Machine Learning Techniques In Econometrics With Python(1st Edition)

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Grant Richman

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ISBN: B0DLKGGCZJ

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Book Price $0 : Book Description:Unlock The Full Potential Of Econometric Analysis With The Transformative Power Of Machine Learning! This Comprehensive Guide Delves Into A Wide Array Of Modern Techniques That Blend Classic Econometric Models With State-of-the-art Machine Learning Methods. Packed With Python Code, Practical Examples, And Insightful Explanations, This Book Is An Indispensable Resource For Economists, Data Scientists, And Analysts Aiming To Elevate Their Analytical Capabilities.Key Features:A Detailed Exploration Of Essential And Advanced Machine Learning Methods Tailored For Econometric Analysis.Practical Python Code Examples Accompanying Each Chapter For Hands-on Experience.Step-by-step Instructions On Implementing Complex Models In Econometric Contexts.Real-world Case Studies Highlighting The Benefits And Applications Of Machine Learning Approaches.Essential Insights Into Dimensionality Reduction, Time Series Forecasting, And Text Analysis In Economics.What You Will Learn:Master The Fundamentals Of Linear Regression For Estimating Relationships Between Economic Variables.Discover Logistic Regression Techniques For Binary Outcome Prediction In Econometric Studies.Handle Multicollinearity And Enhance Prediction Accuracy Using Ridge Regression Methods.Leverage Lasso Regression For Effective Model Selection And Increased Sparsity In Econometric Analysis.Combine Ridge And Lasso Techniques With Elastic Net Regression For Superior Data Modeling.Analyze Non-linear Relationships In Econometric Data Using Decision Tree Algorithms.Boost Predictive Performance With Random Forest Ensemble Learning In Econometric Contexts.Optimize Econometric Predictions Using Gradient Boosting Machines And Hyperparameter Tuning.Implement Support Vector Machines For Both Classification And Regression Within Econometric Analyses.Utilize The Simplicity Of K-nearest Neighbors For Versatile Non-parametric Econometric Modeling.Achieve Dimensionality Reduction In Econometrics With Principal Component Analysis.Explore Latent Variable Modeling Through Factor Analysis To Understand Data Structure.Forecast Economic Indicators Via ARIMA Models In Time Series Econometric Analysis.Assess And Predict Financial Volatility Using GARCH Models In Econometric Studies.Model Time-to-event Data Effectively With Survival Analysis Techniques In Econometrics.Apply Bayesian Inference To Update Beliefs And Quantify Uncertainty In Econometric Models.Approximate Complex Models Using Markov Chain Monte Carlo For Econometrics.Capture Intricate, Non-linear Relationships In Economic Datasets Using Neural Networks.Enhance Econometric Modeling With Deep Learning Architectures For Processing Large Datasets.Incorporate Natural Language Processing To Analyze Textual Data In Econometric Research.Segment And Identify Patterns With Clustering Methods In Econometric Data Analysis.Uncover Nested Data Structures Using Hierarchical Clustering Techniques In Econometrics.Partition Data Into Structured Clusters With K-means, Aiding Econometric Exploration.Use T-SNE For Dimensionality Reduction In High-dimensional Econometric Datasets.Implement Reinforcement Learning Strategies In Economic Decision-making Models.Estimate Causal Effects With Propensity Score Matching, Managing Selection Bias.Test Comprehensive Econometric Theories Using Structural Equation Modeling.Examine Temporal Dynamics In Econometrics With Dynamic Panel Data Models.Apply Discrete Choice Models For Decision-making Analyses In Econometrics.Capture Complex Relationships With Non-linear Econometric Models.