chunk with fixed or varying block size.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we develop an algorithm called hierarchal online sequential
learning algorithm (H-OS-ELM) for single feed feedforward network with features
combined from hundreds of midlayers, the algorithm can learn chunk by chunk
with fixed or varying block size, we believe that the diverse selectivity of
neurons in top layers which consists of encoded distributed information
produced by the other neurons offers better computational advantage over
inference accuracy. Thus this paper proposes a Hierarchical model framework
combined with Online-Sequential learning algorithm, Firstly the model consists
of subspace feature extractor which consists of subnetwork neuron, using the
sub-features which is result of the feature extractor in first layer of the
hierarchy we get rid of irrelevant factors which are of no use for the learning
and iterate this process so that to recast the the subfeatures into the
hierarchical model to be processed into more acceptable cognition. Secondly by
using OS-Elm we are using non-iterative style for learning we are implementing
a network which is wider and shallow which plays a important role in
generalizing the overall performance which in turn boosts up the learning speed
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