Skip to content
Free UK delivery over £35 • Brand New Books • Trusted by millions of customers
Free UK delivery over £35

Machine Learning for Data Mining: Advanced Predictive Modeling Techniques for Data Analysis - Non Fiction - Paperback

SKU VRT-2731

ISBN: 9781838828974

Save 0% Save 0%
Original price £22.99
Original price £22.99 - Original price £22.99
Original price £22.99
Current price £22.97
£22.97 - £22.97
Current price £22.97
Availability:
Low stock
Free Shipping
Free 48-Hour Delivery

On orders over £35

Easy Returns
Fast UK Dispatch

Orders shipped within 24 hours

Secure Payment
Easy 30-Day Returns

Hassle-free returns on eligible items

Secure Payment
Secure Checkout

Safe & encrypted payment options

Title:
Machine Learning for Data Mining: Improve your data mining capabilities with advanced predictive modeling

Condition: BRAND NEW
Format: Paperback
ISBN: 9781838828974

Overview:
Machine Learning for Data Mining offers a practical, hands-on pathway to elevate your data mining projects with advanced predictive modeling. Authored by Jesus Salcedo and published by Packt Publishing in 2019 as a first edition, this paperback guide is written for data scientists, analysts, and students who want to blend the strengths of machine learning with traditional data mining techniques. The book demystifies when and how to apply various ML methods within data mining workflows, from initial data preparation to final model deployment. You’ll learn a clear, step-by-step approach to building, evaluating, and refining predictive models, with an emphasis on interpretability and actionable insights. Topics include selecting the right algorithm for different data landscapes, designing robust experiments, handling real-world data challenges, and translating model outcomes into business value. The tone remains practical and outcome-focused, guiding you through common pitfalls such as overfitting, data leakage, and imbalanced datasets. If you’re aiming to upgrade your toolkit and deliver data-driven decisions with confidence, this is a essential companion for your data science journey.

What Makes This Book Stand Out:
What sets this guide apart is its deliberate integration of machine learning techniques into data mining practice, giving you a concrete blueprint for smarter analyses. Salcedo emphasizes a pragmatic, results-first mindset: choose the right ML approach based on the data, validate it rigorously, and interpret outcomes in business terms. Unlike theory-only texts, this book foregrounds actionable steps—feature engineering strategies, model selection criteria, and stepwise evaluation plans—that you can apply immediately to real datasets. The content is designed to help you improve model development and performance in a range of contexts, from fraud detection and customer analytics to operational monitoring and beyond. By focusing on when and how to apply each technique, the book helps you avoid common missteps and accelerate the journey from data to decision.

Who This Book Is Perfect For:
This book is ideal for data scientists, data analysts, and ML practitioners who want to deepen their data mining capabilities with predictive modeling. It also serves students and researchers seeking practical, implementable guidance on combining ML with data mining workflows. If you’re responsible for turning large, messy datasets into reliable insights, or you’re preparing for projects in market research, security analytics, or IoT data streams, this accessible paperback will become a go-to reference. Beginners will appreciate the clear, step-by-step approach, while more experienced readers will value the concrete techniques and decision-making frameworks that speed up project delivery.

Key Highlights:

  • Clear guidance on when to apply machine learning within data mining projects
  • Step-by-step workflow from data preparation to model evaluation
  • Practical strategies for feature engineering and algorithm selection
  • Coverage of diverse techniques including classification, regression, clustering, and anomaly detection
  • Techniques to avoid overfitting, data leakage, and imbalanced data issues
  • Focus on interpreting results and translating them into business actions
  • Hungry for real-world applicability, with insights drawn from typical data science scenarios

About the Author:
Jesus Salcedo is the author of Machine Learning for Data Mining, published by Packt Publishing in 2019. This work reflects a practical, reader-friendly approach to bridging machine learning with data mining, designed to help professionals implement robust predictive modeling in real-world data environments. Salcedo’s writing emphasizes clarity, hands-on techniques, and accessible explanations, making advanced concepts approachable for both newcomers and seasoned practitioners. Readers can expect a focused, results-driven perspective that translates theory into implementable steps and measurable improvements in data mining projects.

Why You’ll Love This Book:
If you’re aiming to upgrade your data analysis capabilities, this book delivers a practical, immediately usable framework for applying ML to data mining. It helps you build stronger models, interpret outcomes with confidence, and present findings in business-friendly language. The paperback edition offers a portable, approachable format for on-the-job reference, classroom use, or study groups. With its clear structure and concrete guidance, it’s a reliable companion for driving tangible improvements in data-driven decision making, whether you’re optimizing campaigns, detecting anomalies, or forecasting future trends.

Please Note: The individual books included in this listing will be dispatched as per the original UK ISBN and UK edition cover image shown in the image.

Bigger bundles

Better value

Fast UK delivery

Free over £35

Brand new books

From a trusted retailer 

COMMON QUESTIONS

1. Do you offer free delivery?

Yes, The Book Bundle offers free UK delivery on orders over £35. This makes bundles and multi-book orders especially good value.

2. Why are the books so heavily discounted?

Discounts may come from publisher offers, special stock opportunities, clearance lines or bulk-buying advantages. The downside is that stock sells out extremely fast so we can't guarantee that your set will be available tomorrow. Secure it today.

3. Are the books genuine editions?

Yes. The Book Bundle sells genuine books from recognised publishers and suppliers. Product pages may include details such as ISBN, publisher, format and author information so customers can check the edition before ordering.

4. Are the books brand new or used?

All books sold by The Book Bundle are brand new.This makes them suitable for gifts, schools, home libraries, and collectors.

5. Is the price for the full bundle or just one book?

The price shown is for the product described on the page. If the title says “collection”, “bundle”, “box set” or “set”, the price is for the full set described, not just one book.

6. How long does delivery take?

We dispatch orders in 24 hours, and it usually takes 48-72 hours to arrive.