NASirt: AutoML based learning with instance-level complexity information
- URL: http://arxiv.org/abs/2008.11846v2
- Date: Thu, 3 Dec 2020 18:17:52 GMT
- Title: NASirt: AutoML based learning with instance-level complexity information
- Authors: Habib Asseiss Neto and Ronnie C. O. Alves and Sergio V. A. Campos
- Abstract summary: We present NASirt, an AutoML methodology that finds high accuracy CNN architectures for spectral datasets.
Our method performs, in most cases, better than the benchmarks, achieving average accuracy as high as 97.40%.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Designing adequate and precise neural architectures is a challenging task,
often done by highly specialized personnel. AutoML is a machine learning field
that aims to generate good performing models in an automated way. Spectral data
such as those obtained from biological analysis have generally a lot of
important information, and these data are specifically well suited to
Convolutional Neural Networks (CNN) due to their image-like shape. In this work
we present NASirt, an AutoML methodology based on Neural Architecture Search
(NAS) that finds high accuracy CNN architectures for spectral datasets. The
proposed methodology relies on the Item Response Theory (IRT) for obtaining
characteristics from an instance level, such as discrimination and difficulty,
and it is able to define a rank of top performing submodels. Several
experiments are performed in order to demonstrate the methodology's performance
with different spectral datasets. Accuracy results are compared to other
benchmarks methods, such as a high performing, manually crafted CNN and the
Auto-Keras AutoML tool. The results show that our method performs, in most
cases, better than the benchmarks, achieving average accuracy as high as
97.40%.
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