Meet MASKS: A novel Multi-Classifier's verification approach
In this study, a new ensemble approach for classifiers is introduced. A verification method for better error elimination is developed through the integration of multiple classifiers. A multi-agent system comprised of multiple classifiers is designed to verify the satisfaction of the safety property....
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creator | Dehkordi, Amirhoshang Hoseinpour Alizadeh, Majid Movaghar, Ali |
description | In this study, a new ensemble approach for classifiers is introduced. A
verification method for better error elimination is developed through the
integration of multiple classifiers. A multi-agent system comprised of multiple
classifiers is designed to verify the satisfaction of the safety property. In
order to examine the reasoning concerning the aggregation of the distributed
knowledge, a logical model has been proposed. To verify predefined properties,
a Multi-Agent Systems' Knowledge-Sharing algorithm (MASKS) has been formulated
and developed. As a rigorous evaluation, we applied this model to the
Fashion-MNIST, MNIST, and Fruit-360 datasets, where it reduced the error rate
to approximately one-tenth of the individual classifiers. |
doi_str_mv | 10.48550/arxiv.2007.10090 |
format | Article |
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verification method for better error elimination is developed through the
integration of multiple classifiers. A multi-agent system comprised of multiple
classifiers is designed to verify the satisfaction of the safety property. In
order to examine the reasoning concerning the aggregation of the distributed
knowledge, a logical model has been proposed. To verify predefined properties,
a Multi-Agent Systems' Knowledge-Sharing algorithm (MASKS) has been formulated
and developed. As a rigorous evaluation, we applied this model to the
Fashion-MNIST, MNIST, and Fruit-360 datasets, where it reduced the error rate
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verification method for better error elimination is developed through the
integration of multiple classifiers. A multi-agent system comprised of multiple
classifiers is designed to verify the satisfaction of the safety property. In
order to examine the reasoning concerning the aggregation of the distributed
knowledge, a logical model has been proposed. To verify predefined properties,
a Multi-Agent Systems' Knowledge-Sharing algorithm (MASKS) has been formulated
and developed. As a rigorous evaluation, we applied this model to the
Fashion-MNIST, MNIST, and Fruit-360 datasets, where it reduced the error rate
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verification method for better error elimination is developed through the
integration of multiple classifiers. A multi-agent system comprised of multiple
classifiers is designed to verify the satisfaction of the safety property. In
order to examine the reasoning concerning the aggregation of the distributed
knowledge, a logical model has been proposed. To verify predefined properties,
a Multi-Agent Systems' Knowledge-Sharing algorithm (MASKS) has been formulated
and developed. As a rigorous evaluation, we applied this model to the
Fashion-MNIST, MNIST, and Fruit-360 datasets, where it reduced the error rate
to approximately one-tenth of the individual classifiers.</abstract><doi>10.48550/arxiv.2007.10090</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Artificial Intelligence Computer Science - Logic in Computer Science |
title | Meet MASKS: A novel Multi-Classifier's verification approach |
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