org.apache.lucene.search
Class Similarity

java.lang.Object
  extended by org.apache.lucene.search.Similarity
All Implemented Interfaces:
Serializable
Direct Known Subclasses:
DefaultSimilarity, SimilarityDelegator

public abstract class Similarity
extends Object
implements Serializable

Expert: Scoring API.

Similarity defines the components of Lucene scoring. Overriding computation of these components is a convenient way to alter Lucene scoring.

Suggested reading: Introduction To Information Retrieval, Chapter 6.

The following describes how Lucene scoring evolves from underlying information retrieval models to (efficient) implementation. We first brief on VSM Score, then derive from it Lucene's Conceptual Scoring Formula, from which, finally, evolves Lucene's Practical Scoring Function (the latter is connected directly with Lucene classes and methods).

Lucene combines Boolean model (BM) of Information Retrieval with Vector Space Model (VSM) of Information Retrieval - documents "approved" by BM are scored by VSM.

In VSM, documents and queries are represented as weighted vectors in a multi-dimensional space, where each distinct index term is a dimension, and weights are Tf-idf values.

VSM does not require weights to be Tf-idf values, but Tf-idf values are believed to produce search results of high quality, and so Lucene is using Tf-idf. Tf and Idf are described in more detail below, but for now, for completion, let's just say that for given term t and document (or query) x, Tf(t,x) varies with the number of occurrences of term t in x (when one increases so does the other) and idf(t) similarly varies with the inverse of the number of index documents containing term t.

VSM score of document d for query q is the Cosine Similarity of the weighted query vectors V(q) and V(d):
 

cosine-similarity(q,d)   =  
V(q) · V(d)
–––––––––
|V(q)| |V(d)|
VSM Score

 
Where V(q) · V(d) is the dot product of the weighted vectors, and |V(q)| and |V(d)| are their Euclidean norms.

Note: the above equation can be viewed as the dot product of the normalized weighted vectors, in the sense that dividing V(q) by its euclidean norm is normalizing it to a unit vector.

Lucene refines VSM score for both search quality and usability:

Under the simplifying assumption of a single field in the index, we get Lucene's Conceptual scoring formula:
 

score(q,d)   =   coord-factor(q,d) ·   query-boost(q) ·  
V(q) · V(d)
–––––––––
|V(q)|
  ·   doc-len-norm(d)   ·   doc-boost(d)
Lucene Conceptual Scoring Formula

 

The conceptual formula is a simplification in the sense that (1) terms and documents are fielded and (2) boosts are usually per query term rather than per query.

We now describe how Lucene implements this conceptual scoring formula, and derive from it Lucene's Practical Scoring Function.

For efficient score computation some scoring components are computed and aggregated in advance:

Lucene's Practical Scoring Function is derived from the above. The color codes demonstrate how it relates to those of the conceptual formula:

score(q,d)   =   coord(q,d)  ·  queryNorm(q)  ·  ( tf(t in d)  ·  idf(t)2  ·  t.getBoost() ·  norm(t,d) )
t in q
Lucene Practical Scoring Function

where

  1. tf(t in d) correlates to the term's frequency, defined as the number of times term t appears in the currently scored document d. Documents that have more occurrences of a given term receive a higher score. Note that tf(t in q) is assumed to be 1 and therefore it does not appear in this equation, However if a query contains twice the same term, there will be two term-queries with that same term and hence the computation would still be correct (although not very efficient). The default computation for tf(t in d) in DefaultSimilarity is:
     
    tf(t in d)   =   frequency½

     
  2. idf(t) stands for Inverse Document Frequency. This value correlates to the inverse of docFreq (the number of documents in which the term t appears). This means rarer terms give higher contribution to the total score. idf(t) appears for t in both the query and the document, hence it is squared in the equation. The default computation for idf(t) in DefaultSimilarity is:
     
    idf(t)  =   1 + log (
    numDocs
    –––––––––
    docFreq+1
    )

     
  3. coord(q,d) is a score factor based on how many of the query terms are found in the specified document. Typically, a document that contains more of the query's terms will receive a higher score than another document with fewer query terms. This is a search time factor computed in coord(q,d) by the Similarity in effect at search time.
     
