Affiliation:
1. B V Raju Institute of Technology, Narsapur, Medak, Telangana, India
2. School of Technology GITAM(Deemed to be University), Rudraram, Hyderabad, India
3. Mahatma Gandhi Institute of Technology, Hyderabad, Telangana, India
Abstract
This chapter begins with a concise introduction to machine learning and the
classification of machine learning systems (supervised learning, unsupervised learning,
and reinforcement learning). ‘Breast Cancer Prediction Using ML Techniques’ is the
topic of Chapter 2. This chapter describes various breast cancer prediction algorithms,
including convolutional neural networks (CNN), support vector machines, Nave
Bayesian classification, and weighted Nave Bayesian classification. Prediction of Heart
Disease Using Machine Learning Techniques is the topic of Chapter 3. This chapter
describes the numerous heart disease prediction algorithms, including Support Vector
Machines (SVM), Logistic Regression, KNN, Random Forest Classifier, and Deep
Neural Networks. Prediction of IPL Data Using Machine Learning Techniques is the
topic of Chapter 4. The following algorithms are covered in this chapter: decision trees,
naive bayes, K-Nearest Neighbour Random Forest, data mining techniques, fuzzy
clustering logic, support vector machines, reinforcement learning algorithms, data
analytics approaches and Bayesian prediction techniques. Chapter Five: Software Error
Prediction by means of machine learning- The AR model and the Known Power Model
(POWM), as well as artificial neural networks (ANNs), particle swarm optimisation
(PSO), decision trees (DT), Nave Bayes (NB), and linear classifiers, are among the
approaches (K-nearest neighbours, Nave Bayes, C-4.5, and decision trees) Prediction
of Rainfall Using Machine Learning Techniques, Chapter 6: The following are
discussed: LASSO (Least Absolute Shrinkage and Selection Operator) Regression,
ANN (Artificial Neural Network), Support Vector Machine, Multi-Layer Perception,
Decision Tree, Adaptive Neuro-Fuzzy Inference System, Wavelet Neural Network,
Ensemble Prediction Systems, ARIMA model, PCA and KMeans algorithms,
Recurrent Neural Network (RNN), statistical KNN classifier, and neural SOM Weather
Prediction Using Machine Learning Techniques that includes Bayesian Networks,
Linear Regression, Logistic Regression, KNN Decision Tree, Random Forest, K-Means, and Apriori's Algorithm, as well as Linear Regression, Polynomial Regression,
Random Forest Regression, Artificial Neural Networks, and Recurrent Neural
Networks.
Publisher
BENTHAM SCIENCE PUBLISHERS
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