隣接するもの間の差が 1 であるような最長のサブシーケンス

隣接するもの間の差が 1 であるような最長のサブシーケンス
GfG Practice で試してみる

を与えると 配列arr[] サイズn 課題はそれを見つけることです 最長のサブシーケンス そのような 絶対差 隣接する要素 は1です。

例: 

入力: arr[] = [10 9 4 5 4 8 6]
出力: 3
説明: 長さ 3 の 3 つの可能なサブシーケンスは、[10 9 8] [4 5 4] および [4 5 6] です。ここで、隣接する要素の差の絶対値は 1 です。これより長い長さの有効なサブシーケンスは形成できません。

入力: arr[] = [1 2 3 4 5]
出力: 5
説明: すべての要素を有効なサブシーケンスに含めることができます。

再帰の使用 - O(2^n) 時間と O(n) 空間

のために 再帰的アプローチ 検討させていただきます 2つのケース 各ステップで:

  • 要素が条件 ( 絶対差 隣接する要素間の距離は 1) 含む それを後続部分で実行し、次の部分に進みます。 要素。
  • そうでなければ私たちは スキップ 現在 要素を選択して次の要素に進みます。

数学的には 再発関係 は次のようになります。

  • longestSubseq(arr idx prev) = max(longestSubseq(arr idx + 1 prev) 1 +longestSubseq(arr idx + 1 idx))

基本ケース:

  • いつ idx == arr.size() 我々は持っています 到達した 配列の終わりなので 0を返す (これ以上要素を含めることはできないため)。
C++
   // C++ program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion.   #include          using     namespace     std  ;   int     subseqHelper  (  int     idx       int     prev       vector   <  int  >&     arr  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  size  ())     {      return     0  ;      }      // Skip the current element and move to the next index      int     noTake     =     subseqHelper  (  idx     +     1       prev       arr  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -1     ||     abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ==     1  )     {          take     =     1     +     subseqHelper  (  idx     +     1       idx       arr  );      }      // Return the maximum of the two options      return     max  (  take       noTake  );   }   // Function to find the longest subsequence   int     longestSubseq  (  vector   <  int  >&     arr  )     {          // Start recursion from index 0       // with no previous element      return     subseqHelper  (  0       -1       arr  );   }   int     main  ()     {      vector   <  int  >     arr     =     {  10       9       4       5       4       8       6  };      cout      < <     longestSubseq  (  arr  );      return     0  ;   }   
Java
   // Java program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion.   import     java.util.ArrayList  ;   class   GfG     {      // Helper function to recursively find the subsequence      static     int     subseqHelper  (  int     idx       int     prev           ArrayList   <  Integer  >     arr  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  size  ())     {      return     0  ;      }      // Skip the current element and move to the next index      int     noTake     =     subseqHelper  (  idx     +     1       prev       arr  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -  1     ||     Math  .  abs  (  arr  .  get  (  idx  )         -     arr  .  get  (  prev  ))     ==     1  )     {          take     =     1     +     subseqHelper  (  idx     +     1       idx       arr  );      }      // Return the maximum of the two options      return     Math  .  max  (  take       noTake  );      }      // Function to find the longest subsequence      static     int     longestSubseq  (  ArrayList   <  Integer  >     arr  )     {      // Start recursion from index 0       // with no previous element      return     subseqHelper  (  0       -  1       arr  );      }      public     static     void     main  (  String  []     args  )     {      ArrayList   <  Integer  >     arr     =     new     ArrayList   <>  ();      arr  .  add  (  10  );      arr  .  add  (  9  );      arr  .  add  (  4  );      arr  .  add  (  5  );      arr  .  add  (  4  );      arr  .  add  (  8  );      arr  .  add  (  6  );      System  .  out  .  println  (  longestSubseq  (  arr  ));      }   }   
Python
   # Python program to find the longest subsequence such that   # the difference between adjacent elements is one using   # recursion.   def   subseq_helper  (  idx     prev     arr  ):   # Base case: if index reaches the end of the array   if   idx   ==   len  (  arr  ):   return   0   # Skip the current element and move to the next index   no_take   =   subseq_helper  (  idx   +   1     prev     arr  )   # Take the current element if the condition is met   take   =   0   if   prev   ==   -  1   or   abs  (  arr  [  idx  ]   -   arr  [  prev  ])   ==   1  :   take   =   1   +   subseq_helper  (  idx   +   1     idx     arr  )   # Return the maximum of the two options   return   max  (  take     no_take  )   def   longest_subseq  (  arr  ):   # Start recursion from index 0    # with no previous element   return   subseq_helper  (  0     -  1     arr  )   if   __name__   ==   '__main__'  :   arr   =   [  10     9     4     5     4     8     6  ]   print  (  longest_subseq  (  arr  ))   
C#
   // C# program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion.   using     System  ;   using     System.Collections.Generic  ;   class     GfG     {      // Helper function to recursively find the subsequence      static     int     SubseqHelper  (  int     idx       int     prev           List   <  int  >     arr  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  Count  )     {      return     0  ;      }      // Skip the current element and move to the next index      int     noTake     =     SubseqHelper  (  idx     +     1       prev       arr  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -  1     ||     Math  .  Abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ==     1  )     {          take     =     1     +     SubseqHelper  (  idx     +     1       idx       arr  );      }      // Return the maximum of the two options      return     Math  .  Max  (  take       noTake  );      }      // Function to find the longest subsequence      static     int     LongestSubseq  (  List   <  int  >     arr  )     {      // Start recursion from index 0       // with no previous element      return     SubseqHelper  (  0       -  1       arr  );      }      static     void     Main  (  string  []     args  )     {          List   <  int  >     arr         =     new     List   <  int  >     {     10       9       4       5       4       8       6     };      Console  .  WriteLine  (  LongestSubseq  (  arr  ));      }   }   
JavaScript
   // JavaScript program to find the longest subsequence    // such that the difference between adjacent elements    // is one using recursion.   function     subseqHelper  (  idx       prev       arr  )     {      // Base case: if index reaches the end of the array      if     (  idx     ===     arr  .  length  )     {      return     0  ;      }      // Skip the current element and move to the next index      let     noTake     =     subseqHelper  (  idx     +     1       prev       arr  );      // Take the current element if the condition is met      let     take     =     0  ;      if     (  prev     ===     -  1     ||     Math  .  abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ===     1  )     {      take     =     1     +     subseqHelper  (  idx     +     1       idx       arr  );      }      // Return the maximum of the two options      return     Math  .  max  (  take       noTake  );   }   function     longestSubseq  (  arr  )     {      // Start recursion from index 0       // with no previous element      return     subseqHelper  (  0       -  1       arr  );   }   const     arr     =     [  10       9       4       5       4       8       6  ];   console  .  log  (  longestSubseq  (  arr  ));   

