WFGY/ProblemMap/embedding-vs-semantic.md
2025-08-15 23:15:20 +08:00

6.4 KiB
Raw Blame History

📒 Problem#5 ·High Vector Similarity, Wrong Meaning

Classic RAG scores chunks by cosine similarity—close vectors ≠ correct logic.
Result: “looks relevant” chunks that derail answers. WFGY replaces surface matching with semantic residue checks.


🤔 Why Cosine Match Misleads

Weakness Practical Failure
Embedding ≠ Understanding Cosine overlap captures phrasing, not intent
Keywords ≠ Intent Ambiguous terms bring unrelated chunks
No Semantic Guard System never validates logical fit

⚠️ Example MisRetrieval

User: “How do I cancel my subscription after the free trial?”
Retrieved chunk: “Subscriptions renew monthly or yearly, depending on plan.”
→ High cosine, zero help → hallucinated answer.


🛡️ WFGY Fix · BBMC Residue Minimization

B = I - G + m·c²      # minimize ‖B‖
Symbol Meaning
I Input semantic vector
G Groundtruth anchor (intent)
B Semantic residue (error)
  • Large ‖B‖ → chunk is semantically off → WFGY rejects or asks for context.

🔍 Key Defenses

Layer Action
BBMC Computes residue; filters divergent chunks
ΔS Threshold Rejects high semantic tension (ΔS > 0.6)
BBAM Downweights misleading highattention tokens
Tree Anchor Confirms chunk aligns with prior logic path

✍️ Quick Repro (1 min)

1⃣  Start
> Start

2⃣  Paste misleading chunk
> "Plans include yearly renewal."

3⃣  Ask
> "How do I cancel a free trial?"

WFGY:
• ΔS high → chunk rejected  
• Prompts for trialspecific info instead of hallucinating

🔬 Sample Output

Surface overlap detected, but content lacks trialcancellation detail.  
Add a policy chunk on trial termination or rephrase the query.

🛠 Module CheatSheet

Module Role
BBMC Residue minimization
ΔS Metric Measures semantic tension
BBAM Suppresses noisy tokens
Semantic Tree Validates anchor alignment

📊 Implementation Status

Feature State
BBMC residue calc Stable
ΔS filter Stable
Token attention modulation ⚠️ Basic
Misleading chunk rejection Active

🔗 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 + <your question>”
TXT OS (plain-text OS) TXTOS.txt 1 Download · 2 Paste into any LLM chat · 3 Type “hello world” — OS boots instantly

🧭 Explore More

Module Description Link
WFGY Core WFGY 2.0 engine is live: full symbolic reasoning architecture and math stack View →
Problem Map 1.0 Initial 16-mode diagnostic and symbolic fix framework View →
Problem Map 2.0 RAG-focused failure tree, modular fixes, and pipelines View →
Semantic Clinic Index Expanded failure catalog: prompt injection, memory bugs, logic drift View →
Semantic Blueprint Layer-based symbolic reasoning & semantic modulations View →
Benchmark vs GPT-5 Stress test GPT-5 with full WFGY reasoning suite View →
🧙‍♂️ Starter Village 🏡 New here? Lost in symbols? Click here and let the wizard guide you through Start →

👑 Early Stargazers: See the Hall of Fame
Engineers, hackers, and open source builders who supported WFGY from day one.

GitHub stars WFGY Engine 2.0 is already unlocked. Star the repo to help others discover it and unlock more on the Unlock Board.

WFGY Main   TXT OS   Blah   Blot   Bloc   Blur   Blow