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Trie


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@algorithm.ts/trie


A typescript implementation of the TRIE data structure.

The following definition is quoted from Wikipedia (https://en.wikipedia.org/wiki/Trie):

In computer science, a trie, also called digital tree or prefix tree, is a type of search tree, a tree data structure used for locating specific keys from within a set. These keys are most often strings, with links between nodes defined not by the entire key, but by individual characters. In order to access a key (to recover its value, change it, or remove it), the trie is traversed depth-first, following the links between nodes, which represent each character in the key.

Install

  • npm

    npm install --save @algorithm.ts/trie
    
  • yarn

    yarn add @algorithm.ts/trie
    

Usage

  • Trie

  • Util

    • digitIdx(c: string): number: Calc idx of digit character.
    • uppercaseIdx(c: string): number: Calc idx of uppercase English letter.
    • lowercaseIdx(c: string): number: Calc idx of lowercase English letter.
    • alphaNumericIdx(c: string): number: Calc idx of digit, lowercase/uppercase English leter.

Example

  • A solution of https://leetcode.com/problems/word-break-ii/:

    import type { ITrie } from '@algorithm.ts/trie'
    import { Trie, lowercaseIdx } from '@algorithm.ts/trie'
    
    const trie: ITrie<string, number> = new Trie<string, number>({
      SIGMA_SIZE: 26,
      idx: lowercaseIdx,
      mergeNodeValue: (_x, y) => y,
    })
    
    export function wordBreak(text: string, wordDict: string[]): string[] {
      if (text.length <= 0) return []
    
      trie.init()
      for (let i = 0; i < wordDict.length; ++i) {
        const word = wordDict[i]
        trie.set(word, i)
      }
    
      const N = text.length
      const results: string[] = []
      const collect: number[] = []
      dfs(0, 0)
      return results
    
      function dfs(cur: number, pos: number): void {
        if (pos === N) {
          results.push(
            collect
              .slice(0, cur)
              .map(x => wordDict[x])
              .join(' '),
          )
          return
        }
    
        for (const { end, val } of trie.findAll_advance(text, pos, text.length)) {
          collect[cur] = val
          dfs(cur + 1, end)
        }
      }
    }
    
  • A solution of https://leetcode.com/problems/word-search-ii/

    import { Trie, lowercaseIdx } from '@algorithm.ts/trie'
    
    class CustomTrie<E extends unknown[] | string, V> extends Trie<E, V> {
      public getSnapshot(): { ch: Uint32Array[]; values: Array<V | undefined> } {
        return {
          ch: this._ch,
          values: this._values,
        }
      }
    }
    
    const trie = new CustomTrie<string, number>({
      SIGMA_SIZE: 26,
      idx: lowercaseIdx,
      mergeNodeValue: (x, _y) => x,
    })
    
    export function findWords(board: string[][], words: string[]): string[] {
      const N = words.length
      const R = board.length
      const C = board[0].length
      if (N <= 0 || R <= 0 || C <= 0) return []
    
      trie.init()
      for (let i = 0; i < N; ++i) trie.set(words[i], i)
    
      const boardCode: number[][] = []
      for (let r = 0; r < R; ++r) {
        const codes: number[] = []
        for (let c = 0; c < C; ++c) codes[c] = board[r][c].charCodeAt(0) - 97
        boardCode[r] = codes
      }
    
      const visited: boolean[][] = new Array(R)
      for (let r = 0; r < R; ++r) visited[r] = new Array(C).fill(false)
    
      let matchedWordCount = 0
      const isWordMatched: boolean[] = new Array(N).fill(false)
    
      const { ch, values } = trie.getSnapshot()
      for (let r = 0; r < R; ++r) {
        for (let c = 0; c < C; ++c) {
          dfs(0, r, c)
        }
      }
    
      const results: string[] = words.filter((_w, i) => isWordMatched[i])
      return results
    
      function dfs(u: number, r: number, c: number): void {
        if (visited[r][c] || matchedWordCount === N) return
    
        const u2: number = ch[u][boardCode[r][c]]
        if (u2 === 0) return
    
        const val = values[u2]
        if (val !== undefined && !isWordMatched[val]) {
          isWordMatched[val] = true
          matchedWordCount += 1
        }
    
        visited[r][c] = true
        if (r > 0) dfs(u2, r - 1, c)
        if (c + 1 < C) dfs(u2, r, c + 1)
        if (r + 1 < R) dfs(u2, r + 1, c)
        if (c > 0) dfs(u2, r, c - 1)
        visited[r][c] = false
      }
    }
    

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Last updated on 30 Mar 2024

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