On the Talent vs. Luck-Based Evaluation of the Classification Process
Performance measures of classification algorithms play a crucial role in the evaluation of the learned models. Nevertheless, the vast majority of such measures are based on the same notion of classification performance, i.e., the ability of the classifier to recognize data samples from predefined tr...
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doaj-5431f989ab694125a722c55716d218482021-03-29T22:09:55ZengIEEEIEEE Access2169-35362019-01-017375653757410.1109/ACCESS.2019.29050498667462On the Talent vs. Luck-Based Evaluation of the Classification ProcessPanagiotis C. Petrantonakis0https://orcid.org/0000-0001-9631-4327Ioannis Kompatsiaris1Multimedia Knowledge and Social Media Analytics Laboratory, Information Technologies Institute/Centre for Research and Technology Hellas, Thessaloniki, GreeceMultimedia Knowledge and Social Media Analytics Laboratory, Information Technologies Institute/Centre for Research and Technology Hellas, Thessaloniki, GreecePerformance measures of classification algorithms play a crucial role in the evaluation of the learned models. Nevertheless, the vast majority of such measures are based on the same notion of classification performance, i.e., the ability of the classifier to recognize data samples from predefined training and testing sets. In this paper, we aim at introducing a new framework of evaluation of the classification process based not only on the aforementioned ability (“Talent” of the classifier) but also on randomness (“Luck”) that would affect its performance. Based on the studies with socio-economic contexts where “Luck” has been shown to play a crucial role in success and failure, we define a new measure to quantify the Talent versus Luck (TvL) tradeoff within a classification framework and prove its relationship with the generalization error. The proposed measure is validated via convolutional neural networks both with and without dropout layer, in order to highlight the relation of the measure to the generalization aspect, using the MNIST dataset. The experimental results confirm the fundamental role of TvL tradeoff in the evaluation of classifiers and in selecting the most “successful” ones suggesting the TvL measure as a new, useful tool in the arsenal of evaluation of the classification process.https://ieeexplore.ieee.org/document/8667462/Classification algorithmsclassifier evaluationconvolutional neural networksgeneralization error |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Panagiotis C. Petrantonakis Ioannis Kompatsiaris |
spellingShingle |
Panagiotis C. Petrantonakis Ioannis Kompatsiaris On the Talent vs. Luck-Based Evaluation of the Classification Process IEEE Access Classification algorithms classifier evaluation convolutional neural networks generalization error |
author_facet |
Panagiotis C. Petrantonakis Ioannis Kompatsiaris |
author_sort |
Panagiotis C. Petrantonakis |
title |
On the Talent vs. Luck-Based Evaluation of the Classification Process |
title_short |
On the Talent vs. Luck-Based Evaluation of the Classification Process |
title_full |
On the Talent vs. Luck-Based Evaluation of the Classification Process |
title_fullStr |
On the Talent vs. Luck-Based Evaluation of the Classification Process |
title_full_unstemmed |
On the Talent vs. Luck-Based Evaluation of the Classification Process |
title_sort |
on the talent vs. luck-based evaluation of the classification process |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
Performance measures of classification algorithms play a crucial role in the evaluation of the learned models. Nevertheless, the vast majority of such measures are based on the same notion of classification performance, i.e., the ability of the classifier to recognize data samples from predefined training and testing sets. In this paper, we aim at introducing a new framework of evaluation of the classification process based not only on the aforementioned ability (“Talent” of the classifier) but also on randomness (“Luck”) that would affect its performance. Based on the studies with socio-economic contexts where “Luck” has been shown to play a crucial role in success and failure, we define a new measure to quantify the Talent versus Luck (TvL) tradeoff within a classification framework and prove its relationship with the generalization error. The proposed measure is validated via convolutional neural networks both with and without dropout layer, in order to highlight the relation of the measure to the generalization aspect, using the MNIST dataset. The experimental results confirm the fundamental role of TvL tradeoff in the evaluation of classifiers and in selecting the most “successful” ones suggesting the TvL measure as a new, useful tool in the arsenal of evaluation of the classification process. |
topic |
Classification algorithms classifier evaluation convolutional neural networks generalization error |
url |
https://ieeexplore.ieee.org/document/8667462/ |
work_keys_str_mv |
AT panagiotiscpetrantonakis onthetalentvsluckbasedevaluationoftheclassificationprocess AT ioanniskompatsiaris onthetalentvsluckbasedevaluationoftheclassificationprocess |
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