  4. queryNorm(q) is a normalizing factor used to make scores between queries comparable. This factor does not affect document ranking (since all ranked documents are multiplied by the same factor), but rather just attempts to make scores from different queries (or even different indexes) comparable. This is a search time factor computed by the Similarity in effect at search time. The default computation in DefaultSimilarity produces a Euclidean norm:
     
    queryNorm(q)   =   queryNorm(sumOfSquaredWeights)   =  
    1
    ––––––––––––––
    sumOfSquaredWeights½

     
    The sum of squared weights (of the query terms) is computed by the query Weight object. For example, a boolean query computes this value as:
     
    sumOfSquaredWeights   =   q.getBoost() 2  ·  ( idf(t)  ·  t.getBoost() ) 2
    t in q

     
  5. t.getBoost() is a search time boost of term t in the query q as specified in the query text (see query syntax), or as set by application calls to setBoost(). Notice that there is really no direct API for accessing a boost of one term in a multi term query, but rather multi terms are represented in a query as multi TermQuery objects, and so the boost of a term in the query is accessible by calling the sub-query getBoost().
     
  6. norm(t,d) encapsulates a few (indexing time) boost and length factors:

    When a document is added to the index, all the above factors are multiplied. If the document has multiple fields with the same name, all their boosts are multiplied together:
     

    norm(t,d)   =   doc.getBoost()  ·  lengthNorm(field)  ·  f.getBoost()
    field f in d named as t

     
    However the resulted norm value is encoded as a single byte before being stored. At search time, the norm byte value is read from the index directory and decoded back to a float norm value. This encoding/decoding, while reducing index size, comes with the price of precision loss - it is not guaranteed that decode(encode(x)) = x. For instance, decode(encode(0.89)) = 0.75.
     
    Compression of norm values to a single byte saves memory at search time, because once a field is referenced at search time, its norms - for all documents - are maintained in memory.
     
    The rationale supporting such lossy compression of norm values is that given the difficulty (and inaccuracy) of users to express their true information need by a query, only big differences matter.
     
    Last, note that search time is too late to modify this norm part of scoring, e.g. by using a different Similarity for search.
     

See Also:
setDefault(Similarity), IndexWriter.setSimilarity(Similarity), Searcher.setSimilarity(Similarity), Serialized Form

Field Summary
static int NO_DOC_ID_PROVIDED
           
 
Constructor Summary
Similarity()
           
 
Method Summary
 float computeNorm(String field, FieldInvertState state)
          Compute the normalization value for a field, given the accumulated state of term processing for this field (see FieldInvertState).
abstract  float coord(int overlap, int maxOverlap)
          Computes a score factor based on the fraction of all query terms that a document contains.
static float decodeNorm(byte b)
          Decodes a normalization factor stored in an index.
static byte encodeNorm(float f)
          Encodes a normalization factor for storage in an index.
static Similarity getDefault()
          Return the default Similarity implementation used by indexing and search code.
static float[] getNormDecoder()
          Returns a table for decoding normalization bytes.
abstract  float idf(int docFreq, int numDocs)
          Computes a score factor based on a term's document frequency (the number of documents which contain the term).
 Explanation.IDFExplanation idfExplain(Collection<Term> terms, Searcher searcher)
          Computes a score factor for a phrase.
 Explanation.IDFExplanation idfExplain(Term term, Searcher searcher)
          Computes a score factor for a simple term and returns an explanation for that score factor.
abstract  float lengthNorm(String fieldName, int numTokens)
          Computes the normalization value for a field given the total number of terms contained in a field.
abstract  float queryNorm(float sumOfSquaredWeights)
          Computes the normalization value for a query given the sum of the squared weights of each of the query terms.
 float scorePayload(int docId, String fieldName, int start, int end, byte[] payload, int offset, int length)
          Calculate a scoring factor based on the data in the payload.
static void setDefault(Similarity similarity)
          Set the default Similarity implementation used by indexing and search code.
abstract  float sloppyFreq(int distance)
          Computes the amount of a sloppy phrase match, based on an edit distance.
abstract  float tf(float freq)
          Computes a score factor based on a term or phrase's frequency in a document.
 float tf(int freq)
          Computes a score factor based on a term or phrase's frequency in a document.
 
