
ai detection paranoiameta analysis rabbit holecursed taxonomychronically online engineering
we've gone full Inception: building frameworks to detect the frameworks
A hierarchical decision tree/framework for detecting AI-generated content and hybrid human-AI writing. Presented as a technical classification system with 20 distinct linguistic pillars and metrics for identifying LLM signatures.
Extracted text:
01_ai_origin_nlp_signals/ (Classifiers 1-20)
āā definitions/
ā āā "hybrid_content": Human + AI-assisted writing with operator-level signal.
ā āā "ai_signature": Detectable statistical uniformity common in LLM outputs.
āā decision_pillars/
ā āā 1) lexical_diversity_index
ā āā 2) syntactic_burstiness
ā āā 3) semantic_drift_monitor
ā āā 4) pattern_repetition_audit
ā āā 5) pronominal_frequency
ā āā 6) passive_voice_saturation
ā āā 7) idiomatic_regionalism
ā āā 8) transition_word_predictability
ā āā 9) sentence_complexity_jitter
ā āā 10) emotional_variance
ā āā 11) cliche_density
ā āā 12) rhetorical_question_ratio
ā āā 13) verb_tense_consistency
ā āā 14) adverbial_fluff_score
ā āā 15) proper_noun_density
ā āā 16) formatting_logic_consistency
ā āā 17) metaphor_originality
ā āā 18) nuance_preservation
ā āā 19) prompt_leakage_detection
ā āā 20) perplexity_score_volatility
āā risk_output: Low | Moderate | High AI Signature