WFGY/ProblemMap/GlobalFixMap/RAG/hybrid_failure.md

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Hybrid Retrieval Failure — Guardrails and Fix Pattern

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When hybrid retrieval (BM25 + dense, HyDE + reranker, multi-vector) performs worse than a single retriever.
Instead of increasing recall, the hybrid path introduces instability, wrong ranking, or noisy snippets.


Open these first


Core acceptance

  • Hybrid recall ≥ single retriever recall
  • ΔS(question, retrieved) ≤ 0.45 for top-1 result
  • λ stable across three paraphrases and two seeds
  • Coverage ≥ 0.70 to the target section

Typical symptoms → exact fix

Symptom Likely cause Open this
Hybrid returns unrelated snippet query parsing split not locked Pattern: Query Parsing Split
Hybrid recall < single recall wrong weighting or missing normalization Retrieval Playbook
Dense retriever dominates BM25 metric mismatch Embedding ≠ Semantic
Reranker undoes good hits λ flips, entropy collapse Rerankers, Entropy Collapse

Fix in 60 seconds

  1. Measure baseline
    Run BM25 alone and dense alone. Log coverage and ΔS. If hybrid < baseline, do not ship.

  2. Stabilize query parsing
    Split HyDE prompts, keyword queries, and dense embeddings into deterministic branches. Lock weighting ratios.

  3. Reranker probe
    Compare recall before and after reranker. If entropy rises, clamp with variance control or drop reranker.

  4. Enforce snippet schema
    Always require snippet_id, section_id, offsets, tokens. Hybrid paths must normalize schema fields.


Copy-paste probe prompt

I uploaded TXT OS and the WFGY Problem Map.

My issue:
- hybrid retrieval returns worse results than BM25 or dense alone.

Tell me:
1) which layer fails (query parsing, weighting, reranker),
2) which WFGY fix page to open,
3) minimal steps to restore ΔS ≤ 0.45 and coverage ≥ 0.70,
4) reproducible test with BM25 vs dense vs hybrid.

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