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Elasticsearch 8.x Cookbook

You're reading from   Elasticsearch 8.x Cookbook Over 180 recipes to perform fast, scalable, and reliable searches for your enterprise

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Product type Paperback
Published in May 2022
Publisher Packt
ISBN-13 9781801079815
Length 750 pages
Edition 5th Edition
Languages
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Author (1):
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Alberto Paro Alberto Paro
Author Profile Icon Alberto Paro
Alberto Paro
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Table of Contents (20) Chapters Close

Preface 1. Chapter 1: Getting Started 2. Chapter 2: Managing Mappings FREE CHAPTER 3. Chapter 3: Basic Operations 4. Chapter 4: Exploring Search Capabilities 5. Chapter 5: Text and Numeric Queries 6. Chapter 6: Relationships and Geo Queries 7. Chapter 7: Aggregations 8. Chapter 8: Scripting in Elasticsearch 9. Chapter 9: Managing Clusters 10. Chapter 10: Backups and Restoring Data 11. Chapter 11: User Interfaces 12. Chapter 12: Using the Ingest Module 13. Chapter 13: Java Integration 14. Chapter 14: Scala Integration 15. Chapter 15: Python Integration 16. Chapter 16: Plugin Development 17. Chapter 17: Big Data Integration 18. Chapter 18: X-Pack 19. Other Books You May Enjoy

Mapping the Rank Feature and Feature Vector fields

It's common to want to score a document dynamically, depending on the context. For example, if you need to score more documents that are inside a category, the classic scenario is to boost (increase low-scored) documents that are based on a value, such as page rank, hits, or categories.

Elasticsearch provides two new ways to boost your scores based on values. One is the Rank Feature field, while the other is its extension, which is to use a vector of values.

Getting ready

You will need an up-and-running Elasticsearch installation, as we described in the Downloading and installing Elasticsearch recipe of Chapter 1Getting Started.

To execute the commands in this recipe, you can use any HTTP client, such as curl (https://curl.haxx.se/), Postman (https://www.getpostman.com/), or similar. I suggest using the Kibana console, which provides code completion and better character escaping for Elasticsearch.

How to do it…

We want to use the rank_feature type to implement a common PageRank scenario where documents are scored based on the same characteristics. To achieve this, follow these steps:

  1. To be able to score based on a pagerank value and an inverse url length, we can use the following mapping:
    PUT test-rank
    {  "mappings": {
        "properties": {
          "pagerank": { "type": "rank_feature" },
          "url_length": {
            "type": "rank_feature",
            "positive_score_impact": false
    } } } }
  2. Now, we can store a document, as shown here:
    PUT test-rank/_doc/1
    { "pagerank": 5, "url_length": 20 }
  3. Now, we can execute a feature query on the pagerank value to return our record with a similar query, like so:
    GET test-rank/_search
    { "query": { "rank_feature": { "field":"pagerank" }}} 

    Important Note

    To query the special rank/rank_features types, we need to use the special rank_feature query type, which is only used for this special case.

The evolution of the previous feature's functionality is to define a vector of values using the rank_features type; usually, it can be used to score by topics, categories, or similar discerning facets. We can implement this functionality by following these steps:

  1. First, we must define the mapping for the categories field:
    PUT test-ranks
    { "mappings": {
        "properties": {
          "categories": { "type": "rank_features"  } } } }
  2. Now, we can store some documents in the index by using the following commands:
    PUT test-ranks/_doc/1
    { "categories": { "sport": 14.2, "economic": 24.3 } }
    PUT test-ranks/_doc/2
    { "categories": { "sport": 19.2, "economic": 23.1 } }
  3. Now, we can search based on the saved feature values, as shown here:
    GET test-ranks/_search
    { "query": { "feature": { "field": "categories.sport"   } } }

How it works…

rank_feature and rank_features are special type fields that are used for storing values and are mainly used to score the results.

Important Note

The values that are stored in these fields can only be queried using the feature query. This cannot be used in standard queries and aggregations.

The value numbers in rank_feature and rank_features can only be single positive values (multi-values are not allowed).

In the case of rank_features, the values must be a hash, composed of a string and a positive numeric value.

There is a flag that changes the behavior of scoring – positive_score_impact. This value is true by default, but if you want the value of the feature to decrease the score, you can set it to false. In the pagerank example, the length of url reduces the score of the document because the longer url is, the less relevant it becomes.

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Elasticsearch 8.x Cookbook - Fifth Edition
Published in: May 2022
Publisher: Packt
ISBN-13: 9781801079815
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