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Everyday data structures

You're reading from   Everyday data structures A practical guide to learning data structures simply and easily

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Product type Paperback
Published in Mar 2017
Publisher Packt
ISBN-13 9781787121041
Length 344 pages
Edition 1st Edition
Languages
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Author (1):
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William Smith William Smith
Author Profile Icon William Smith
William Smith
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Toc

Table of Contents (14) Chapters Close

Preface 1. Data Types: Foundational Structures FREE CHAPTER 2. Arrays: Foundational Collections 3. Lists: Linear Collections 4. Stacks: LIFO Collections 5. Queues: FIFO Collections 6. Dictionaries: Keyed Collections 7. Sets: No Duplicates 8. Structs: Complex Types 9. Trees: Non-Linear Structures 10. Heaps: Ordered Trees 11. Graphs: Values with Relationships 12. Sorting: Bringing Order Out Of Chaos 13. Searching: Finding What You Need

Binary search

When dealing with an unsorted collection, a sequential search is probably the most reasonable approach. However, when working with a sorted collection there are better methods of finding matches to search keys. One alternative is a binary search. A binary search is typically implemented as a recursive function and works on the principle of repeatedly dividing the collection in half and searching smaller and smaller chunks of the collection until a match is found or until the search has exhausted the remaining options and turns up empty.

For example, given the following set of ordered values:

S = {8, 19, 23, 50, 75, 103, 121, 143, 201}

Using a linear search to find the value 143 would have a complexity cost of O(8) since 143 is found at index 7 (position 8) in our collection. However, a binary search can take advantage of the sorted nature of the collection to improve upon this complexity cost.

We know that the collection consists of nine elements, so the binary...

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