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Progressive differentiable network architecture search method and system based on Bayesian optimization

A technology of differential network and search method, which is applied in the direction of neural architecture, neural learning method, biological neural network model, etc., and can solve problems such as influence effect, low network accuracy, and inaccuracy

Pending Publication Date: 2021-08-31
SHENZHEN UNIV
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Problems solved by technology

But this greatly affects the effect of
(2) When the method starts to search, the operation it takes is random, that is, affected by random initialization, the search results are not controllable and difficult to reproduce
The main disadvantages of progressively differentiable network architecture search (PDARTS) are: (1) Although the problem of resource occupation is solved to a certain extent, the memory and calculation loss required by it are still very large
Moreover, on a large data set, many non-parameter connections (skip-connect) will be caused. Although there are certain restrictions in the text, it is still not accurate enough, resulting in low accuracy and time-consuming of the searched network.

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  • Progressive differentiable network architecture search method and system based on Bayesian optimization
  • Progressive differentiable network architecture search method and system based on Bayesian optimization
  • Progressive differentiable network architecture search method and system based on Bayesian optimization

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[0039] In order to make the object, technical solution and advantages of the present invention more clear and definite, the present invention will be further described in detail below with reference to the accompanying drawings and examples. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention.

[0040] Neural Architecture Search (NAS) is one of the hot spots in the field of automatic machine learning (Auto-ML). By designing a cost-effective search method, it can automatically obtain a neural network with strong generalization ability and friendly hardware requirements, and a large number of liberated Researcher creativity. In the classic NAS method, it mainly includes the following three aspects: search space, search strategy, evaluation and evaluation, specifically as figure 1 shown in . NAS is a fully delayed reward task in a deterministic environment. Specifically, the sea...

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Abstract

The invention discloses a progressive differentiable network architecture search method and system based on Bayesian optimization. The method is applied to the search of a neural network structure of automatic machine learning, and is characterized by comprising the following steps of selecting a part of operations by adopting Bayesian optimization when operation selection between nodes is carried out based on PDARTS; sampling channels connected between the nodes through Bayesian optimization, and performing operation search; and after the Bayesian optimization of the channel connected with each node is finished, introducing an attention mechanism to carry out weight superposition, and realizing the search of the network architecture. According to the present invention, the occupied storage resources and calculation consumption during network architecture search can be greatly reduced, and the search time is greatly shortened.

Description

technical field [0001] The invention relates to the technical field of automatic machine learning, in particular to a progressive differentiable network architecture search method and system based on Bayesian optimization. Background technique [0002] Neural Architecture Search (NAS) is one of the hot spots in the field of automatic machine learning (Auto-ML). By designing a cost-effective search method, it can automatically obtain a neural network with strong generalization ability and friendly hardware requirements, and a large number of liberated Researcher creativity. In the classic NAS method (that is, the network structure search method), it mainly includes the following three aspects: search space, search strategy, and evaluation evaluation. Differentiable Architecture Search (DARTS) and Progressively Differentiable Architecture Search (PDARTS) are generally used in the prior art for network structure search. [0003] However, there are two main disadvantages of di...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06N3/08G06N3/04
CPCG06N3/08G06N3/047G06N3/04
Inventor 王娜邓嘉鹏
Owner SHENZHEN UNIV
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