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Author SHA1 Message Date
Claudio Maggioni 9ed14f6cb9 Partial lesson 2019-04-09 2019-04-09 11:22:14 +02:00
1 changed files with 41 additions and 4 deletions

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@ -143,7 +143,7 @@ def right(x):
**Max heap property**: for all i > 1 A[parent(i)] >= A[i]
# Data structures
# Some data structures
Way to organize information
@ -160,7 +160,7 @@ A data structure has data and meta-data (like size, length).
## Queue (FIFO)
## Structure
### Structure
- Based on array
- `length`
@ -175,7 +175,7 @@ Data structure for fast search
A way to implement a dictionary is a *Direct-access table*
## API of dictionary
### API of dictionary
- `Insert(D, k)` insert a ket `k` to dictionary `D`
- `Delete(D, k)` removes key `k`
@ -183,12 +183,14 @@ A way to implement a dictionary is a *Direct-access table*
Many different implementations
## Direct-access table
# Direct-access tables
- universe of keys = {1,2,...,M}
- array `T` of size M
- each key has its own position in T
## The 'dumb' approach
```python
def Insert(D, x):
@ -228,3 +230,38 @@ def Chained_hash_search(T, k):
return List_search(T[hash(k)], k)
```
Elements are spreaded evenly across the table if the hash function is good.
*alpha* = *n / |T|*
is the average-case average length of the linked lists inside
the table (where n is the number of elements in the table and *|T|* is the size
of the table.
A good hash table implementation makes the complexity of *alpha* O(1).
If *n*, the number of elements that we want to store in the hash table, grows,
then *|T|* must also grow. *alpha* represents the time complexity of both
insertion and search.
## Growing a Chained hash table
In order to grow a table, a new table must be created. The hash function (or its
range parameters) must be changed as well.
### Rehashing
*Rehashing* is the process of putting all the elements of the old table in the new
table according to the new hash function. The complexity is O(n), since
`Chained-hash-insert` is constant.
### Growing the table every time
If the table is grown by a constant factor every time the table *overflows*,
then the complexity of insertion is O(n^2) due to all the *rehashing* needed.
### Growing the table by doubling the size
If the table size is doubled when *overfloiwng*, then the complexity for
insertion becomes linear again by sacrificing some memory complexity.