• [LintCode] Palindrome Partitioning II


    Given a string s, cut s into some substrings such that every substring is a palindrome.

    Return the minimum cuts needed for a palindrome partitioning of s.

    Example

    Given s = "aab",

    Return 1 since the palindrome partitioning ["aa", "b"] could be produced using 1 cut.

    Solution 1. Recursion and backtracking

    A straightforward solution is to check all valid partitions and get the minimum cut.

    1. First fix a substring and check if palindromic, if it is, add this substring to a list and 

    recursively partition the rest of the string.

    2. After the entire string is partitioned, update the min cut if necessary.

    3. Backtrack to check other valid partitions. 

    Efficiency: This algorithm is very inefficient for the following two reasons.

    1. The same subproblem is computed redundantly. 

      The following recursion tree shows this.

                "aabbc"

         "abbc"              "bbc"            

       "bbc" 

     2.  Substring palindrome check does not use smaller substring's check result.

           For string "abcd",  if we've checked "bc" is not palindromic, then for sure 

      "abcd" is not palindromic. isPalindorme() does the O(n) check for all substrings,

      not using previous check results. 

     1 public class Solution {
     2     public int minCut(String s) {
     3         if(s == null || s.length() == 0)
     4         {
     5             return -1;
     6         }
     7         ArrayList<Integer> minCut = new ArrayList<Integer>(1);
     8         minCut.add(s.length() - 1);
     9         
    10         minCutHelper(minCut, new ArrayList<String>(), s, 0);
    11 
    12         return minCut.get(0);
    13     }
    14     
    15     private void minCutHelper(ArrayList<Integer> currMinCut, 
    16                               List<String> curr,
    17                               String s, 
    18                               int startIdx)
    19     {
    20         if(curr.size() > 0 && startIdx >= s.length())
    21         {
    22             if((curr.size() - 1) < currMinCut.get(0))
    23             {
    24                 currMinCut.set(0, curr.size() - 1);
    25             }
    26             return;
    27         }
    28         
    29         for(int i = startIdx; i < s.length(); i++)
    30         {
    31             if(isPalindrome(s, startIdx, i))
    32             {
    33                 curr.add(s.substring(startIdx, i + 1));
    34                 minCutHelper(currMinCut, curr, s, i + 1);
    35                 curr.remove(curr.size() - 1);
    36             }
    37         }
    38     }
    39     
    40     private boolean isPalindrome(String str, int left, int right)
    41     {
    42         while(left <= right)
    43         {
    44             if(str.charAt(left) != str.charAt(right))
    45             {
    46                 return false;
    47             }
    48             left++;
    49             right--;
    50         }
    51         return true;
    52     }
    53 }

    Solution 2. Dynamic Programming

    To address the two performance issues in solution 1, we make some time-space tradeoff.

    State:

    pal[i][j] stores if s[i....j] is palindromic or not. 

    minCuts[i] stores the minimal cuts needed to partition substring s[0....i].

    Initialization:

    pa[i][i] = true, as one character is palindromic.

    pa[i][i + 1] = s.charAt(i) == s.charAt(i + 1).

    minCuts[i] = i, as the most cuts for a string of length i + 1 is i. 

    Function:

    pal[i][j] = pal[i + 1][j - 1] && s.charAt(i) == s.charAt(j);  compute the result of shorter length substrings first, as they will be used to compute longer substrings' result.

    For a given substring s[0...j], we check all possible partitions.

    If pal[i][j] == true, s[i....j] is a valid palindromic partition, then the problem of s[0...j] can be reduced to s[0... i - 1] + 1, 1 represents the partition of s[i][j].

      a.  if i == 0, if s[0...j] is palindromic, then no cut is needed for s[0...j].

            minCuts[j] = 0;

      b.  if i > 0, 

         minCuts[j] = Math.min(minCuts[j], minCuts[i - 1] + 1), i is from 1 to j;

     1 public class Solution {
     2     public int minCut(String s) {
     3         if(s == null || s.length() <= 1){
     4             return 0;
     5         }    
     6         int len = s.length();
     7         int[] minCuts = new int[len];
     8         boolean[][] pal = new boolean[len][len];
     9         for (int i = 0; i < len; i++) {
    10             pal[i][i] = true;
    11         }
    12         for (int i = 0; i < len - 1; i++) {
    13             pal[i][i + 1] = (s.charAt(i) == s.charAt(i + 1));
    14         }
    15         for(int i = 0; i < len; i++){
    16             minCuts[i] = i;
    17         }
    18         for (int i = len - 3; i >= 0; i--) {
    19             for (int j = i + 2; j < len; j++) {
    20                 pal[i][j] = pal[i + 1][j - 1] && s.charAt(i) == s.charAt(j);
    21             }
    22         }
    23         for(int i = 0; i < len; i++){
    24             for(int j = 0; j <= i; j++){
    25                 if(pal[j][i]){
    26                     if(j == 0){
    27                         minCuts[i] = 0;
    28                     }
    29                     else{
    30                         minCuts[i] = Math.min(minCuts[i], minCuts[j - 1] + 1);
    31                     }
    32                 }
    33             }
    34         }
    35         return minCuts[len - 1];
    36     }
    37 }

    The above dp uses a 1D array minCuts[i] to store min cut of substring s[0....i].  

    This is similar with Text Justification and Word Break.

    Text Justification:  minCost[i] = min { minCost[j] + cost[j + 1][i] }

    Word Break:  dp[i] = dp[i - lastWordLen] && dict.contains(s.substring(i - lastWordLen, i));  

          dp[i]: if s[0....... i - 1] can be broken into words in dict.

    Related Problems 

    Wiggle Sort II

    Palindrome Partitioning 

    Longest Palindromic Substring

  • 相关阅读:
    ActiveMq C#客户端 消息队列的使用(存和取)
    .NET中RabbitMQ的使用
    如何写入和读取从 Microsoft 消息队列在 Visual C#
    完整的站内搜索Demo(Lucene.Net+盘古分词)
    最大熵,熵,MLE的解释,还行
    JavaScript是如何工作的: CSS 和 JS 动画底层原理及如何优化它们的性能
    Fundebug发布Vue插件,简化BUG监控接入代码
    Spring Boot统一异常处理实践
    预计2019年发布的Vue3.0到底有什么不一样的地方?
    开源前端脚本错误监控及跟踪解决项目BadJS试用
  • 原文地址:https://www.cnblogs.com/lz87/p/7432883.html
Copyright © 2020-2023  润新知