Class: ClaudeMemory::Core::RRFusion
- Inherits:
-
Object
- Object
- ClaudeMemory::Core::RRFusion
- Defined in:
- lib/claude_memory/core/rr_fusion.rb
Overview
Reciprocal Rank Fusion (RRF) for merging ranked result lists Follows Functional Core pattern - no I/O, just transformations
RRF combines multiple ranked lists using position-based scoring:
score(d) = Σ(weight_r / (k + rank_r(d)))
This is more effective than naive deduplication because it considers rank positions from both sources, giving higher scores to results that appear near the top in multiple lists.
Constant Summary collapse
- K =
Standard RRF constant - controls rank pressure
60- TOP_BONUS =
{1 => 0.05, 2 => 0.02, 3 => 0.02}.freeze
Class Method Summary collapse
-
.fuse(vector_results, text_results, limit, vector_weight: 1.0, text_weight: 1.0, explain: false) ⇒ Array<Hash>
Fuse ranked lists from vector and text search.
Class Method Details
.fuse(vector_results, text_results, limit, vector_weight: 1.0, text_weight: 1.0, explain: false) ⇒ Array<Hash>
Fuse ranked lists from vector and text search
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# File 'lib/claude_memory/core/rr_fusion.rb', line 25 def self.fuse(vector_results, text_results, limit, vector_weight: 1.0, text_weight: 1.0, explain: false) scores = {} traces = {} if explain fact_data = {} # Score vector results by rank position vector_results.each_with_index do |result, idx| fact_id = result[:fact][:id] rank = idx + 1 # 1-based rank contribution = (vector_weight / (K + rank)) + TOP_BONUS.fetch(rank, 0.0) scores[fact_id] = (scores[fact_id] || 0.0) + contribution if explain traces[fact_id] ||= {vec_rank: nil, vec_score: nil, fts_rank: nil, fts_score: nil, vec_rrf: nil, fts_rrf: nil} traces[fact_id][:vec_rank] = rank traces[fact_id][:vec_score] = result[:similarity] traces[fact_id][:vec_rrf] = contribution.round(6) end # Prefer vector result data (has real similarity score) fact_data[fact_id] = result end # Score text results by rank position text_results.each_with_index do |result, idx| fact_id = result[:fact][:id] rank = idx + 1 contribution = (text_weight / (K + rank)) + TOP_BONUS.fetch(rank, 0.0) scores[fact_id] = (scores[fact_id] || 0.0) + contribution if explain traces[fact_id] ||= {vec_rank: nil, vec_score: nil, fts_rank: nil, fts_score: nil, vec_rrf: nil, fts_rrf: nil} traces[fact_id][:fts_rank] = rank traces[fact_id][:fts_score] = result[:similarity] traces[fact_id][:fts_rrf] = contribution.round(6) end # Only use text data if not already present from vector fact_data[fact_id] ||= result end # Sort by RRF score descending and return top results scores .sort_by { |_id, score| -score } .take(limit) .map do |fact_id, score| merged = fact_data[fact_id].merge(similarity: score) merged[:score_trace] = traces[fact_id].merge(rrf_final: score.round(6)) if explain merged end end |