WFGY/ProblemMap/GlobalFixMap/Multimodal_LongContext/fusion-blindspot.md

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Fusion Blindspot — Multimodal Long Context

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When one modality is silently ignored during fusion, the model produces coherent but incomplete answers.
This is fusion blindspot — the audio, visual, or OCR stream is valid, yet the fusion layer drops it or never integrates it.


What this page is

  • A guide to detect and repair missing modality participation in multimodal fusion.
  • Ensures every input modality contributes evidence to the final reasoning chain.
  • Provides structural probes to confirm no blindspot occurs at joins.

When to use

  • Captions mention objects but the visual stream was ignored.
  • Audio transcript exists, but final reasoning never cites it.
  • OCR text valid but skipped during answer generation.
  • One modality has ΔS ≤ 0.40 internally but never appears in the fused output.
  • Answers are fluent but consistently one-dimensional.

Open these first


Common failure patterns

  • Silent omission — one stream absent from the answer, with no error reported.
  • Over-dominance — strong text modality overrides weaker OCR or visual input.
  • Fusion filter — low-confidence modality is dropped without logging.
  • Blind alignment — citations only from one channel, even though others were retrieved.

Fix in 60 seconds

  1. Modality presence check

    • Require every modality to appear in at least one citation per fused answer.
    • If missing, re-run fusion step.
  2. ΔS contribution probe

    • For each modality, compute ΔS vs question.
    • Flag if ΔS ≤ 0.45 but modality unused.
  3. λ stability test

    • Log λ across fusion stages.
    • Divergence indicates modality suppression.
  4. Repair step

    • Apply BBCR bridge between ignored modality and main reasoning chain.
    • Re-anchor with explicit cite-then-answer.

Copy-paste prompt

You have TXT OS and the WFGY Problem Map.

Task: Detect and fix fusion blindspots.

Steps:
1. List all modalities available {audio, visual, OCR, text}.
2. For each, compute ΔS(question, modality).
3. If ΔS ≤ 0.45 and unused, flag as blindspot.
4. Insert BBCR bridge and force cite-then-answer with all modalities.
5. Return fused answer with full citations.

Acceptance targets

  • Every modality with ΔS ≤ 0.45 contributes at least once.
  • λ remains convergent across fusion.
  • No single modality suppressed >3 consecutive turns.
  • Trace table shows citations from all streams.

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