© 2004 Goodrich, Tamassia Hash Tables1 0 1 2 3 4 451-22-0004 981-10-0002 025-61-0001.

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© 2004 Goodrich, Tamassia Hash Tables

© 2004 Goodrich, Tamassia Hash Tables2 Recall the Map ADT Map ADT methods: get(k): if the map M has an entry with key k, return its assoiciated value; else, return null put(k, v): insert entry (k, v) into the map M; if key k is not already in M, then return null; else, return old value associated with k remove(k): if the map M has an entry with key k, remove it from M and return its associated value; else, return null size(), isEmpty() keys(): return an iterator of the keys in M values(): return an iterator of the values in M

© 2004 Goodrich, Tamassia Hash Tables3 Hash Functions and Hash Tables A hash function h maps keys of a given type to integers in a fixed interval [0, N 1] Example: h(x) x mod N is a hash function for integer keys The integer h(x) is called the hash value of key x A hash table for a given key type consists of Hash function h Array or Vector (called table) of size N When implementing a map with a hash table, the goal is to store item (k, o) at index i h(k)

© 2004 Goodrich, Tamassia Hash Tables4 Example We design a hash table for a map storing entries as (SSN, Name), where SSN (social security number) is a nine-digit positive integer Our hash table uses an array of size N 10,000 and the hash function h(x) last four digits of x …

© 2004 Goodrich, Tamassia Hash Tables5 Hash Functions A hash function is usually specified as the composition of two functions: Hash code: h 1 : keys integers Compression function: h 2 : integers [0, N 1] The hash code is applied first, and the compression function is applied next on the result, i.e., h(x) = h 2 (h 1 (x)) The goal of the hash function is to disperse the keys in a random way

© 2004 Goodrich, Tamassia Hash Tables6 Hash Codes Memory address: We reinterpret the memory address of the key object as an integer. Default hash code of all Java objects. Doesnt work for numeric and string keys. Also bad if objects can move! Integer cast: We reinterpret the bits of the key as an integer Suitable for keys of length less than or equal to the number of bits of the integer type (e.g., byte, short, int and float in Java) Component sum: We partition the bits of the key into components of fixed length (e.g., 16 or 32 bits) and we sum the components, ignoring overflows. Suitable for numeric keys of fixed length greater than or equal to the number of bits of the integer type (e.g., long and double in Java).

© 2004 Goodrich, Tamassia Hash Tables7 Hash Codes (cont.) Polynomial accumulation: We partition the bits of the key into a sequence of components of fixed length (e.g., 8, 16 or 32 bits) a 0 a 1 … a n 1 We evaluate the polynomial p(z) a 0 a 1 z a 2 z 2 … … a n 1 z n 1 at a fixed value z, ignoring overflows. Especially suitable for strings (e.g., the choice z 33 gives at most 6 collisions on a set of 50,000 English words) Polynomial p(z) can be evaluated in O(n) time using Horners rule: The following polynomials are successively computed, each from the previous one in O(1) time p 0 (z) a n 1 p i (z) a n i 1 zp i 1 (z) (i 1, 2, …, n 1) We have p(z) p n 1 (z)

© 2004 Goodrich, Tamassia Hash Tables8 Compression Functions Division: h 2 (y) y mod N The size N of the hash table is usually chosen to be a prime The reason has to do with number theory… Multiply, Add and Divide (MAD): h 2 (y) (ay b) mod N a and b are nonnegative integers such that a mod N 0 Otherwise, every integer would map to the same value b

© 2004 Goodrich, Tamassia Hash Tables9 Collision Handling Collisions occur when different elements are mapped to the same cell Separate Chaining: let each cell in the table point to a linked list of entries that map there Separate chaining is simple, but requires additional memory outside the table

© 2004 Goodrich, Tamassia Hash Tables10 Map Methods with Separate Chaining used for Collisions Delegate operations to a list-based map at each cell: Algorithm get(k): Output: The value associated with the key k in the map, or null if there is no entry with key equal to k in the map return A[h(k)].get(k) {delegate the get to the list-based map at A[h(k)]} Algorithm put(k,v): Output: If there is an existing entry in our map with key equal to k, then we return its value (replacing it with v); otherwise, we return null t = A[h(k)].put(k,v) {delegate the put to the list-based map at A[h(k)]} if t = null then {k is a new key } n = n + 1 return t Algorithm remove(k): Output: The (removed) value associated with key k in the map, or null if there is no entry with key equal to k in the map t = A[h(k)].remove(k) {delegate the remove to the list-based map at A[h(k)]} if t null then {k was found} n = n - 1 return t

© 2004 Goodrich, Tamassia Hash Tables11 Open Addressing The colliding item is placed in a different cell of the table. Linear probing handles collisions by placing the colliding item in the next (circularly) available table cell Each table cell inspected is referred to as a probe Colliding items lump together, causing future collisions to cause a longer sequence of probes Example: h(x) x mod 13 Insert keys 18, 41, 22, 44, 59, 32, 31, 73, in this order

© 2004 Goodrich, Tamassia Hash Tables12 Search with Linear Probing Consider a hash table A that uses linear probing get (k) We start at cell h(k) We probe consecutive locations until one of the following occurs An item with key k is found, or An empty cell is found, or N cells have been unsuccessfully probed Algorithm get(k) i h(k) p 0 repeat c A[i] if c return null else if c.key () k return c.element() else i (i 1) mod N p p 1 until p N return null

© 2004 Goodrich, Tamassia Hash Tables13 Updates with Linear Probing To handle insertions and deletions, we introduce a special object, called AVAILABLE, which replaces deleted elements remove (k) We search for an entry with key k If such an entry (k, o) is found, we replace it with the special item AVAILABLE and we return element o Else, we return null put (k, o) We throw an exception if the table is full We start at cell h(k) We probe consecutive cells until one of the following occurs A cell i is found that is either empty or stores AVAILABLE, or N cells have been unsuccessfully probed We store entry (k, o) in cell i

© 2004 Goodrich, Tamassia Hash Tables14 Double Hashing Double hashing uses a secondary hash function d(k) and handles collisions by placing an item in the first available cell of the series (i jd(k)) mod N for j 0, 1, …, N 1 The secondary hash function d ( k ) cannot have zero values The table size N must be a prime to allow probing of all the cells Common choice of compression function for the secondary hash function: d 2 ( k ) q (k mod q) where q N q is a prime The possible values for d 2 ( k ) are 1, 2, …, q

© 2004 Goodrich, Tamassia Hash Tables15 Consider a hash table storing integer keys that handles collision with double hashing N 13 h(k) k mod 13 d(k) 7 k mod 7 Insert keys 18, 41, 22, 44, 59, 32, 31, 73, in this order Example of Double Hashing

© 2004 Goodrich, Tamassia Hash Tables16 Performance of Hashing In the worst case, searches, insertions and removals on a hash table take O(n) time The worst case occurs when all the keys inserted into the map collide The load factor n N affects the performance of a hash table Assuming that the hash values are like random numbers, it can be shown that the expected number of probes for an insertion with open addressing is 1 (1 ) The expected running time of all the dictionary ADT operations in a hash table is O(1) In practice, hashing is very fast provided the load factor is not close to 100% When the load gets too high, we can rehash…. Applications: very numerous, e.g. computing frequencies.