This paper presents mushroom prediction using machine learning methods to identify poisonous and non-toxic mushrooms and find the level of accuracy of several machine learning algorithms. Several algorithms are tested to get the best performance, namely by using Neural Network algorithm, Logistic Regression, Support Vector Machine Learning, Naïve Bayes, Decision Tree, Random Forest. The Neural Network algorithm occupies the accuracy value with the highest performance, with an accuracy value of 92.98%. Next, DDN is optimizing by using RMSprop, Adam SGD, Adagrad, and Adadelta with a learning rate comparison of 20 epochs. The experiment show that it produces better accuracy value, so we conduct some experiments by using Deep Neural Network (DNN) in terms of accuracy value. Deep Neural Network with non-transfer learning produces 99.38% accuracy with the Adagrad optimizer for classification of mushroom plants. The experimental results show that the classification using the Deep Neural Network (DNN) is able to achieve higher accuracy than other algorithms to classify mushroom plants.
Jurnal Prosiding IEEE Explore
[1] Vandna and K. L. Bansal, “Data mining techniques for increasing smart farming in agrarian sector,” Int. J. Sci. Technol. Res., vol. 9, no. 2, pp. 3555–3562, 2020.
[2] N. Zahan, M. Z. Hasan, M. A. Malek, and S. S. Reya, “A Deep Learning-Based Approach for Edible, Inedible and Poisonous Mushroom Classification,” 2021 Int. Conf. Inf. Commun. Technol. Sustain. Dev. ICICT4SD 2021 - Proc., pp. 440–444, 2021.
[3] K. Tank and N. Mumbai, “A Comparative Study on Mushroom Classification using Supervised Machine Learning Algorithms,” vol. 5, no. 5, pp. 716–723, 2021.
[4] J. Majumdar, S. Naraseeyappa, and S. Ankalaki, “Analysis of agriculture data using data mining techniques: application of big data,” J. Big Data, vol. 4, no. 1, 2017.
[5] S. Jambekar, S. Nema, and Z. Saquib, “Prediction of Crop Production in India Using Data Mining Techniques,” Proc. - 2018 4th Int. Conf. Comput. Commun. Control Autom. ICCUBEA 2018, pp. 1–5, 2018.
[6] A. Arooj, M. Riaz, and M. N. Akram, “Evaluation of predictive data mining algorithms in soil data classification for optimized crop recommendation,” 2018 Int. Conf. Adv. Comput. Sci. ICACS 2018, vol. 2018-Janua, pp. 1–6, 2018.
[7] V. Cn, N. Archana, and R. Sowmiya, “Agriculture Analysis Using Data Mining and Machine Learning Techniques,” 2019 5th Int. Conf. Adv. Comput. Commun. Syst. ICACCS 2019, pp. 984–990, 2019.
[8] D. R. Chowdhury and S. Ojha, “An Empirical Study on Mushroom Disease Diagnosis: A Data Mining Approach,” Int. Res. J. Eng. Technol., vol. 4, no. 01, pp. 529–534, 2017.
[9] C. Salvador, M. R. Martins, H. Vicente, and A. T. Caldeira, “A Data Mining Approach to Improve Inorganic Characterization of Amanita ponderosa Mushrooms,” Int. J. Anal. Chem., vol. 2018, 2018.
[10] N. Jahan Pinky, S. M. Mohidul Islam, and R. Sharmin Alice, “Edibility Detection of Mushroom Using Ensemble Methods,” Int. J. Image, Graph. Signal Process., vol. 11, no. 4, pp. 55–62, 2019.
[11] M. A. Ottom, N. A. Alawad, and K. M. O. Nahar, “Classification of mushroom fungi using machine learning techniques,” Int. J. Adv. Trends Comput. Sci. Eng., vol. 8, no. 5, pp. 2378–2385, 2019.
[12] M. Alameady, “Classifying Poisonous and Edible Mushrooms in the Agaricus,” Int. J. Eng. Sci. Res. Technol., vol. 6, no. 1, pp. 154–164, 2017.
[13] V. Vanitha, “Classification of Mushrooms to Detect their Edibility Based on Key Attributes,” Biosci. Biotechnol. Res. Commun., vol. 13, no. 11, pp. 37–41, 2020.
[14] L. J. Halawa, A. Wibowo, and F. Ernawan, “Face Recognition Using Faster R-CNN with Inception-V2 Architecture for CCTV Camera,” 3rd Int. Conf. Informatics Comput. Sci., pp. 1-6, 2019.
[15] E. P. Saputra, Supriatiningsih, Indriyanti, and Sugiono, “Prediction of Evaluation Result of E-learning Success Based on Student Activity Logs with Selection of Neural Network Attributes Base on PSO,” J. Phys. Conf. Ser., vol. 1641, no. 1, 2020.
[16] O. Essid, H. Laga, and C. Samir, “Automatic detection and classification of manufacturing defects in metal boxes using deep neural networks,” PLoS One, vol. 13, no. 11, 2018.
[17] L. Alzubaidi et al., Review of deep learning: concepts, CNNarchitectures, challenges, applications, future directions, vol. 8, no. 1. Springer International Publishing, 2021.
[18] I. Khandokar, M. Hasan, F. Ernawan, S. Islam, and M. N. Kabir, “Handwritten character recognition using convolutional neural network,” J. Phys. Conf. Ser., vol. 1918, no. 4, 2021.
[19] M. L. Prasetyo et al., “Face Recognition Using the Convolutional Neural Network for Barrier Gate System,” Int. J. Interact. Mob. Technol., vol. 15, no. 10, pp. 138–153, 2021.