package org.apache.lucene.sandbox.queries; /* * Licensed to the Apache Software Foundation (ASF) under one or more * contributor license agreements. See the NOTICE file distributed with * this work for additional information regarding copyright ownership. * The ASF licenses this file to You under the Apache License, Version 2.0 * (the "License"); you may not use this file except in compliance with * the License. You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ import java.io.IOException; import org.apache.lucene.index.Term; import org.apache.lucene.index.Terms; import org.apache.lucene.index.TermsEnum; import org.apache.lucene.index.FilteredTermsEnum; import org.apache.lucene.search.BoostAttribute; import org.apache.lucene.search.FuzzyTermsEnum; import org.apache.lucene.util.AttributeSource; import org.apache.lucene.util.BytesRef; import org.apache.lucene.util.IntsRef; import org.apache.lucene.util.StringHelper; import org.apache.lucene.util.UnicodeUtil; /** Classic fuzzy TermsEnum for enumerating all terms that are similar * to the specified filter term. * * <p>Term enumerations are always ordered by * {@link #getComparator}. Each term in the enumeration is * greater than all that precede it.</p> * * @deprecated Use {@link FuzzyTermsEnum} instead. */ @Deprecated public final class SlowFuzzyTermsEnum extends FuzzyTermsEnum { public SlowFuzzyTermsEnum(Terms terms, AttributeSource atts, Term term, float minSimilarity, int prefixLength) throws IOException { super(terms, atts, term, minSimilarity, prefixLength, false); } @Override protected void maxEditDistanceChanged(BytesRef lastTerm, int maxEdits, boolean init) throws IOException { TermsEnum newEnum = getAutomatonEnum(maxEdits, lastTerm); if (newEnum != null) { setEnum(newEnum); } else if (init) { setEnum(new LinearFuzzyTermsEnum()); } } /** * Implement fuzzy enumeration with linear brute force. */ private class LinearFuzzyTermsEnum extends FilteredTermsEnum { /* Allows us save time required to create a new array * every time similarity is called. */ private int[] d; private int[] p; // this is the text, minus the prefix private final int[] text; private final BoostAttribute boostAtt = attributes().addAttribute(BoostAttribute.class); /** * Constructor for enumeration of all terms from specified <code>reader</code> which share a prefix of * length <code>prefixLength</code> with <code>term</code> and which have a fuzzy similarity > * <code>minSimilarity</code>. * <p> * After calling the constructor the enumeration is already pointing to the first * valid term if such a term exists. * * @throws IOException If there is a low-level I/O error. */ public LinearFuzzyTermsEnum() throws IOException { super(terms.iterator(null)); this.text = new int[termLength - realPrefixLength]; System.arraycopy(termText, realPrefixLength, text, 0, text.length); final String prefix = UnicodeUtil.newString(termText, 0, realPrefixLength); prefixBytesRef = new BytesRef(prefix); this.d = new int[this.text.length + 1]; this.p = new int[this.text.length + 1]; setInitialSeekTerm(prefixBytesRef); } private final BytesRef prefixBytesRef; // used for unicode conversion from BytesRef byte[] to int[] private final IntsRef utf32 = new IntsRef(20); /** * The termCompare method in FuzzyTermEnum uses Levenshtein distance to * calculate the distance between the given term and the comparing term. */ @Override protected final AcceptStatus accept(BytesRef term) { if (StringHelper.startsWith(term, prefixBytesRef)) { UnicodeUtil.UTF8toUTF32(term, utf32); final float similarity = similarity(utf32.ints, realPrefixLength, utf32.length - realPrefixLength); if (similarity > minSimilarity) { boostAtt.setBoost((similarity - minSimilarity) * scale_factor); return AcceptStatus.YES; } else return AcceptStatus.NO; } else { return AcceptStatus.END; } } /****************************** * Compute Levenshtein distance ******************************/ /** * <p>Similarity returns a number that is 1.0f or less (including negative numbers) * based on how similar the Term is compared to a target term. It returns * exactly 0.0f when * <pre> * editDistance > maximumEditDistance</pre> * Otherwise it returns: * <pre> * 1 - (editDistance / length)</pre> * where length is the length of the shortest term (text or target) including a * prefix that are identical and editDistance is the Levenshtein distance for * the two words.