Similarity Joins in Relational Database Systems (Synthesis Lectures on Data Management) Buy on Amazon
Facebook LinkedIn

Similarity Joins in Relational Database Systems (Synthesis Lectures on Data Management)

40.00 USD

Usually ships in 24 hours

Book Details
ISBN / ASIN 1627050280
ISBN-13 9781627050289
Availability Usually ships in 24 hours
Sales Rank #6,071,420
Category Computers
Marketplace United States 🇺🇸
Ratings & Reviews No reviews yet — be the first!

No reviews yet.

Description

State-of-the-art database systems manage and process a variety of complex objects, including strings and trees. For such objects equality comparisons are often not meaningful and must be replaced by similarity comparisons. This book describes the concepts and techniques to incorporate similarity into database systems. We start out by discussing the properties of strings and trees, and identify the edit distance as the de facto standard for comparing complex objects. Since the edit distance is computationally expensive, token-based distances have been introduced to speed up edit distance computations. The basic idea is to decompose complex objects into sets of tokens that can be compared efficiently. Token-based distances are used to compute an approximation of the edit distance and prune expensive edit distance calculations. A key observation when computing similarity joins is that many of the object pairs, for which the similarity is computed, are very different from each other. Filters exploit this property to improve the performance of similarity joins. A filter preprocesses the input data sets and produces a set of candidate pairs. The distance function is evaluated on the candidate pairs only. We describe the essential query processing techniques for filters based on lower and upper bounds. For token equality joins we describe prefix, size, positional and partitioning filters, which can be used to avoid the computation of small intersections that are not needed since the similarity would be too low.

Table of Contents: Preface / Acknowledgments / Introduction / Data Types / Edit-Based Distances / Token-Based Distances / Query Processing Techniques / Filters for Token Equality Joins / Conclusion / Bibliography / Authors' Biographies / Index

Donate to EbookNetworking
Previous Book Python How to Program, 1/e Next Book VHDL: Hardware Description ...
Previous Python How to Pro...
Next VHDL: Hardware De...