出力
3 

トップダウン DP の使用(メモ化) ) -  O(n^2)  時間と  O(n^2)  空間

注意して観察すると、上記の再帰的解決策には次の 2 つの特性があることがわかります。  動的プログラミング :

1. 最適な下部構造: 次のような最長のサブシーケンスを見つけるための解決策は、 違い 隣接する要素間の要素は、より小さな部分問題の最適解から導き出すことができます。具体的には、どのような場合でも いど (現在のインデックス) と 前へ (サブシーケンス内の前のインデックス) 再帰関係は次のように表現できます。

  • subseqHelper(idx 前) = max(subseqHelper(idx + 1 前) 1 + subseqHelper(idx + 1 idx))

2. 重複する副問題: を実装するときは、 再帰的 問題を解決するアプローチでは、多くの部分問題が複数回計算されることがわかります。たとえば計算するとき subseqHelper(0 -1) 配列の場合 arr = [10 9 4 5] 副次的な問題 subseqHelper(2 -1) 計算されるかもしれない 複数 回。この繰り返しを避けるために、メモ化を使用して、以前に計算された部分問題の結果を保存します。

再帰的な解決策には以下が含まれます パラメータ:

  • いど (配列内の現在のインデックス)。
  • 前へ (サブシーケンスに含まれる最後に含まれる要素のインデックス)。

追跡する必要があります 両方のパラメータ そこで、 2次元配列メモ サイズ (n) x (n+1) 。を初期化します。 -1を付けた2次元配列メモ 部分問題がまだ計算されていないことを示します。結果を計算する前に、次の値が正しいかどうかを確認します。 メモ[idx][前+1] は -1 です。そうであれば、計算して、 結果。それ以外の場合は、保存された結果を返します。

