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Practical Machine Learning Innovations in Recommendation [Paperback / softback]

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  • Format: Paperback / softback, 56 pages, height x width x depth: 227x161x4 mm, weight: 100 g
  • Pub. Date: 04-Nov-2014
  • Publisher: O'Reilly Media
  • ISBN-10: 1491915382
  • ISBN-13: 9781491915387
  • Paperback / softback
  • Price: 22,63 €*
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  • Regular price: 26,62 €
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  • Format: Paperback / softback, 56 pages, height x width x depth: 227x161x4 mm, weight: 100 g
  • Pub. Date: 04-Nov-2014
  • Publisher: O'Reilly Media
  • ISBN-10: 1491915382
  • ISBN-13: 9781491915387

Building a simple but powerful recommendation system is much easier than you think. Approachable for all levels of expertise, this report explains innovations that make machine learning practical for business production settings—and demonstrates how even a small-scale development team can design an effective large-scale recommendation system.

Apache Mahout committers Ted Dunning and Ellen Friedman walk you through a design that relies on careful simplification. You’ll learn how to collect the right data, analyze it with an algorithm from the Mahout library, and then easily deploy the recommender using search technology, such as Apache Solr or Elasticsearch. Powerful and effective, this efficient combination does learning offline and delivers rapid response recommendations in real time.

  • Understand the tradeoffs between simple and complex recommenders
  • Collect user data that tracks user actions—rather than their ratings
  • Predict what a user wants based on behavior by others, using Mahoutfor co-occurrence analysis
  • Use search technology to offer recommendations in real time, complete with item metadata
  • Watch the recommender in action with a music service example
  • Improve your recommender with dithering, multimodal recommendation, and other techniques
1 Practical Machine Learning
1(4)
What's a Person To Do?
1(3)
Making Recommendation Approachable
4(1)
2 Careful Simplification
5(4)
Behavior, Co-occurrence, and Text Retrieval
6(1)
Design of a Simple Recommender
7(2)
3 What I Do, Not What I Say
9(4)
Collecting Input Data
10(3)
4 Co-occurrence and Recommendation
13(6)
How Apache Mahout Builds a Model
16(1)
Relevance Score
17(2)
5 Deploy the Recommender
19(8)
What Is Apache Solr/Lucene?
19(1)
Why Use Apache Solr/Lucene to Deploy?
20(1)
What's the Connection Between Solr and Co-occurrence Indicators?
20(2)
How the Recommender Works
22(1)
Two-Part Design
23(4)
6 Example: Music Recommender
27(10)
Business Goal of the Music Machine
27(1)
Data Sources
28(1)
Recommendations at Scale
29(3)
A Peek Inside the Engine
32(1)
Using Search to Make the Recommendations
33(4)
7 Making It Better
37(8)
Dithering
38(2)
Anti-flood
40(1)
When More Is More: Multimodal and Cross Recommendation
41(4)
8 Lessons Learned
45(2)
A Additional Resources 47