WFGY/ProblemMap/GlobalFixMap/Multimodal_LongContext/multi-hop-collapse.md

6.6 KiB
Raw Permalink Blame History

Multi-Hop Collapse — Multimodal Long Context

🧭 Quick Return to Map

You are in a sub-page of Multimodal_LongContext.
To reorient, go back here:

Think of this page as a desk within a ward.
If you need the full triage and all prescriptions, return to the Emergency Room lobby.

When reasoning requires multi-hop steps across modalities (e.g., text → image → audio → video),
the chain often collapses midway. The model answers only the first hop or fabricates the rest,
losing alignment between evidence sources.


What this page is

  • A targeted fix for multi-hop multimodal reasoning failures in long-context sessions.
  • Defines measurable checkpoints for each hop.
  • Provides guardrails to keep ΔS and λ stable across chained modalities.

When to use

  • A video QA task asks: “What does the person say after showing the book?” → model answers book title but skips speech.
  • An OCR pipeline extracts text, but reasoning ignores it in the final image caption.
  • Chain-of-thought starts correctly, then jumps to a hallucinated answer without citing the second modality.
  • Multi-step retrieval returns correct snippets, but only the first snippet is used.
  • Answers flip between runs depending on which hop the model “forgets.”

Open these first


Common failure patterns

  • Single-hop truncation — only the first modality is processed, chain stops.
  • Bridge collapse — second hop exists but produces null output or irrelevant data.
  • Hallucinated completion — model skips missing modality and fabricates plausible link.
  • Order inversion — hops are executed in the wrong sequence.

Fix in 60 seconds

  1. Hop schema lock

    • Require {hop_id, input_modality, output_modality, snippet_id, ΔS} for each step.
    • Forbid skipping hops.
  2. ΔS checkpoints

    • Compute ΔS at each hop transition.
    • Threshold: ΔS ≤ 0.45 is stable, 0.450.60 transitional, ≥ 0.60 collapse risk.
  3. λ continuity probe

    • Record λ across hops: retrieval → fusion → reasoning.
    • If λ flips divergent, apply BBAM clamp.
  4. BBCR bridge

    • Insert bridge node for missing or weak hop.
    • Re-anchor using prior modality context.
  5. Cite all hops

    • Require at least one snippet citation from each hop.
    • Stop output if any hop is missing evidence.

Copy-paste prompt

You have TXT OS and the WFGY Problem Map.

Task: Repair multi-hop multimodal collapse.

Steps:
1. List all hops in the chain {hop_id, from_modality → to_modality}.
2. For each hop, compute ΔS and record λ state.
3. If ΔS ≥ 0.60 at any hop, re-run retrieval and insert BBCR bridge.
4. Output must include:
   - citations per hop
   - ΔS values
   - λ states
   - fused final reasoning

Acceptance targets

  • Every hop cited with snippet evidence.
  • ΔS ≤ 0.45 at each hop boundary.
  • λ remains convergent across three paraphrases.
  • No fabricated hops or skipped modalities.

🔗 Quick-Start Downloads (60 sec)

Tool Link 3-Step Setup
WFGY 1.0 PDF Engine Paper 1 Download · 2 Upload to your LLM · 3 Ask “Answer using WFGY + ”
TXT OS (plain-text OS) TXTOS.txt 1 Download · 2 Paste into any LLM chat · 3 Type “hello world” — OS boots instantly

Explore More

Layer Page What its for
Proof WFGY Recognition Map External citations, integrations, and ecosystem proof
⚙️ Engine WFGY 1.0 Original PDF tension engine and early logic sketch (legacy reference)
⚙️ Engine WFGY 2.0 Production tension kernel for RAG and agent systems
⚙️ Engine WFGY 3.0 TXT based Singularity tension engine (131 S class set)
🗺️ Map Problem Map 1.0 Flagship 16 problem RAG failure taxonomy and fix map
🗺️ Map Problem Map 2.0 Global Debug Card for RAG and agent pipeline diagnosis
🗺️ Map Problem Map 3.0 Global AI troubleshooting atlas and failure pattern map
🧰 App TXT OS .txt semantic OS with fast bootstrap
🧰 App Blah Blah Blah Abstract and paradox Q&A built on TXT OS
🧰 App Blur Blur Blur Text to image generation with semantic control
🏡 Onboarding Starter Village Guided entry point for new users

If this repository helped, starring it improves discovery so more builders can find the docs and tools.
GitHub Repo stars