C++
   // C++ program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion with memoization.   #include          using     namespace     std  ;   // Helper function to recursively find the subsequence   int     subseqHelper  (  int     idx       int     prev       vector   <  int  >&     arr           vector   <  vector   <  int  >>&     memo  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  size  ())     {      return     0  ;      }      // Check if the result is already computed      if     (  memo  [  idx  ][  prev     +     1  ]     !=     -1  )     {      return     memo  [  idx  ][  prev     +     1  ];      }      // Skip the current element and move to the next index      int     noTake     =     subseqHelper  (  idx     +     1       prev       arr       memo  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -1     ||     abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ==     1  )     {      take     =     1     +     subseqHelper  (  idx     +     1       idx       arr       memo  );      }      // Store the result in the memo table      return     memo  [  idx  ][  prev     +     1  ]     =     max  (  take       noTake  );   }   // Function to find the longest subsequence   int     longestSubseq  (  vector   <  int  >&     arr  )     {          int     n     =     arr  .  size  ();      // Create a memoization table initialized to -1      vector   <  vector   <  int  >>     memo  (  n       vector   <  int  >  (  n     +     1       -1  ));      // Start recursion from index 0 with no previous element      return     subseqHelper  (  0       -1       arr       memo  );   }   int     main  ()     {      // Input array of integers      vector   <  int  >     arr     =     {  10       9       4       5       4       8       6  };      cout      < <     longestSubseq  (  arr  );      return     0  ;   }   
Java
   // Java program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion with memoization.   import     java.util.ArrayList  ;   import     java.util.Arrays  ;   class   GfG     {      // Helper function to recursively find the subsequence      static     int     subseqHelper  (  int     idx       int     prev           ArrayList   <  Integer  >     arr           int  [][]     memo  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  size  ())     {      return     0  ;      }      // Check if the result is already computed      if     (  memo  [  idx  ][  prev     +     1  ]     !=     -  1  )     {      return     memo  [  idx  ][  prev     +     1  ]  ;      }      // Skip the current element and move to the next index      int     noTake     =     subseqHelper  (  idx     +     1       prev       arr       memo  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -  1     ||     Math  .  abs  (  arr  .  get  (  idx  )         -     arr  .  get  (  prev  ))     ==     1  )     {      take     =     1     +     subseqHelper  (  idx     +     1       idx       arr       memo  );      }      // Store the result in the memo table      memo  [  idx  ][  prev     +     1  ]     =     Math  .  max  (  take       noTake  );      // Return the stored result      return     memo  [  idx  ][  prev     +     1  ]  ;      }      // Function to find the longest subsequence      static     int     longestSubseq  (  ArrayList   <  Integer  >     arr  )     {      int     n     =     arr  .  size  ();      // Create a memoization table initialized to -1      int  [][]     memo     =     new     int  [  n  ][  n     +     1  ]  ;      for     (  int  []     row     :     memo  )     {      Arrays  .  fill  (  row       -  1  );      }      // Start recursion from index 0       // with no previous element      return     subseqHelper  (  0       -  1       arr       memo  );      }      public     static     void     main  (  String  []     args  )     {      ArrayList   <  Integer  >     arr     =     new     ArrayList   <>  ();      arr  .  add  (  10  );      arr  .  add  (  9  );      arr  .  add  (  4  );      arr  .  add  (  5  );      arr  .  add  (  4  );      arr  .  add  (  8  );      arr  .  add  (  6  );      System  .  out  .  println  (  longestSubseq  (  arr  ));      }   }   
Python
   # Python program to find the longest subsequence such that   # the difference between adjacent elements is one using   # recursion with memoization.   def   subseq_helper  (  idx     prev     arr     memo  ):   # Base case: if index reaches the end of the array   if   idx   ==   len  (  arr  ):   return   0   # Check if the result is already computed   if   memo  [  idx  ][  prev   +   1  ]   !=   -  1  :   return   memo  [  idx  ][  prev   +   1  ]   # Skip the current element and move to the next index   no_take   =   subseq_helper  (  idx   +   1     prev     arr     memo  )   # Take the current element if the condition is met   take   =   0   if   prev   ==   -  1   or   abs  (  arr  [  idx  ]   -   arr  [  prev  ])   ==   1  :   take   =   1   +   subseq_helper  (  idx   +   1     idx     arr     memo  )   # Store the result in the memo table   memo  [  idx  ][  prev   +   1  ]   =   max  (  take     no_take  )   # Return the stored result   return   memo  [  idx  ][  prev   +   1  ]   def   longest_subseq  (  arr  ):   n   =   len  (  arr  )   # Create a memoization table initialized to -1   memo   =   [[  -  1   for   _   in   range  (  n   +   1  )]   for   _   in   range  (  n  )]   # Start recursion from index 0 with    # no previous element   return   subseq_helper  (  0     -  1     arr     memo  )   if   __name__   ==   '__main__'  :   arr   =   [  10     9     4     5     4     8     6  ]   print  (  longest_subseq  (  arr  ))   
C#