Methods inherited from class java.lang.Object
clone, equals, finalize, getClass, hashCode, notify, notifyAll, toString, wait, wait, wait
 

Field Detail

NO_DOC_ID_PROVIDED

public static final int NO_DOC_ID_PROVIDED
See Also:
Constant Field Values
Constructor Detail

Similarity

public Similarity()
Method Detail

setDefault

public static void setDefault(Similarity similarity)
Set the default Similarity implementation used by indexing and search code.

See Also:
Searcher.setSimilarity(Similarity), IndexWriter.setSimilarity(Similarity)

getDefault

public static Similarity getDefault()
Return the default Similarity implementation used by indexing and search code.

This is initially an instance of DefaultSimilarity.

See Also:
Searcher.setSimilarity(Similarity), IndexWriter.setSimilarity(Similarity)

decodeNorm

public static float decodeNorm(byte b)
Decodes a normalization factor stored in an index.

See Also:
encodeNorm(float)

getNormDecoder

public static float[] getNormDecoder()
Returns a table for decoding normalization bytes.

See Also:
encodeNorm(float)

computeNorm

public float computeNorm(String field,
                         FieldInvertState state)
Compute the normalization value for a field, given the accumulated state of term processing for this field (see FieldInvertState).

Implementations should calculate a float value based on the field state and then return that value.

For backward compatibility this method by default calls lengthNorm(String, int) passing FieldInvertState.getLength() as the second argument, and then multiplies this value by FieldInvertState.getBoost().

WARNING: This API is new and experimental and may suddenly change.

Parameters:
field - field name
state - current processing state for this field
Returns:
the calculated float norm

lengthNorm

public abstract float lengthNorm(String fieldName,
                                 int numTokens)
Computes the normalization value for a field given the total number of terms contained in a field. These values, together with field boosts, are stored in an index and multipled into scores for hits on each field by the search code.

Matches in longer fields are less precise, so implementations of this method usually return smaller values when numTokens is large, and larger values when numTokens is small.

Note that the return values are computed under IndexWriter.addDocument(org.apache.lucene.document.Document) and then stored using encodeNorm(float). Thus they have limited precision, and documents must be re-indexed if this method is altered.

Parameters:
fieldName - the name of the field
numTokens - the total number of tokens contained in fields named fieldName of doc.
Returns:
a normalization factor for hits on this field of this document
See Also:
AbstractField.setBoost(float)

queryNorm

public abstract float queryNorm(float sumOfSquaredWeights)
Computes the normalization value for a query given the sum of the squared weights of each of the query terms. This value is multiplied into the weight of each query term. While the classic query normalization factor is computed as 1/sqrt(sumOfSquaredWeights), other implementations might completely ignore sumOfSquaredWeights (ie return 1).

This does not affect ranking, but the default implementation does make scores from different queries more comparable than they would be by eliminating the magnitude of the Query vector as a factor in the score.

Parameters:
sumOfSquaredWeights - the sum of the squares of query term weights
Returns:
a normalization factor for query weights

encodeNorm

public static byte encodeNorm(float f)
Encodes a normalization factor for storage in an index.

The encoding uses a three-bit mantissa, a five-bit exponent, and the zero-exponent point at 15, thus representing values from around 7x10^9 to 2x10^-9 with about one significant decimal digit of accuracy. Zero is also represented. Negative numbers are rounded up to zero. Values too large to represent are rounded down to the largest representable value. Positive values too small to represent are rounded up to the smallest positive representable value.

See Also:
AbstractField.setBoost(float), SmallFloat

tf

public float tf(int freq)
Computes a score factor based on a term or phrase's frequency in a document. This value is multiplied by the idf(int, int) factor for each term in the query and these products are then summed to form the initial score for a document.

