晋太元中,武陵人捕鱼为业。缘溪行,忘路之远近。忽逢桃花林,夹岸数百步,中无杂树,芳草鲜美,落英缤纷。渔人甚异之,复前行,欲穷其林。   林尽水源,便得一山,山有小口,仿佛若有光。便舍船,从口入。初极狭,才通人。复行数十步,豁然开朗。土地平旷,屋舍俨然,有良田、美池、桑竹之属。阡陌交通,鸡犬相闻。其中往来种作,男女衣着,悉如外人。黄发垂髫,并怡然自乐。   见渔人,乃大惊,问所从来。具答之。便要还家,设酒杀鸡作食。村中闻有此人,咸来问讯。自云先世避秦时乱,率妻子邑人来此绝境,不复出焉,遂与外人间隔。问今是何世,乃不知有汉,无论魏晋。此人一一为具言所闻,皆叹惋。余人各复延至其家,皆出酒食。停数日,辞去。此中人语云:“不足为外人道也。”(间隔 一作:隔绝)   既出,得其船,便扶向路,处处志之。及郡下,诣太守,说如此。太守即遣人随其往,寻向所志,遂迷,不复得路。   南阳刘子骥,高尚士也,闻之,欣然规往。未果,寻病终。后遂无问津者。 sh-3ll

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Current File : //opt/alt/ruby32/share/gems/gems/bundler-2.4.19/lib/bundler/similarity_detector.rb
# frozen_string_literal: true

module Bundler
  class SimilarityDetector
    SimilarityScore = Struct.new(:string, :distance)

    # initialize with an array of words to be matched against
    def initialize(corpus)
      @corpus = corpus
    end

    # return an array of words similar to 'word' from the corpus
    def similar_words(word, limit = 3)
      words_by_similarity = @corpus.map {|w| SimilarityScore.new(w, levenshtein_distance(word, w)) }
      words_by_similarity.select {|s| s.distance <= limit }.sort_by(&:distance).map(&:string)
    end

    # return the result of 'similar_words', concatenated into a list
    # (eg "a, b, or c")
    def similar_word_list(word, limit = 3)
      words = similar_words(word, limit)
      if words.length == 1
        words[0]
      elsif words.length > 1
        [words[0..-2].join(", "), words[-1]].join(" or ")
      end
    end

    protected

    # https://www.informit.com/articles/article.aspx?p=683059&seqNum=36
    def levenshtein_distance(this, that, ins = 2, del = 2, sub = 1)
      # ins, del, sub are weighted costs
      return nil if this.nil?
      return nil if that.nil?
      dm = [] # distance matrix

      # Initialize first row values
      dm[0] = (0..this.length).collect {|i| i * ins }
      fill = [0] * (this.length - 1)

      # Initialize first column values
      (1..that.length).each do |i|
        dm[i] = [i * del, fill.flatten]
      end

      # populate matrix
      (1..that.length).each do |i|
        (1..this.length).each do |j|
          # critical comparison
          dm[i][j] = [
            dm[i - 1][j - 1] + (this[j - 1] == that[i - 1] ? 0 : sub),
            dm[i][j - 1] + ins,
            dm[i - 1][j] + del,
          ].min
        end
      end

      # The last value in matrix is the Levenshtein distance between the strings
      dm[that.length][this.length]
    end
  end
end