   // C# program to find the longest subsequence such that   // the difference between adjacent elements is one using   // recursion with memoization.   using     System  ;   using     System.Collections.Generic  ;   class     GfG     {      // Helper function to recursively find the subsequence      static     int     SubseqHelper  (  int     idx       int     prev        List   <  int  >     arr       int  []     memo  )     {      // Base case: if index reaches the end of the array      if     (  idx     ==     arr  .  Count  )     {      return     0  ;      }      // Check if the result is already computed      if     (  memo  [  idx       prev     +     1  ]     !=     -  1  )     {      return     memo  [  idx       prev     +     1  ];      }      // Skip the current element and move to the next index      int     noTake     =     SubseqHelper  (  idx     +     1       prev       arr       memo  );      // Take the current element if the condition is met      int     take     =     0  ;      if     (  prev     ==     -  1     ||     Math  .  Abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ==     1  )     {      take     =     1     +     SubseqHelper  (  idx     +     1       idx       arr       memo  );      }      // Store the result in the memoization table      memo  [  idx       prev     +     1  ]     =     Math  .  Max  (  take       noTake  );      // Return the stored result      return     memo  [  idx       prev     +     1  ];      }      // Function to find the longest subsequence      static     int     LongestSubseq  (  List   <  int  >     arr  )     {          int     n     =     arr  .  Count  ;          // Create a memoization table initialized to -1      int  []     memo     =     new     int  [  n       n     +     1  ];      for     (  int     i     =     0  ;     i      <     n  ;     i  ++  )     {      for     (  int     j     =     0  ;     j      <=     n  ;     j  ++  )     {      memo  [  i       j  ]     =     -  1  ;      }      }      // Start recursion from index 0 with no previous element      return     SubseqHelper  (  0       -  1       arr       memo  );      }      static     void     Main  (  string  []     args  )     {      List   <  int  >     arr         =     new     List   <  int  >     {     10       9       4       5       4       8       6     };      Console  .  WriteLine  (  LongestSubseq  (  arr  ));      }   }   
JavaScript
   // JavaScript program to find the longest subsequence    // such that the difference between adjacent elements    // is one using recursion with memoization.   function     subseqHelper  (  idx       prev       arr       memo  )     {      // Base case: if index reaches the end of the array      if     (  idx     ===     arr  .  length  )     {      return     0  ;      }      // Check if the result is already computed      if     (  memo  [  idx  ][  prev     +     1  ]     !==     -  1  )     {      return     memo  [  idx  ][  prev     +     1  ];      }      // Skip the current element and move to the next index      let     noTake     =     subseqHelper  (  idx     +     1       prev       arr       memo  );      // Take the current element if the condition is met      let     take     =     0  ;      if     (  prev     ===     -  1     ||     Math  .  abs  (  arr  [  idx  ]     -     arr  [  prev  ])     ===     1  )     {      take     =     1     +     subseqHelper  (  idx     +     1       idx       arr       memo  );      }      // Store the result in the memoization table      memo  [  idx  ][  prev     +     1  ]     =     Math  .  max  (  take       noTake  );      // Return the stored result      return     memo  [  idx  ][  prev     +     1  ];   }   function     longestSubseq  (  arr  )     {      let     n     =     arr  .  length  ;          // Create a memoization table initialized to -1      let     memo     =      Array  .  from  ({     length  :     n     }     ()     =>     Array  (  n     +     1  ).  fill  (  -  1  ));      // Start recursion from index 0 with no previous element      return     subseqHelper  (  0       -  1       arr       memo  );   }   const     arr     =     [  10       9       4       5       4       8       6  ];   console  .  log  (  longestSubseq  (  arr  ));   

