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ExcelR's Data Science Course offers a comprehensive learning experience designed to equip you with the skills needed to thrive in the data-driven world. <br>Business name: ExcelR- Data Science, Data Analytics, Business Analytics Course Training Mumbai<br>Address: 304, 3rd Floor, Pratibha Building. Three Petrol pump, Lal Bahadur Shastri Rd, opposite Manas Tower, Pakhdi, Thane West, Thane, Maharashtra 400602<br>Phone: 09108238354, <br>Email: enquiry@excelr.com<br>
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Supervised Learning:PredictiveModelingwithLabeledData • UnderstandingSupervisedLearning: • Start by explaining the concept of supervised learning, which involves training a model on a labeleddatasetconsistingofinput features and corresponding target labels.Data Science Course.Emphasizethatthegoalofsupervisedlearningisto learn a mapping from input featuresto output labels basedon the labeled examples providedduring training. • TypesofSupervisedLearningAlgorithms: • Introduce the main types of supervised learning algorithms: classification and regression. Explainthatclassificationalgorithmsareusedforpredictingdiscreteclasslabels,while regression algorithms are used for predicting continuous numerical values. Provide examples of commonalgorithmsineachcategory,suchaslogisticregression,decisiontrees,random forests,support vector machines (SVM), andneural networks. • DataPreprocessingandFeatureEngineering: • Discusstheimportanceofdatapreprocessingandfeatureengineeringinsupervised learning.Teachstudentstocleanandpreprocessthedataset by handling missing values, encoding categorical variables, and scaling numerical features. Explain how feature engineering techniques such as feature selection, dimensionality reduction, and creating new features can improvemodel performance and generalization. • ModelTrainingandEvaluation: • Cover the process of model training and evaluation in supervised learning. Explain how to splitthedatasetinto training and testing sets to assess the model's performance on unseen data. Introduce evaluation metrics appropriate for classification tasks (e.g., accuracy, precision, recall,F1-score,ROCAUC)andregression tasks (e.g., mean absolute error, mean squared error, R-squared). Teach students how to select the appropriate evaluation metric based on the specificproblem and interpret the model'sperformance results. • ModelSelectionandHyperparameterTuning: • Discusstechniquesformodelselection and hyperparameter tuning to optimize model performance.Explaintheimportanceofcross-validationforrobustmodelevaluationand hyperparametertuning.Introducestrategiessuchasgridsearchandrandomizedsearchfor
exploring the hyperparameter space and selecting the optimal combination of hyperparameters. Emphasizetheneedforexperimentationanditerationtofine-tunethemodelandachievethe bestperformance. By mastering these pointers, students can effectively apply supervised learning techniques to build predictive models using labelled data. Data Science Course in Mumbai. They will gain a solid understanding of the fundamental concepts, algorithms, and best practices in supervised learning,enablingthemtotackle awiderangeofclassificationandregressiontasksin real-worldapplications. Business name: ExcelR- Data Science, Data Analytics, Business Analytics Course Training Mumbai Address: 304, 3rd Floor, Pratibha Building. Three Petrol pump, Lal Bahadur Shastri Rd, oppositeManas Tower, Pakhdi,Thane West, Thane,Maharashtra 400602 Phone:09108238354, Email:enquiry@excelr.com