Terms and phrases repeated in a document indicate the topic of the document, so implementations of this method usually return larger values when freq is large, and smaller values when freq is small.

The default implementation calls tf(float).

Parameters:
freq - the frequency of a term within a document
Returns:
a score factor based on a term's within-document frequency

sloppyFreq

public abstract float sloppyFreq(int distance)
Computes the amount of a sloppy phrase match, based on an edit distance. This value is summed for each sloppy phrase match in a document to form the frequency that is passed to tf(float).

A phrase match with a small edit distance to a document passage more closely matches the document, so implementations of this method usually return larger values when the edit distance is small and smaller values when it is large.

Parameters:
distance - the edit distance of this sloppy phrase match
Returns:
the frequency increment for this match
See Also:
PhraseQuery.setSlop(int)

tf

public abstract float tf(float freq)
Computes a score factor based on a term or phrase's frequency in a document. This value is multiplied by the idf(int, int) factor for each term in the query and these products are then summed to form the initial score for a document.

Terms and phrases repeated in a document indicate the topic of the document, so implementations of this method usually return larger values when freq is large, and smaller values when freq is small.

Parameters:
freq - the frequency of a term within a document
Returns:
a score factor based on a term's within-document frequency

idfExplain

public Explanation.IDFExplanation idfExplain(Term term,
                                             Searcher searcher)
                                      throws IOException
Computes a score factor for a simple term and returns an explanation for that score factor.

The default implementation uses:

 idf(searcher.docFreq(term), searcher.maxDoc());
 
Note that Searcher.maxDoc() is used instead of IndexReader#numDocs() because also Searcher.docFreq(Term) is used, and when the latter is inaccurate, so is Searcher.maxDoc(), and in the same direction. In addition, Searcher.maxDoc() is more efficient to compute

Parameters:
term - the term in question
searcher - the document collection being searched
Returns:
an IDFExplain object that includes both an idf score factor and an explanation for the term.
Throws:
IOException

idfExplain

public Explanation.IDFExplanation idfExplain(Collection<Term> terms,
                                             Searcher searcher)
                                      throws IOException
Computes a score factor for a phrase.

The default implementation sums the idf factor for each term in the phrase.

Parameters:
terms - the terms in the phrase
searcher - the document collection being searched
Returns:
an IDFExplain object that includes both an idf score factor for the phrase and an explanation for each term.
Throws:
IOException

idf

public abstract float idf(int docFreq,
                          int numDocs)
Computes a score factor based on a term's document frequency (the number of documents which contain the term). This value is multiplied by the tf(int) factor for each term in the query and these products are then summed to form the initial score for a document.

Terms that occur in fewer documents are better indicators of topic, so implementations of this method usually return larger values for rare terms, and smaller values for common terms.

Parameters:
docFreq - the number of documents which contain the term
numDocs - the total number of documents in the collection
Returns:
a score factor based on the term's document frequency

coord

public abstract float coord(int overlap,
                            int maxOverlap)
Computes a score factor based on the fraction of all query terms that a document contains. This value is multiplied into scores.

The presence of a large portion of the query terms indicates a better match with the query, so implementations of this method usually return larger values when the ratio between these parameters is large and smaller values when the ratio between them is small.

Parameters:
overlap - the number of query terms matched in the document
maxOverlap - the total number of terms in the query
Returns:
a score factor based on term overlap with the query

scorePayload

public float scorePayload(int docId,
                          String fieldName,
                          int start,
                          int end,
                          byte[] payload,
                          int offset,
                          int length)
Calculate a scoring factor based on the data in the payload. Overriding implementations are responsible for interpreting what is in the payload. Lucene makes no assumptions about what is in the byte array.

The default implementation returns 1.

Parameters:
docId - The docId currently being scored. If this value is NO_DOC_ID_PROVIDED, then it should be assumed that the PayloadQuery implementation does not provide document information
fieldName - The fieldName of the term this payload belongs to
start - The start position of the payload
end - The end position of the payload
payload - The payload byte array to be scored
offset - The offset into the payload array
length - The length in the array
Returns:
An implementation dependent float to be used as a scoring factor


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