Package | Description |
---|---|
org.apache.lucene.index |
Code to maintain and access indices.
|
org.apache.lucene.search |
Code to search indices.
|
org.apache.lucene.search.similarities |
This package contains the various ranking models that can be used in Lucene.
|
org.apache.lucene.search.spans |
The calculus of spans.
|
Modifier and Type | Field and Description |
---|---|
protected Similarity |
LiveIndexWriterConfig.similarity
Similarity to use when encoding norms. |
Modifier and Type | Method and Description |
---|---|
Similarity |
LiveIndexWriterConfig.getSimilarity()
Expert: returns the
Similarity implementation used by this
IndexWriter . |
Similarity |
IndexWriterConfig.getSimilarity() |
Modifier and Type | Method and Description |
---|---|
IndexWriterConfig |
IndexWriterConfig.setSimilarity(Similarity similarity)
Expert: set the
Similarity implementation used by this IndexWriter. |
Modifier and Type | Method and Description |
---|---|
static Similarity |
IndexSearcher.getDefaultSimilarity()
Expert: returns a default Similarity instance.
|
Similarity |
IndexSearcher.getSimilarity(boolean needsScores)
Expert: Get the
Similarity to use to compute scores. |
Modifier and Type | Method and Description |
---|---|
void |
IndexSearcher.setSimilarity(Similarity similarity)
Expert: Set the Similarity implementation used by this IndexSearcher.
|
Modifier and Type | Class and Description |
---|---|
class |
Axiomatic
Axiomatic approaches for IR.
|
class |
AxiomaticF1EXP
F1EXP is defined as Sum(tf(term_doc_freq)*ln(docLen)*IDF(term))
where IDF(t) = pow((N+1)/df(t), k) N=total num of docs, df=doc freq
|
class |
AxiomaticF1LOG
F1LOG is defined as Sum(tf(term_doc_freq)*ln(docLen)*IDF(term))
where IDF(t) = ln((N+1)/df(t)) N=total num of docs, df=doc freq
|
class |
AxiomaticF2EXP
F2EXP is defined as Sum(tfln(term_doc_freq, docLen)*IDF(term))
where IDF(t) = pow((N+1)/df(t), k) N=total num of docs, df=doc freq
|
class |
AxiomaticF2LOG
F2EXP is defined as Sum(tfln(term_doc_freq, docLen)*IDF(term))
where IDF(t) = ln((N+1)/df(t)) N=total num of docs, df=doc freq
|
class |
AxiomaticF3EXP
F2EXP is defined as Sum(tf(term_doc_freq)*IDF(term)-gamma(docLen, queryLen))
where IDF(t) = pow((N+1)/df(t), k) N=total num of docs, df=doc freq
gamma(docLen, queryLen) = (docLen-queryLen)*queryLen*s/avdl
|
class |
AxiomaticF3LOG
F2EXP is defined as Sum(tf(term_doc_freq)*IDF(term)-gamma(docLen, queryLen))
where IDF(t) = ln((N+1)/df(t)) N=total num of docs, df=doc freq
gamma(docLen, queryLen) = (docLen-queryLen)*queryLen*s/avdl
|
class |
BM25Similarity
BM25 Similarity.
|
class |
BooleanSimilarity
Simple similarity that gives terms a score that is equal to their query
boost.
|
class |
ClassicSimilarity
Expert: Default scoring implementation which
encodes norm values as a single byte before being stored. |
class |
DFISimilarity
Implements the Divergence from Independence (DFI) model based on Chi-square statistics
(i.e., standardized Chi-squared distance from independence in term frequency tf).
|
class |
DFRSimilarity
Implements the divergence from randomness (DFR) framework
introduced in Gianni Amati and Cornelis Joost Van Rijsbergen.
|
class |
IBSimilarity
Provides a framework for the family of information-based models, as described
in Stéphane Clinchant and Eric Gaussier.
|
class |
LMDirichletSimilarity
Bayesian smoothing using Dirichlet priors.
|
class |
LMJelinekMercerSimilarity
Language model based on the Jelinek-Mercer smoothing method.
|
class |
LMSimilarity
Abstract superclass for language modeling Similarities.
|
class |
MultiSimilarity
Implements the CombSUM method for combining evidence from multiple
similarity values described in: Joseph A.
|
class |
PerFieldSimilarityWrapper
Provides the ability to use a different
Similarity for different fields. |
class |
SimilarityBase
A subclass of
Similarity that provides a simplified API for its
descendants. |
class |
TFIDFSimilarity
Implementation of
Similarity with the Vector Space Model. |
Modifier and Type | Field and Description |
---|---|
protected Similarity |
PerFieldSimilarityWrapper.defaultSim
Default similarity used for query norm and coordination factors.
|
protected Similarity[] |
MultiSimilarity.sims
the sub-similarities used to create the combined score
|
Modifier and Type | Method and Description |
---|---|
abstract Similarity |
PerFieldSimilarityWrapper.get(String name)
Returns a
Similarity for scoring a field. |
Constructor and Description |
---|
MultiSimilarity(Similarity[] sims)
Creates a MultiSimilarity which will sum the scores
of the provided
sims . |
PerFieldSimilarityWrapper(Similarity defaultSim)
Constructor taking a default similarity for all non-field specific calculations.
|
Modifier and Type | Field and Description |
---|---|
protected Similarity |
SpanWeight.similarity |
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