出力
3 

ボトムアップ DP (集計) の使用 -   の上)  時間と  の上)  空間

アプローチは次のようなものです 再帰的 メソッドを使用しますが、問題を再帰的に分解するのではなく、反復的に解決策を構築します。 ボトムアップ方式。
再帰を使用する代わりに、 ハッシュマップ ベースの動的計画法テーブル (dp) を保存します。 長さ 最も長いサブシーケンスの一部。これは、効率的に計算して更新するのに役立ちます。 後続 配列要素のすべての可能な値の長さ。

動的プログラミングの関係:

dp[x] を表します 長さ 要素 x で終わる最長のサブシーケンス。

あらゆる要素について 到着しました 配列内: arr[i] + 1 または ar[i] - 1 dp に存在します:

  • dp[arr[i]] = 1 + max(dp[arr[i] + 1] dp[arr[i] - 1]);

これは、で終わるサブシーケンスを拡張できることを意味します。 arr[i] + 1 または ar[i] - 1 による 含む あります。

それ以外の場合は、新しいサブシーケンスを開始します。

  • dp[arr[i]] = 1;
C++
   // C++ program to find the longest subsequence such that   // the difference between adjacent elements is one using   // Tabulation.   #include          using     namespace     std  ;   int     longestSubseq  (  vector   <  int  >&     arr  )     {          int     n     =     arr  .  size  ();      // Base case: if the array has only       // one element      if     (  n     ==     1  )     {      return     1  ;      }      // Map to store the length of the longest subsequence      unordered_map   <  int       int  >     dp  ;      int     ans     =     1  ;      // Loop through the array to fill the map      // with subsequence lengths      for     (  int     i     =     0  ;     i      <     n  ;     ++  i  )     {          // Check if the current element is adjacent      // to another subsequence      if     (  dp  .  count  (  arr  [  i  ]     +     1  )     >     0         ||     dp  .  count  (  arr  [  i  ]     -     1  )     >     0  )     {          dp  [  arr  [  i  ]]     =     1     +         max  (  dp  [  arr  [  i  ]     +     1  ]     dp  [  arr  [  i  ]     -     1  ]);      }         else     {      dp  [  arr  [  i  ]]     =     1  ;         }          // Update the result with the maximum      // subsequence length      ans     =     max  (  ans       dp  [  arr  [  i  ]]);      }      return     ans  ;   }   int     main  ()     {          vector   <  int  >     arr     =     {  10       9       4       5       4       8       6  };      cout      < <     longestSubseq  (  arr  );      return     0  ;   }   
Java
   // Java code to find the longest subsequence such that   // the difference between adjacent elements    // is one using Tabulation.   import     java.util.HashMap  ;   import     java.util.ArrayList  ;   class   GfG     {      static     int     longestSubseq  (  ArrayList   <  Integer  >     arr  )     {      int     n     =     arr  .  size  ();      // Base case: if the array has only one element      if     (  n     ==     1  )     {      return     1  ;      }      // Map to store the length of the longest subsequence      HashMap   <  Integer       Integer  >     dp     =     new     HashMap   <>  ();      int     ans     =     1  ;      // Loop through the array to fill the map       // with subsequence lengths      for     (  int     i     =     0  ;     i      <     n  ;     ++  i  )     {      // Check if the current element is adjacent       // to another subsequence      if     (  dp  .  containsKey  (  arr  .  get  (  i  )     +     1  )         ||     dp  .  containsKey  (  arr  .  get  (  i  )     -     1  ))     {      dp  .  put  (  arr  .  get  (  i  )     1     +         Math  .  max  (  dp  .  getOrDefault  (  arr  .  get  (  i  )     +     1       0  )         dp  .  getOrDefault  (  arr  .  get  (  i  )     -     1       0  )));      }         else     {      dp  .  put  (  arr  .  get  (  i  )     1  );         }      // Update the result with the maximum       // subsequence length      ans     =     Math  .  max  (  ans       dp  .  get  (  arr  .  get  (  i  )));      }      return     ans  ;      }      public     static     void     main  (  String  []     args  )     {      ArrayList   <  Integer  >     arr     =     new     ArrayList   <>  ();      arr  .  add  (  10  );      arr  .  add  (  9  );      arr  .  add  (  4  );      arr  .  add  (  5  );      arr  .  add  (  4  );      arr  .  add  (  8  );      arr  .  add  (  6  );          System  .  out  .  println  (  longestSubseq  (  arr  ));      }   }   
Python
