tasq/node_modules/agentdb/simulation/scenarios/README-advanced/bmssp-integration.md

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# BMSSP Integration - Biologically-Motivated Symbolic-Subsymbolic Processing
## Overview
Hybrid symbolic-subsymbolic processing combining rule-based logic with neural pattern recognition.
## Purpose
Model how biological brains integrate symbolic reasoning (conscious thought) with subsymbolic processing (intuition, pattern recognition).
## Operations
- **Symbolic Rules**: 3 logical inference rules
- **Subsymbolic Patterns**: 3 neural activation patterns
- **Hybrid Inferences**: 3 combined reasoning steps
- **Confidence Scores**: 85-95% average
## Results
- **Throughput**: 2.38 ops/sec
- **Latency**: 410ms avg
- **Memory**: 23 MB
- **Symbolic Rules**: 3
- **Subsymbolic Patterns**: 3
- **Hybrid Inferences**: 3
- **Avg Confidence**: 91.7%
## Technical Details
### Symbolic Layer
```typescript
rule: 'IF temperature > 30 THEN activate_cooling'
confidence: 0.95
```
### Subsymbolic Layer
```typescript
pattern: 'temperature_trend_rising'
strength: 0.88 // Neural activation level
```
### Integration
Combines symbolic IF-THEN rules with subsymbolic pattern detection for robust decision-making.
## Applications
- **Smart Home Systems**: Combine rules with learned preferences
- **Medical Diagnosis**: Clinical guidelines + pattern recognition
- **Autonomous Vehicles**: Traffic rules + learned behaviors
- **Robotics**: Programmed behaviors + adaptive learning
## Package Integration
- **@ruvnet/bmssp**: Core BMSSP algorithms
- **Graph DB**: Optimized for symbolic rule graphs
- **Distance Metric**: Cosine (best for semantic similarity)
## Research Connections
- Connectionist AI (1980s-90s)
- Hybrid AI systems
- Cognitive architectures (ACT-R, SOAR)
- Dual-process theory (Kahneman)
**Status**: ✅ Operational | **Package**: @ruvnet/bmssp