</p> * * <p>Embedded within this algorithm is a fail-fast Levenshtein distance * algorithm. The fail-fast algorithm differs from the standard Levenshtein * distance algorithm in that it is aborted if it is discovered that the * minimum distance between the words is greater than some threshold. * * <p>To calculate the maximum distance threshold we use the following formula: * <pre> * (1 - minimumSimilarity) * length</pre> * where length is the shortest term including any prefix that is not part of the * similarity comparison. This formula was derived by solving for what maximum value * of distance returns false for the following statements: * <pre> * similarity = 1 - ((float)distance / (float) (prefixLength + Math.min(textlen, targetlen))); * return (similarity > minimumSimilarity);</pre> * where distance is the Levenshtein distance for the two words. * </p> * <p>Levenshtein distance (also known as edit distance) is a measure of similarity * between two strings where the distance is measured as the number of character * deletions, insertions or substitutions required to transform one string to * the other string. * @param target the target word or phrase * @return the similarity, 0.0 or less indicates that it matches less than the required * threshold and 1.0 indicates that the text and target are identical */ private final float similarity(final int[] target, int offset, int length) { final int m = length; final int n = text.length; if (n == 0) { //we don't have anything to compare. That means if we just add //the letters for m we get the new word return realPrefixLength == 0 ? 0.0f : 1.0f - ((float) m / realPrefixLength); } if (m == 0) { return realPrefixLength == 0 ? 0.0f : 1.0f - ((float) n / realPrefixLength); } final int maxDistance = calculateMaxDistance(m); if (maxDistance < Math.abs(m-n)) { //just adding the characters of m to n or vice-versa results in //too many edits //for example "pre" length is 3 and "prefixes" length is 8. We can see that //given this optimal circumstance, the edit distance cannot be less than 5. //which is 8-3 or more precisely Math.abs(3-8). //if our maximum edit distance is 4, then we can discard this word //without looking at it. return Float.NEGATIVE_INFINITY; } // init matrix d for (int i = 0; i <=n; ++i) { p[i] = i; } // start computing edit distance for (int j = 1; j<=m; ++j) { // iterates through target int bestPossibleEditDistance = m; final int t_j = target[offset+j-1]; // jth character of t d[0] = j; for (int i=1; i<=n; ++i) { // iterates through text // minimum of cell to the left+1, to the top+1, diagonally left and up +(0|1) if (t_j != text[i-1]) { d[i] = Math.min(Math.min(d[i-1], p[i]), p[i-1]) + 1; } else { d[i] = Math.min(Math.min(d[i-1]+1, p[i]+1), p[i-1]); } bestPossibleEditDistance = Math.min(bestPossibleEditDistance, d[i]); } //After calculating row i, the best possible edit distance //can be found by found by finding the smallest value in a given column. //If the bestPossibleEditDistance is greater than the max distance, abort. if (j > maxDistance && bestPossibleEditDistance > maxDistance) { //equal is okay, but not greater //the closest the target can be to the text is just too far away. //this target is leaving the party early. return Float.NEGATIVE_INFINITY; } // copy current distance counts to 'previous row' distance counts: swap p and d int _d[] = p; p = d; d = _d; } // our last action in the above loop was to switch d and p, so p now // actually has the most recent cost counts // this will return less than 0.0 when the edit distance is // greater than the number of characters in the shorter word. // but this was the formula that was previously used in FuzzyTermEnum, // so it has not been changed (even though minimumSimilarity must be // greater than 0.0) return 1.0f - ((float)p[n] / (float) (realPrefixLength + Math.min(n, m))); } /** * The max Distance is the maximum Levenshtein distance for the text * compared to some other value that results in score that is * better than the minimum similarity. * @param m the length of the "other value" * @return the maximum levenshtein distance that we care about */ private int calculateMaxDistance(int m) { return raw ? maxEdits : Math.min(maxEdits, (int)((1-minSimilarity) * (Math.min(text.length, m) + realPrefixLength))); } } }