   # Python code to find the longest subsequence such that   # the difference between adjacent elements is    # one using Tabulation.   def   longestSubseq  (  arr  ):   n   =   len  (  arr  )   # Base case: if the array has only one element   if   n   ==   1  :   return   1   # Dictionary to store the length of the    # longest subsequence   dp   =   {}   ans   =   1   for   i   in   range  (  n  ):   # Check if the current element is adjacent to    # another subsequence   if   arr  [  i  ]   +   1   in   dp   or   arr  [  i  ]   -   1   in   dp  :   dp  [  arr  [  i  ]]   =   1   +   max  (  dp  .  get  (  arr  [  i  ]   +   1     0  )    dp  .  get  (  arr  [  i  ]   -   1     0  ))   else  :   dp  [  arr  [  i  ]]   =   1   # Update the result with the maximum   # subsequence length   ans   =   max  (  ans     dp  [  arr  [  i  ]])   return   ans   if   __name__   ==   '__main__'  :   arr   =   [  10     9     4     5     4     8     6  ]   print  (  longestSubseq  (  arr  ))   
C#
   // C# code to find the longest subsequence such that   // the difference between adjacent elements    // is one using Tabulation.   using     System  ;   using     System.Collections.Generic  ;   class     GfG     {      static     int     longestSubseq  (  List   <  int  >     arr  )     {      int     n     =     arr  .  Count  ;      // Base case: if the array has only one element      if     (  n     ==     1  )     {      return     1  ;      }      // Map to store the length of the longest subsequence      Dictionary   <  int       int  >     dp     =     new     Dictionary   <  int       int  >  ();      int     ans     =     1  ;      // Loop through the array to fill the map with       // subsequence lengths      for     (  int     i     =     0  ;     i      <     n  ;     ++  i  )     {      // Check if the current element is adjacent to      // another subsequence      if     (  dp  .  ContainsKey  (  arr  [  i  ]     +     1  )     ||     dp  .  ContainsKey  (  arr  [  i  ]     -     1  ))     {      dp  [  arr  [  i  ]]     =     1     +     Math  .  Max  (  dp  .  GetValueOrDefault  (  arr  [  i  ]     +     1       0  )      dp  .  GetValueOrDefault  (  arr  [  i  ]     -     1       0  ));      }         else     {      dp  [  arr  [  i  ]]     =     1  ;         }      // Update the result with the maximum       // subsequence length      ans     =     Math  .  Max  (  ans       dp  [  arr  [  i  ]]);      }      return     ans  ;      }      static     void     Main  (  string  []     args  )     {      List   <  int  >     arr         =     new     List   <  int  >     {     10       9       4       5       4       8       6     };      Console  .  WriteLine  (  longestSubseq  (  arr  ));      }   }   
JavaScript
   // Function to find the longest subsequence such that   // the difference between adjacent elements   // is one using Tabulation.   function     longestSubseq  (  arr  )     {      const     n     =     arr  .  length  ;      // Base case: if the array has only one element      if     (  n     ===     1  )     {      return     1  ;      }      // Object to store the length of the      // longest subsequence      let     dp     =     {};      let     ans     =     1  ;      // Loop through the array to fill the object      // with subsequence lengths      for     (  let     i     =     0  ;     i      <     n  ;     i  ++  )     {      // Check if the current element is adjacent to       // another subsequence      if     ((  arr  [  i  ]     +     1  )     in     dp     ||     (  arr  [  i  ]     -     1  )     in     dp  )     {      dp  [  arr  [  i  ]]     =     1     +     Math  .  max  (  dp  [  arr  [  i  ]     +     1  ]      ||     0       dp  [  arr  [  i  ]     -     1  ]     ||     0  );      }     else     {      dp  [  arr  [  i  ]]     =     1  ;      }      // Update the result with the maximum       // subsequence length      ans     =     Math  .  max  (  ans       dp  [  arr  [  i  ]]);      }      return     ans  ;   }   const     arr     =     [  10       9       4       5       4       8       6  ];   console  .  log  (  longestSubseq  (  arr  ));   

出力
3 
クイズの作成