csdn_spider/blog/ds19991999/原创-- 算法图解笔记.md

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# 原创
算法图解笔记
# 算法图解笔记
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#### 目录
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### 算法简介
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二分法查找,输入一个**有序列表**返回元素位置或null。<br/> 一般而言,<strong>对于包含n个元素的列表用二分法查找最多需要
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l
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o
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g
2
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n
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log_2 n
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log2n</strong>
```
def binary_search(list, item):
low = 0
high = len(list) - 1
while low &lt;= high:
mid = (low + high) // 2
if list[mid] == item:
return mid
elif list[mid] &gt; item:
high = mid - 1
else:
low = mid + 1
return None
```
[binary_search.py](binary_search.py)
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### 选择排序
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由于数组的结构在内存中是连续的,添加新元素十分麻烦,链表的优势在于插入新元素;<br/> 数组的优势在于元素的随机访问。也就是说**数组和链表在插入和读取元素的时间复杂度刚好互补**。<br/> [selectSort](selectSort.py)
```
def findSmallest(arr):
smallest = arr[0]
smallest_index = 0
for i in range(1,len(arr)):
if arr[i] &lt; smallest:
smallest = arr[i]
smallest_index = i
return smallest_index
def selectSort(arr):
newArr = []
for i in xrange(len(arr)):
smallest = findSmallest(arr)
newArr.append(arr.pop(smallest))
return newArr
```
我的写法
```
def selectSort2(arr):
n = len(arr)
for i in range(n):
for j in range(i, n):
if arr[j] &lt; arr[i]:
arr[i], arr[j] = arr[j], arr[i]
return arr
```
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时间复杂度为
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O
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(
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n
2
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)
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O(n^2)
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O(n2)
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### 递归
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>
递归函数要有基线条件和递归条件,否则会无限循环.
看一个阶乘函数的实现:
```
def fact(x):
if x == 1:return 1
else: return x*fact(x-1)
```
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### 快速排序
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快速排序是分而治之的策略[quickSort](quickSort.py)
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#### 分而治之
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```
def quickSort(arr):
if len(arr)&lt;2:
return arr
else:
pivot = arr[0]
less = [i for i in arr[1:] if i &lt;= pivot]
greater = [i for i in arr[1:] if i &gt; pivot]
return quickSort(less)+[pivot]+quickSort(greater)
```
这么看来比严版快排好理解多了,严版是用两个指针和一个基准值将数组划分成两部分,可以说时间复杂度确实小了不少。
```
def quickSort2(arr, left, right):
if left&gt;=right:
return arr
low = left
high = right
key = arr[left]
while left &lt; right:
while left &lt; right and arr[right] &gt;= key:
right -= 1
arr[left] = arr[right]
while left &lt; right and arr[left] &lt;= key:
left += 1
arr[right] = arr[left]
arr[left] = key
quickSort2(arr, low, left-1)
quickSort2(arr, left+1, high)
return arr
```
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### 散列表
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散列函数将输入映射到数字。它必须是一致的它将不同的输入映射到不同的数字。Python实现了散列表的实现——字典。<br/> 散列表是提供DNS解析这种功能的方式之一。
一个简单的投票:
```
voted = {}
def check_voter(name):
if voted.get(name):
print "kick them out!"
else:
voted[name] = True
print "let them vote!"
```
将散列表用作缓存,缓存是一种常用的加速方式,缓存的数据则存储在散列表中。
```
cache = {}
def get_page(url):
if cache.get(url):
return cache[url]
else:
data = get_data_from_server(url)
cache[url] = data
return data
```
冲突的解决方法:将两个键映射到同一个位置,就在这个位置存储一个链表。为避免冲突,需要好的散列函数和较低的填充因子。
填装因子=散列表包含的元素数/位置总数一旦填充因子大于0.7,就开始调整撒列表长度。
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在平均条件下,散列表的时间复杂度为
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O
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(
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1
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)
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O(1)
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O(1),在最糟糕的情况下,时间复杂度为
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O
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(
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n
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)
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O(n)
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O(n)
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### 广度优先搜索
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图由节点——边组成。可以通过散列表将节点映射到其所有邻居,散列表是无序的。
```
graph = {}
graph["you"] = ["alice", "bob", "claire"]
graph["alice"] = ["peggy", "anuj"]
...
```
创建一个队列,用于存储要检查的人,从队列中弹出一个人,检查他是否是芒果销售商,否的坏将这个人所有的另据加入队列。
```
from collections import deque
search_deque = deque()
search_deque += graph["you"]
def person_is_seller(name):
return name[-1] == "m"
while search_deque:
person = search_deque.popleft()
if person_is_seller(persson):
return True
else:
search_deque += graph[person]
return False
```
但是这种方法有缺陷,检查会有重复。应该检查完一个人,就将其标记。
```
def search(name):
search_queue = deque()
search_queue += graph[name]
searched = []
while search_queue:
person = search_queue.popleft()
if not person in searched:
if person_is_seller(persson):
return True
else:
search_queue += graph[person]
searched.append(person)
return False
```
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时间复杂度为
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O
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(
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V
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+
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E
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)
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O(V+E)
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O(V+E)边数和人数
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### 狄克斯特拉算法
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```
def find_lowest_cost_node(costs):
lowest_cost = float("inf")
lowest_cost_node = None
for node in costs:
cost = costs[node]
if cost &lt; lowest_cost and node not in processed:
lowest_cost = cost
lowest_cost_node = node
return lowest_cost_node
```
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### 贪婪算法
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就是每步都选择最优解,最终得到全局的最优解。
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#### NP完全问题
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### 动态规划
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与上一章对应,贪婪算法得到的可能不是最优解,而动态规划可以得到最优解。动态规划先解决子问题,再逐步解决大问题。