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			289 lines
		
	
	
		
			10 KiB
		
	
	
	
		
			Rust
		
	
	
	
	
	
			
		
		
	
	
			289 lines
		
	
	
		
			10 KiB
		
	
	
	
		
			Rust
		
	
	
	
	
	
| //! Edit distances.
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| //!
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| //! The [edit distance] is a metric for measuring the difference between two strings.
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| //!
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| //! [edit distance]: https://en.wikipedia.org/wiki/Edit_distance
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| 
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| // The current implementation is the restricted Damerau-Levenshtein algorithm. It is restricted
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| // because it does not permit modifying characters that have already been transposed. The specific
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| // algorithm should not matter to the caller of the methods, which is why it is not noted in the
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| // documentation.
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| 
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| use crate::symbol::Symbol;
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| use std::{cmp, mem};
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| 
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| #[cfg(test)]
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| mod tests;
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| 
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| /// Finds the [edit distance] between two strings.
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| ///
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| /// Returns `None` if the distance exceeds the limit.
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| ///
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| /// [edit distance]: https://en.wikipedia.org/wiki/Edit_distance
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| pub fn edit_distance(a: &str, b: &str, limit: usize) -> Option<usize> {
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|     let mut a = &a.chars().collect::<Vec<_>>()[..];
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|     let mut b = &b.chars().collect::<Vec<_>>()[..];
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| 
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|     // Ensure that `b` is the shorter string, minimizing memory use.
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|     if a.len() < b.len() {
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|         mem::swap(&mut a, &mut b);
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|     }
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| 
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|     let min_dist = a.len() - b.len();
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|     // If we know the limit will be exceeded, we can return early.
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|     if min_dist > limit {
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|         return None;
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|     }
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| 
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|     // Strip common prefix.
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|     while let Some(((b_char, b_rest), (a_char, a_rest))) = b.split_first().zip(a.split_first())
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|         && a_char == b_char
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|     {
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|         a = a_rest;
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|         b = b_rest;
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|     }
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|     // Strip common suffix.
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|     while let Some(((b_char, b_rest), (a_char, a_rest))) = b.split_last().zip(a.split_last())
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|         && a_char == b_char
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|     {
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|         a = a_rest;
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|         b = b_rest;
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|     }
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| 
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|     // If either string is empty, the distance is the length of the other.
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|     // We know that `b` is the shorter string, so we don't need to check `a`.
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|     if b.len() == 0 {
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|         return Some(min_dist);
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|     }
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| 
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|     let mut prev_prev = vec![usize::MAX; b.len() + 1];
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|     let mut prev = (0..=b.len()).collect::<Vec<_>>();
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|     let mut current = vec![0; b.len() + 1];
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| 
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|     // row by row
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|     for i in 1..=a.len() {
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|         current[0] = i;
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|         let a_idx = i - 1;
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| 
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|         // column by column
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|         for j in 1..=b.len() {
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|             let b_idx = j - 1;
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| 
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|             // There is no cost to substitute a character with itself.
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|             let substitution_cost = if a[a_idx] == b[b_idx] { 0 } else { 1 };
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| 
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|             current[j] = cmp::min(
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|                 // deletion
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|                 prev[j] + 1,
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|                 cmp::min(
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|                     // insertion
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|                     current[j - 1] + 1,
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|                     // substitution
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|                     prev[j - 1] + substitution_cost,
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|                 ),
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|             );
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| 
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|             if (i > 1) && (j > 1) && (a[a_idx] == b[b_idx - 1]) && (a[a_idx - 1] == b[b_idx]) {
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|                 // transposition
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|                 current[j] = cmp::min(current[j], prev_prev[j - 2] + 1);
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|             }
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|         }
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| 
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|         // Rotate the buffers, reusing the memory.
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|         [prev_prev, prev, current] = [prev, current, prev_prev];
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|     }
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| 
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|     // `prev` because we already rotated the buffers.
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|     let distance = prev[b.len()];
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|     (distance <= limit).then_some(distance)
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| }
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| 
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| /// Provides a word similarity score between two words that accounts for substrings being more
