Evolution of novel activation functions in neural network training for astronomy data: habitability classification of exoplanets

Quantification of habitability is a complex task. Previous attempts at measuring habitability are well documented. Classification of exoplanets, on the other hand, is a different approach and depends on quality of training data available in habitable exoplanet catalogs. Classification is the task of...

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Veröffentlicht in:The European physical journal. ST, Special topics Special topics, 2020, Vol.229 (16), p.2629-2738
Hauptverfasser: Saha, Snehanshu, Nagaraj, Nithin, Mathur, Archana, Yedida, Rahul, H R, Sneha
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container_issue 16
container_start_page 2629
container_title The European physical journal. ST, Special topics
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creator Saha, Snehanshu
Nagaraj, Nithin
Mathur, Archana
Yedida, Rahul
H R, Sneha
description Quantification of habitability is a complex task. Previous attempts at measuring habitability are well documented. Classification of exoplanets, on the other hand, is a different approach and depends on quality of training data available in habitable exoplanet catalogs. Classification is the task of predicting labels of newly discovered planets based on available class labels in the catalog. We present analytical exploration of novel activation functions as consequence of integration of several ideas leading to implementation and subsequent use in habitability classification of exoplanets. Neural networks, although a powerful engine in supervised methods, often require expensive tuning efforts for optimized performance. Habitability classes are hard to discriminate, especially when attributes used as hard markers of separation are removed from the data set. The solution is approached from the point of investigating analytical properties of the proposed activation functions. The theory of ordinary differential equations and fixed point are exploited to justify the “lack of tuning efforts” to achieve optimal performance compared to traditional activation functions. Additionally, the relationship between the proposed activation functions and the more popular ones is established through extensive analytical and empirical evidence. Finally, the activation functions have been implemented in plain vanilla feed-forward neural network to classify exoplanets. The mathematical exercise supplements the grand idea of classifying exoplanets, computing habitability scores/indices and automatic grouping of the exoplanets converging at some level.
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subjects Activation analysis
Astronomy
Atomic
Classical and Continuum Physics
Classification
Condensed Matter Physics
Differential equations
Empirical analysis
Evolution of Novel Activation Functions in Neural Network Training for Astronomy Data: Habitability Classification of Exoplanets
Extrasolar planets
Fixed points (mathematics)
Habitability
Labels
Materials Science
Mathematical analysis
Measurement Science and Instrumentation
Molecular
Neural networks
Optical and Plasma Physics
Ordinary differential equations
Physics
Physics and Astronomy
Planet detection
Review
Training
Tuning
title Evolution of novel activation functions in neural network training for astronomy data: habitability classification of exoplanets
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