Class Similarity

    • Constructor Detail

      • Similarity

        protected Similarity()
        Default constructor. (For invocation by subclass constructors, typically implicit.)
      • Similarity

        protected Similarity​(boolean discountOverlaps)
        Expert constructor that allows adjustment of getDiscountOverlaps() at index-time.

        Overlap tokens are tokens such as synonyms, that have a PositionIncrementAttribute of zero from the analysis chain.

        NOTE: If you modify this parameter, you'll need to re-index for it to take effect.

        Parameters:
        discountOverlaps - true if overlap tokens should not impact document length for scoring.
    • Method Detail

      • computeNorm

        public long computeNorm​(FieldInvertState state)
        Computes the normalization value for a field at index-time.

        The default implementation uses SmallFloat.intToByte4(int) to encode the number of terms as a single byte.

        WARNING: The default implementation is used by Lucene's supplied Similarity classes, which means you can change the Similarity at runtime without reindexing. If you override this method, you'll need to re-index documents for it to take effect.

        Matches in longer fields are less precise, so implementations of this method usually set smaller values when state.getLength() is large, and larger values when state.getLength() is small.

        Note that for a given term-document frequency, greater unsigned norms must produce scores that are lower or equal, ie. for two encoded norms n1 and n2 so that Long.compareUnsigned(n1, n2) > 0 then SimScorer.score(freq, n1) <= SimScorer.score(freq, n2) for any legal freq.

        0 is not a legal norm, so 1 is the norm that produces the highest scores.

        Parameters:
        state - accumulated state of term processing for this field
        Returns:
        computed norm value
        WARNING: This API is experimental and might change in incompatible ways in the next release.
      • scorer

        public abstract Similarity.SimScorer scorer​(float boost,
                                                    CollectionStatistics collectionStats,
                                                    TermStatistics... termStats)
        Compute any collection-level weight (e.g. IDF, average document length, etc) needed for scoring a query.
        Parameters:
        boost - a multiplicative factor to apply to the produces scores
        collectionStats - collection-level statistics, such as the number of tokens in the collection.
        termStats - term-level statistics, such as the document frequency of a term across the collection.
        Returns:
        SimWeight object with the information this Similarity needs to score a query.