Data Mining with Python
PorEslam Ahmed
Es posible que este libro digital no cumpla las normas de accesibilidad y no sea totalmente compatible con las tecnologías de asistencia.
Unlock the power of data mining with Python! "Data Mining with Python: From Foundational Principles to Advanced Techniques" is your comprehensive guide to extracting valuable insights from large datasets. This book takes you on a practical journey through the entire data mining process, leveraging the power of Python's rich data science ecosystem.
Master essential libraries like NumPy and Pandas for data manipulation, and dive deep into critical techniques including:
* Data Preprocessing: Handling missing values, outliers, inconsistencies, feature scaling, and encoding.
* Exploratory Data Analysis (EDA): Uncovering patterns and insights using statistical summaries and visualization with Matplotlib and Seaborn.
* Classification: Building predictive models with Decision Trees, K-Nearest Neighbors, Logistic Regression, and Support Vector Machines (SVM).
* Ensemble Methods: Harnessing the power of Bagging, Random Forests, Boosting (AdaBoost, GBM), and Stacking.
* Clustering: Discovering hidden groups in unlabeled data using K-Means, Hierarchical Clustering, and DBSCAN.
* Dimensionality Reduction: Simplifying complexity with PCA, LDA, and t-SNE.
* Feature Engineering: Crafting better predictors to improve model performance.
* Model Evaluation & Selection: Choosing the right metrics, using cross-validation, and performing hyperparameter tuning (GridSearch, RandomizedSearch).
Filled with practical code examples using Scikit-learn and following the CRISP-DM framework, this book is designed for aspiring data scientists, analysts, developers, students, and researchers looking to build a strong foundation and gain hands-on experience in data mining with Python.
Detalles
- Fecha de publicación
- May 8, 2025
- Idioma
- English
- Categoría
- Computadoras y tecnología
- Copyright
- Todos los derechos reservados - Licencia estándar de copyright
- Contribuyentes
- Por (autor o autora): Eslam Ahmed
Especificaciones
- Formato
- EPUB
Palabras clave
data miningpythonmachine learningdata sciencenumpypandasscikit-learndata preprocessingEDAdata visualizationclassificationregressionclusteringensemble methodsrandom forestgradient boostingdimensionality reductionPCAfeature engineeringmodel evaluationcross-validationdecision treeKNNlogistic regressionSVMK-MeansDBSCANCRISP-DMalgorithmspredictive modeling