Machine Learning Methods to Classify Mushrooms for Edibility-A Review

  • Rakesh Kumar Y and Dr. V. Chandrasekhar
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Abstract

There are thousands of species of Mushrooms in the world; they are edible and non-edible being poisonous. It is difficult for non-expertise person to Identify poisonous and edible mushroom of all the species manually. So a computer aided system with software or algorithm is required to classify poisonous and nonpoisonous mushrooms. In this paper a literature review is presented on classification of poisonous and nonpoisonous mushrooms. Most of the research works to classify the type of mushroom have applied, machine learning techniques like Naïve Bayes, K-Neural Network, Support vector Machine(SVM), Artificial Neural Network(ANN), Decision Tree techniques. In this literature review, a summary and comparisons of all different techniques of mushroom classification in terms of its performance parameters, merits and demerits faced during the classification of mushrooms using machine learning techniques.

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Rakesh Kumar Y and Dr. V. Chandrasekhar. (2020). Machine Learning Methods to Classify Mushrooms for Edibility-A Review. International Journal for Modern Trends in Science and Technology, 06(09), 54–58. https://doi.org/10.46501/ijmtst060909

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