See: Description
| Class | Description |
|---|---|
| CSVFeatureLogger |
A feature logger that logs in csv format.
|
| DocInfo | |
| FeatureLogger |
FeatureLogger can be registered in a model and provide a strategy for logging
the feature values.
|
| LTRRescorer |
Implements the rescoring logic.
|
| LTRScoringQuery |
The ranking query that is run, reranking results using the
LTRScoringModel algorithm
|
| LTRScoringQuery.FeatureInfo | |
| LTRThreadModule |
The LTRThreadModule is optionally used by the
LTRQParserPlugin and
LTRFeatureLoggerTransformerFactory
classes to parallelize the creation of Feature.FeatureWeight
objects. |
| SolrQueryRequestContextUtils |
| Enum | Description |
|---|---|
| FeatureLogger.FeatureFormat |
This package contains the main logic for performing the reranking using a Learning to Rank model.
A model will be applied on each document through a LTRScoringQuery, a
subclass of Query. As a normal query,
the learned model will produce a new score
for each document reranked.
A LTRScoringQuery is created by providing an instance of
LTRScoringModel. An instance of
LTRScoringModel
defines how to combine the features in order to create a new
score for a document. A new Learning to Rank model is plugged
into the framework by extending LTRScoringModel,
(see for example MultipleAdditiveTreesModel and LinearModel).
The LTRScoringQuery will take care of computing the values of
all the features (see Feature) and then will delegate the final score
generation to the LTRScoringModel, by calling the method
score(float[] modelFeatureValuesNormalized).
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