Marketing Measurement and Analytics

An Introduction

Paperback
December 2024
9781501523144
More details
  • Publisher
    Mercury Learning and Information
  • Published
    19th December
  • ISBN 9781501523144
  • Language English
  • Pages 244 pp.
  • Size 7" x 9"
$41.99
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December 2024
9781501520426
More details
  • Publisher
    Mercury Learning and Information
  • ISBN 9781501520426
  • Language English
  • Pages 244 pp.
  • Size 7" x 9"
$165.00
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December 2024
9781501520433
More details
  • Publisher
    Mercury Learning and Information
  • ISBN 9781501520433
  • Language English
  • Pages 244 pp.
  • Size 7" x 9"
$41.99

This book is a comprehensive guide to aligning your marketing strategies with business objectives while embracing the latest innovations in data and AI-driven analytics. You’ll cover topics such as: aligning measurement to business goals by distinguishing between business and marketing KPIs and choosing the right metrics to guide your strategy; building adaptable systems that link organizational goals to actionable marketing tactics; exploring AI-based tools, predictive analytics, and generative AI to refine your data strategies; and analyzing results, run multi-channel tests, and create a culture of experimentation and optimization. Through a unique blend of expert insights, practical frameworks, and a recurring case study, this book brings theoretical concepts to life, making them actionable and relatable for any organization.

FEATURES:

  • Integrates cutting-edge AI technologies into your measurement processes
  • Uses a recurring case study to demonstrate real-world applications of measurement concepts
  • Analyzes results and runs multi-channel tests to create a culture of experimentation and optimization

1: Exploring the Terminology
2: The Hierarchy of Goals and Measurements
3: Distinguishing Between Business and Marketing KPIs
4: Choosing the Right Marketing Metrics
5: Single-Channel vs. Multi-Channel Measurement
6: A Brief Overview of Statistics for Marketers
7: Measurement of AI Implementation and AI Model Quality
8: Investing in a Marketing Measurement Framework
9: Components of the Marketing Measurement Framework
10: Incorporating AI-Based Tools and Methods
11: Determining What Data Is Needed
12: Single- and Multi-Channel Data Collection
13: Creating a Sustainable Data Collection Plan
14: Collecting Data in an AI-Driven Marketing Environment
15: Creating a Marketing Dashboard
16: Beginning with a Strong Hypothesis
17: AI-Based Approaches to Prediction and Hypothesis Development
18: Statistical Considerations for Testing
19: Constructing and Running a Single-Channel Test
20: Single-Channel Tests in a Multi-Channel World
21: Multi-Channel Measurement
22: Introduction to Analysis and Improvement
23: Analyzing Your Results
24: Using Generative AI for Analysis
25: Interpreting Results
26: Experimenting, Refining, and Continuous Improvement
Epilogue
Appendices
Index

Greg Kihlström

Greg Kihlström is a best-selling author, speaker, and entrepreneur, and serves as a consultant to top companies on marketing technology, marketing operations, customer experience, and digital transformation initiatives.

Marketing measurement; business goals; KPIs; marketing metrics; AI in marketing; data collection; multi-channel testing; generative AI; marketing framework; statistical analysis