Edible and Poisonous Mushrooms Classification by Machine Learning Algorithms. Tutuncu, K., Cinar, I., Kursun, R., & Koklu, M. In 2022 11th Mediterranean Conference on Embedded Computing, MECO 2022, 2022. Institute of Electrical and Electronics Engineers Inc.. Paper doi abstract bibtex Of the millions of mushroom species growing all around the world, one type is edible, while the other is poisonous. It is not easy to distinguish edible and poisonous mushrooms from each other and it is a condition that requires expertise. The classification of poisonous and edible mushrooms is therefore important. Machine learning algorithms are an alternative method for classifying poisonous and edible mushrooms using morphological or physical features of fungi. The dataset used in this study is the Mushroom dataset available in the UC Irvine Machine Learning Repository. Based on 22 features in the Mushroom dataset and four different machine learning algorithms, models have been created for the classification of edible and poisonous fungi. The classification success rates of these models were obtained from Naive Bayes, Decision Tree, Support Vector Machine and AdaBoost algorithms with 90.99%, 98.82%, 99.98% and 100%, respectively. When these results were examined, taking into account the physical appearance features of the mushrooms, it was determined whether the mushrooms were edible and poisonous by 100% with the AdaBoost model.
@inproceedings{
title = {Edible and Poisonous Mushrooms Classification by Machine Learning Algorithms},
type = {inproceedings},
year = {2022},
keywords = {UCI machine learning repository,edible mushrooms,machine learning,mushroom dataset,poisonous mushrooms},
publisher = {Institute of Electrical and Electronics Engineers Inc.},
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created = {2022-09-29T07:47:54.960Z},
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abstract = {Of the millions of mushroom species growing all around the world, one type is edible, while the other is poisonous. It is not easy to distinguish edible and poisonous mushrooms from each other and it is a condition that requires expertise. The classification of poisonous and edible mushrooms is therefore important. Machine learning algorithms are an alternative method for classifying poisonous and edible mushrooms using morphological or physical features of fungi. The dataset used in this study is the Mushroom dataset available in the UC Irvine Machine Learning Repository. Based on 22 features in the Mushroom dataset and four different machine learning algorithms, models have been created for the classification of edible and poisonous fungi. The classification success rates of these models were obtained from Naive Bayes, Decision Tree, Support Vector Machine and AdaBoost algorithms with 90.99%, 98.82%, 99.98% and 100%, respectively. When these results were examined, taking into account the physical appearance features of the mushrooms, it was determined whether the mushrooms were edible and poisonous by 100% with the AdaBoost model.},
bibtype = {inproceedings},
author = {Tutuncu, Kemal and Cinar, Ilkay and Kursun, Ramazan and Koklu, Murat},
doi = {10.1109/MECO55406.2022.9797212},
booktitle = {2022 11th Mediterranean Conference on Embedded Computing, MECO 2022}
}
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