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| /// meaningful than a typical edit distance. The lower the score, the closer the match. 0 is an
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| /// identical match.
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| ///
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| /// Uses the edit distance between the two strings and removes the cost of the length difference.
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| /// If this is 0 then it is either a substring match or a full word match, in the substring match
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| /// case we detect this and return `1`. To prevent finding meaningless substrings, eg. "in" in
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| /// "shrink", we only perform this subtraction of length difference if one of the words is not
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| /// greater than twice the length of the other. For cases where the words are close in size but not
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| /// an exact substring then the cost of the length difference is discounted by half.
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| ///
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| /// Returns `None` if the distance exceeds the limit.
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| pub fn edit_distance_with_substrings(a: &str, b: &str, limit: usize) -> Option<usize> {
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|     let n = a.chars().count();
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|     let m = b.chars().count();
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| 
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|     // Check one isn't less than half the length of the other. If this is true then there is a
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|     // big difference in length.
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|     let big_len_diff = (n * 2) < m || (m * 2) < n;
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|     let len_diff = if n < m { m - n } else { n - m };
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|     let distance = edit_distance(a, b, limit + len_diff)?;
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| 
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|     // This is the crux, subtracting length difference means exact substring matches will now be 0
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|     let score = distance - len_diff;
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| 
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|     // If the score is 0 but the words have different lengths then it's a substring match not a full
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|     // word match
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|     let score = if score == 0 && len_diff > 0 && !big_len_diff {
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|         1 // Exact substring match, but not a total word match so return non-zero
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|     } else if !big_len_diff {
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|         // Not a big difference in length, discount cost of length difference
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|         score + (len_diff + 1) / 2
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|     } else {
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|         // A big difference in length, add back the difference in length to the score
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|         score + len_diff
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|     };
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| 
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|     (score <= limit).then_some(score)
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| }
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| 
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| /// Finds the best match for given word in the given iterator where substrings are meaningful.
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| ///
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| /// A version of [`find_best_match_for_name`] that uses [`edit_distance_with_substrings`] as the
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| /// score for word similarity. This takes an optional distance limit which defaults to one-third of
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| /// the given word.
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| ///
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| /// We use case insensitive comparison to improve accuracy on an edge case with a lower(upper)case
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| /// letters mismatch.
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| pub fn find_best_match_for_name_with_substrings(
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|     candidates: &[Symbol],
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|     lookup: Symbol,
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|     dist: Option<usize>,
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| ) -> Option<Symbol> {
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|     find_best_match_for_name_impl(true, candidates, lookup, dist)
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| }
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| 
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| /// Finds the best match for a given word in the given iterator.
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| ///
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| /// As a loose rule to avoid the obviously incorrect suggestions, it takes
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| /// an optional limit for the maximum allowable edit distance, which defaults
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| /// to one-third of the given word.
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| ///
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| /// We use case insensitive comparison to improve accuracy on an edge case with a lower(upper)case
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| /// letters mismatch.
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| pub fn find_best_match_for_name(
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|     candidates: &[Symbol],
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|     lookup: Symbol,
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|     dist: Option<usize>,
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| ) -> Option<Symbol> {
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|     find_best_match_for_name_impl(false, candidates, lookup, dist)
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| }
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| 
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| /// Find the best match for multiple words
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| ///
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| /// This function is intended for use when the desired match would never be
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| /// returned due to a substring in `lookup` which is superfluous.
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| ///
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| /// For example, when looking for the closest lint name to `clippy:missing_docs`,
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| /// we would find `clippy::erasing_op`, despite `missing_docs` existing and being a better suggestion.
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| /// `missing_docs` would have a larger edit distance because it does not contain the `clippy` tool prefix.
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| /// In order to find `missing_docs`, this function takes multiple lookup strings, computes the best match
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| /// for each and returns the match which had the lowest edit distance. In our example, `clippy:missing_docs` and
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| /// `missing_docs` would be `lookups`, enabling `missing_docs` to be the best match, as desired.
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| pub fn find_best_match_for_names(
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|     candidates: &[Symbol],
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|     lookups: &[Symbol],
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|     dist: Option<usize>,
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| ) -> Option<Symbol> {
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|     lookups
