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translation: refine translation of hash_map.md (#1483)
* Update hash_map.md * Update hash_map.md * Update hash_map.md to improve concise
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# Hash table
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A <u>hash table</u>, also known as a <u>hash map</u>, is a data structure that establishes a mapping between keys and values, enabling efficient element retrieval. Specifically, when we input a `key` into the hash table, we can retrive the corresponding `value` in $O(1)$ time complexity.
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A <u>hash table</u>, also known as a <u>hash map</u>, is a data structure that establishes a mapping between keys and values, enabling efficient element retrieval. Specifically, when we input a `key` into the hash table, we can retrieve the corresponding `value` in $O(1)$ time complexity.
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As shown in the figure below, given $n$ students, each student has two data fields: "Name" and "Student ID". If we want to implement a query function that takes a student ID as input and returns the corresponding name, we can use the hash table shown in the figure below.
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In addition to hash tables, arrays and linked lists can also be used to implement query functionality, but the time complexity is different. Their efficiency is compared in the table below:
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- **Inserting elements**: Simply append the element to the tail of the array (or linked list). The time complexity of this operation is $O(1)$.
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- **Searching for elements**: As the array (or linked list) is unsorted, searching for an element requires traversing through all of the elements. The time complexity of this operation is $O(n)$.
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- **Deleting elements**: To remove an element, we first need to locate it. Then, we delete it from the array (or linked list). The time complexity of this operation is $O(n)$.
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- **Inserting an element**: Simply append the element to the tail of the array (or linked list). The time complexity of this operation is $O(1)$.
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- **Searching for an element**: As the array (or linked list) is unsorted, searching for an element requires traversing through all of the elements. The time complexity of this operation is $O(n)$.
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- **Deleting an element**: To remove an element, we first need to locate it. Then, we delete it from the array (or linked list). The time complexity of this operation is $O(n)$.
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<p align="center"> Table <id> Comparison of time efficiency for common operations </p>
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| Insert Elements | $O(1)$ | $O(1)$ | $O(1)$ |
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| Delete Elements | $O(n)$ | $O(n)$ | $O(1)$ |
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It can be seen that **the time complexity for operations (insertion, deletion, searching, and modification) in a hash table is $O(1)$**, which is highly efficient.
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As observed, **the time complexity for operations (insertion, deletion, searching, and modification) in a hash table is $O(1)$**, which is highly efficient.
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## Common operations of hash table
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unordered_map<int, string> map;
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map[12836] = "Xiao Ha";
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map[15937] = "Xiao Luo";
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map[16750] = "Xiao Suan";
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Map<Integer, String> map = new HashMap<>();
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map.put(12836, "Xiao Ha");
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map.put(15937, "Xiao Luo");
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map.put(16750, "Xiao Suan");
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/* Initialize hash table */
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Dictionary<int, string> map = new() {
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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{ 12836, "Xiao Ha" },
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{ 15937, "Xiao Luo" },
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{ 16750, "Xiao Suan" },
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hmap := make(map[int]string)
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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hmap[12836] = "Xiao Ha"
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hmap[15937] = "Xiao Luo"
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hmap[16750] = "Xiao Suan"
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var map: [Int: String] = [:]
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map[12836] = "Xiao Ha"
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map[15937] = "Xiao Luo"
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map[16750] = "Xiao Suan"
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/* Initialize hash table */
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const map = new Map<number, string>();
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map.set(12836, 'Xiao Ha');
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map.set(15937, 'Xiao Luo');
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map.set(16750, 'Xiao Suan');
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Map<int, String> map = {};
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map[12836] = "Xiao Ha";
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map[15937] = "Xiao Luo";
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map[16750] = "Xiao Suan";
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let mut map: HashMap<i32, String> = HashMap::new();
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/* Add operation */
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// Add key-value pair (key, value) to the hash table
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// Add key-value pair (key, value) to hash table
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map.insert(12836, "Xiao Ha".to_string());
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map.insert(15937, "Xiao Luo".to_string());
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map.insert(16750, "Xiao Suan".to_string());
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So, how do we locate the corresponding bucket based on the `key`? This is achieved through a <u>hash function</u>. The role of the hash function is to map a larger input space to a smaller output space. In a hash table, the input space consists of all the keys, and the output space consists of all the buckets (array indices). In other words, given a `key`, **we can use the hash function to determine the storage location of the corresponding key-value pair in the array**.
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When given a `key`, the calculation process of the hash function consists of the following two steps:
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With a given `key`, the calculation of the hash function consists of two steps:
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1. Calculate the hash value by using a certain hash algorithm `hash()`.
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2. Take the modulus of the hash value with the bucket count (array length) `capacity` to obtain the array `index` corresponding to that key.
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2. Take the modulus of the hash value with the bucket count (array length) `capacity` to obtain the array `index` corresponding to the key.
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```shell
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index = hash(key) % capacity
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