Package org.apache.solr.ltr.model
Class LinearModel
- java.lang.Object
-
- org.apache.solr.ltr.model.LTRScoringModel
-
- org.apache.solr.ltr.model.LinearModel
-
- All Implemented Interfaces:
org.apache.lucene.util.Accountable
public class LinearModel extends LTRScoringModel
A scoring model that computes scores using a dot product. Example models are RankSVM and Pranking.Example configuration:
{ "class" : "org.apache.solr.ltr.model.LinearModel", "name" : "myModelName", "features" : [ { "name" : "userTextTitleMatch" }, { "name" : "originalScore" }, { "name" : "isBook" } ], "params" : { "weights" : { "userTextTitleMatch" : 1.0, "originalScore" : 0.5, "isBook" : 0.1 } } }
Training libraries:
Background reading:
-
-
Field Summary
Fields Modifier and Type Field Description protected Float[]
featureToWeight
featureToWeight is part of the LTRScoringModel params map and therefore here it does not individually influence the class hashCode, equals, etc.-
Fields inherited from class org.apache.solr.ltr.model.LTRScoringModel
features, name, norms
-
-
Method Summary
All Methods Instance Methods Concrete Methods Modifier and Type Method Description org.apache.lucene.search.Explanation
explain(org.apache.lucene.index.LeafReaderContext context, int doc, float finalScore, List<org.apache.lucene.search.Explanation> featureExplanations)
Similar to the score() function, except it returns an explanation of how the features were used to calculate the score.float
score(float[] modelFeatureValuesNormalized)
Given a list of normalized values for all features a scoring algorithm cares about, calculate and return a score.void
setWeights(Object weights)
String
toString()
protected void
validate()
Validate that settings make sense and throwsModelException
if they do not make sense.-
Methods inherited from class org.apache.solr.ltr.model.LTRScoringModel
equals, getAllFeatures, getFeatures, getFeatureStoreName, getInstance, getName, getNormalizerExplanation, getNorms, getParams, hashCode, normalizeFeaturesInPlace, ramBytesUsed
-
-
-
-
Field Detail
-
featureToWeight
protected Float[] featureToWeight
featureToWeight is part of the LTRScoringModel params map and therefore here it does not individually influence the class hashCode, equals, etc.
-
-
Method Detail
-
setWeights
public void setWeights(Object weights)
-
validate
protected void validate() throws ModelException
Description copied from class:LTRScoringModel
Validate that settings make sense and throwsModelException
if they do not make sense.- Overrides:
validate
in classLTRScoringModel
- Throws:
ModelException
-
score
public float score(float[] modelFeatureValuesNormalized)
Description copied from class:LTRScoringModel
Given a list of normalized values for all features a scoring algorithm cares about, calculate and return a score.- Specified by:
score
in classLTRScoringModel
- Parameters:
modelFeatureValuesNormalized
- List of normalized feature values. Each feature is identified by its id, which is the index in the array- Returns:
- The final score for a document
-
explain
public org.apache.lucene.search.Explanation explain(org.apache.lucene.index.LeafReaderContext context, int doc, float finalScore, List<org.apache.lucene.search.Explanation> featureExplanations)
Description copied from class:LTRScoringModel
Similar to the score() function, except it returns an explanation of how the features were used to calculate the score.- Specified by:
explain
in classLTRScoringModel
- Parameters:
context
- Context the document is indoc
- Document to explainfinalScore
- Original scorefeatureExplanations
- Explanations for each feature calculation- Returns:
- Explanation for the scoring of a document
-
toString
public String toString()
- Overrides:
toString
in classLTRScoringModel
-
-