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|         .iter()
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|         .map(|s| (s, find_best_match_for_name_impl(false, candidates, *s, dist)))
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|         .filter_map(|(s, r)| r.map(|r| (s, r)))
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|         .min_by(|(s1, r1), (s2, r2)| {
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|             let d1 = edit_distance(s1.as_str(), r1.as_str(), usize::MAX).unwrap();
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|             let d2 = edit_distance(s2.as_str(), r2.as_str(), usize::MAX).unwrap();
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|             d1.cmp(&d2)
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|         })
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|         .map(|(_, r)| r)
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| }
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| 
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| #[cold]
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| fn find_best_match_for_name_impl(
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|     use_substring_score: bool,
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|     candidates: &[Symbol],
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|     lookup_symbol: Symbol,
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|     dist: Option<usize>,
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| ) -> Option<Symbol> {
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|     let lookup = lookup_symbol.as_str();
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|     let lookup_uppercase = lookup.to_uppercase();
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| 
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|     // Priority of matches:
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|     // 1. Exact case insensitive match
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|     // 2. Edit distance match
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|     // 3. Sorted word match
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|     if let Some(c) = candidates.iter().find(|c| c.as_str().to_uppercase() == lookup_uppercase) {
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|         return Some(*c);
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|     }
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| 
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|     // `fn edit_distance()` use `chars()` to calculate edit distance, so we must
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|     // also use `chars()` (and not `str::len()`) to calculate length here.
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|     let lookup_len = lookup.chars().count();
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| 
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|     let mut dist = dist.unwrap_or_else(|| cmp::max(lookup_len, 3) / 3);
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|     let mut best = None;
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|     // store the candidates with the same distance, only for `use_substring_score` current.
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|     let mut next_candidates = vec![];
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|     for c in candidates {
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|         match if use_substring_score {
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|             edit_distance_with_substrings(lookup, c.as_str(), dist)
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|         } else {
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|             edit_distance(lookup, c.as_str(), dist)
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|         } {
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|             Some(0) => return Some(*c),
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|             Some(d) => {
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|                 if use_substring_score {
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|                     if d < dist {
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|                         dist = d;
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|                         next_candidates.clear();
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|                     } else {
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|                         // `d == dist` here, we need to store the candidates with the same distance
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|                         // so we won't decrease the distance in the next loop.
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|                     }
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|                     next_candidates.push(*c);
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|                 } else {
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|                     dist = d - 1;
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|                 }
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|                 best = Some(*c);
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|             }
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|             None => {}
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|         }
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|     }
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| 
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|     // We have a tie among several candidates, try to select the best among them ignoring substrings.
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|     // For example, the candidates list `force_capture`, `capture`, and user inputted `forced_capture`,
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|     // we select `force_capture` with a extra round of edit distance calculation.
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|     if next_candidates.len() > 1 {
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|         debug_assert!(use_substring_score);
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|         best = find_best_match_for_name_impl(
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|             false,
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|             &next_candidates,
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|             lookup_symbol,
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|             Some(lookup.len()),
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|         );
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|     }
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|     if best.is_some() {
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|         return best;
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|     }
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| 
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|     find_match_by_sorted_words(candidates, lookup)
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| }
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| 
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| fn find_match_by_sorted_words(iter_names: &[Symbol], lookup: &str) -> Option<Symbol> {
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|     let lookup_sorted_by_words = sort_by_words(lookup);
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|     iter_names.iter().fold(None, |result, candidate| {
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|         if sort_by_words(candidate.as_str()) == lookup_sorted_by_words {
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|             Some(*candidate)
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|         } else {
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|             result
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|         }
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|     })
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| }
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| 
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| fn sort_by_words(name: &str) -> Vec<&str> {
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|     let mut split_words: Vec<&str> = name.split('_').collect();
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|     // We are sorting primitive &strs and can use unstable sort here.
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|     split_words.sort_unstable();
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|     split_words
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| }
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