Corpus Vis Iuris (Lex): Difference between revisions

Jump to navigation Jump to search
AdminIsidore (talk | contribs)
No edit summary
AdminIsidore (talk | contribs)
No edit summary
 
Line 26: Line 26:
== SAGA Integration: Evolving the Framework ==
== SAGA Integration: Evolving the Framework ==
CVI drives recursive improvement of the LM Framework through the SAGA Loop:
CVI drives recursive improvement of the LM Framework through the SAGA Loop:
# **Framework Validation**: Historical CVI data (1,000+ cases) serves as a hold-out set to test equation patches (e.g., PM v2.0 additive vs. v1.0 fractional).
# '''Framework Validation''': Historical CVI data (1,000+ cases) serves as a hold-out set to test equation patches (e.g., PM v2.0 additive vs. v1.0 fractional).
# **Equation Patches**: [[Lord John Marbury (AetherOS)|Marbury]] generates `SUGGERO` commands (e.g., <code>SUGGERO --model PM_Score --action ADD_VARIABLE --variable AIPrecedentScore --weight 0.1 --reason NovelTechCases</code>) based on prediction errors.
# '''Equation Patches''': [[Lord John Marbury (AetherOS)|Marbury]] generates `SUGGERO` commands (e.g., <code>SUGGERO --model PM_Score --action ADD_VARIABLE --variable AIPrecedentScore --weight 0.1 --reason NovelTechCases</code>) based on prediction errors.
# **Simulated Rollouts**: Patches tested in a sandbox (500-case subset), requiring >5% F1-score lift without degrading other metrics (e.g., via elastic weight consolidation to prevent catastrophic forgetting).
# '''Simulated Rollouts''': Patches tested in a sandbox (500-case subset), requiring >5% F1-score lift without degrading other metrics (e.g., via elastic weight consolidation to prevent catastrophic forgetting).
# **Deployment**: [[Lex (AetherOS)|Praetor]] deploys validated patches to Lexicon templates, updating canonical equations (e.g., non-linear O_s^1.2 in SM).
# '''Deployment''': [[Lex (AetherOS)|Praetor]] deploys validated patches to Lexicon templates, updating canonical equations (e.g., non-linear O_s^1.2 in SM).


'''Example''': If SM underpredicts high-friction courts, SAGA proposes a “Crisis Factor” for C_d, validated on PACER subsets, improving accuracy by 8%.
'''Example''': If SM underpredicts high-friction courts, SAGA proposes a “Crisis Factor” for C_d, validated on PACER subsets, improving accuracy by 8%.
Line 40: Line 40:


== Weaknesses ==
== Weaknesses ==
- **Digital Twin Fragility**: Law’s interpretive fluidity undermines fidelity; incomplete data (e.g., 20% sealed cases) distorts adaptations, risking outdated models.
- '''Digital Twin Fragility''': Law’s interpretive fluidity undermines fidelity; incomplete data (e.g., 20% sealed cases) distorts adaptations, risking outdated models.
- **NLP Error Propagation**: 15-30% recall drops in complex texts amplify biases in recursive loops, per legal NLP critiques.
- '''NLP Error Propagation''': 15-30% recall drops in complex texts amplify biases in recursive loops, per legal NLP critiques.
- **Governance Bottlenecks**: Human vetoes slow recursion in volatile fields (e.g., post-Dobbs shifts), hindering rapid updates.
- '''Governance Bottlenecks''': Human vetoes slow recursion in volatile fields (e.g., post-Dobbs shifts), hindering rapid updates.
- **Ethical Risks**: Scraping raises privacy concerns (e.g., GDPR risks); ideology scores politicize judiciary, requiring continuous debiasing.
- '''Ethical Risks''': Scraping raises privacy concerns (e.g., GDPR risks); ideology scores politicize judiciary, requiring continuous debiasing.


== Brittle Data Modeling Areas ==
== Brittle Data Modeling Areas ==
- **Extraction Errors**: NLP brittle to archaic/ambiguous texts (25% error in historical statutes), skewing variable engineering.
- '''Extraction Errors''': NLP brittle to archaic/ambiguous texts (25% error in historical statutes), skewing variable engineering.
- **Data Scarcity**: Novel domains (e.g., AI law, <100 cases) inflate patch variance (>20%).
- '''Data Scarcity''': Novel domains (e.g., AI law, <100 cases) inflate patch variance (>20%).
- **Latency Issues**: PACER delays (24-48 hours) erode real-time updates, brittle during rapid rulings.
- '''Latency Issues''': PACER delays (24-48 hours) erode real-time updates, brittle during rapid rulings.
- **Bias Amplification**: Self-loops perpetuate underrepresentation without fairness checks.
- '''Bias Amplification''': Self-loops perpetuate underrepresentation without fairness checks.


== See Also ==
== See Also ==