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    MACHINE LEARNING WITH IMBALANCED DATA : Proven Techniques to Build Accurate Models from Skewed Datasets

    Posted By: naag
    MACHINE LEARNING WITH IMBALANCED DATA : Proven Techniques to Build Accurate Models from Skewed Datasets

    MACHINE LEARNING WITH IMBALANCED DATA : Proven Techniques to Build Accurate Models from Skewed Datasets
    English | October 7, 2025 | ASIN: B0FV95D9P3 | 233 pages | EPUB (True) | 197.54 KB

    Frustrated by machine learning models that nail the easy cases but flop on rare events—like missing critical fraud detections or disease outbreaks in skewed datasets? You're battling a silent killer in data science: imbalanced data, where one class dominates, skewing results and costing you accuracy, time, and trust. But imagine flipping the script—building robust models that spot the needles in haystacks with pinpoint precision.
    Enter Machine Learning with Imbalanced Data: Proven Techniques to Build Accurate Models from Skewed Datasets—your ultimate guide to mastering oversampling, undersampling, SMOTE, ensemble methods, and cost-sensitive learning through hands-on Python projects for beginners to advanced practitioners. This book delivers actionable, step-by-step solutions to conquer imbalanced challenges, transforming skewed datasets into balanced powerhouses for real-world wins in fraud detection, medical diagnostics, and more.

    Unlock Evaluation Mastery: Ditch accuracy pitfalls with precision, recall, F1-score, ROC-AUC, and precision-recall curves tailored for imbalanced data.
    Master Undersampling: Apply random undersampling, NearMiss, and Edited Nearest Neighbors to reduce majority noise and boost model performance on skewed datasets.
    Harness Oversampling Power: Generate synthetic samples via SMOTE, Borderline-SMOTE, and random oversampling to amplify minority classes without overfitting.
    Combine for Balance: Blend over- and undersampling with ensemble methods like Balanced Random Forest for harmonious, high-accuracy models.
    Embrace Cost-Sensitive Learning: Integrate cost-sensitive algorithms and advanced metrics into Python workflows for ethical, effective predictions.

    Empower your machine learning arsenal—grab this book now and start building accurate models from skewed datasets like a pro!




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