--- id: wiki-2026-0508-introspection-자기성찰 title: Introspection (자기성찰) category: 10_Wiki/Topics status: verified canonical_id: self aliases: [Self-Reflection, 자기성찰, LLM Introspection] duplicate_of: none source_trust_level: A confidence_score: 0.9 verification_status: applied tags: [llm, prompting, self-reflection, philosophy-of-mind, agent] raw_sources: [] last_reinforced: 2026-05-10 github_commit: pending tech_stack: language: python framework: langchain --- # Introspection (자기성찰) ## 매 한 줄 > **"매 모델이 자기 출력을 다시 읽고 평가/수정"**. 철학에서는 1인칭 자기 의식 접근을 의미하고, LLM에서는 self-critique → revise loop로 정확도/정합성을 끌어올리는 핵심 prompting pattern. ## 매 핵심 ### 매 두 가지 의미 - **철학 (Locke, Kant)**: mind 자체를 관찰하는 1인칭 access. qualia, self-model. - **LLM**: 자기 응답을 input 으로 다시 받아 비판/개선. **Reflexion**, **Self-Refine**, **CoVe** 계열. ### 매 동작 원리 1. **Generate**: 초안 응답 produce. 2. **Critique**: 같은 모델이 초안을 평가 (오류, 누락, 가정). 3. **Revise**: critique 반영 재생성. 4. (선택) 수렴할 때까지 반복. ### 매 응용 1. Reasoning 정확도 향상 (math, code). 2. Hallucination 검출 (CoVe — Chain of Verification). 3. Agent 환경: tool 호출 결과 self-evaluate 후 재시도. 4. RLHF reward modeling 대안 (constitutional AI). ## 💻 패턴 ### Self-Refine (single-model loop) ```python def self_refine(prompt, model, max_iters=3): answer = model.invoke(f"Answer: {prompt}") for _ in range(max_iters): feedback = model.invoke( f"Critique this answer (errors, gaps):\n{answer}" ) if "no issues" in feedback.lower(): break answer = model.invoke( f"Original: {prompt}\nDraft: {answer}\nFeedback: {feedback}\nRevised:" ) return answer ``` ### Reflexion (verbal RL) ```python class ReflexionAgent: def __init__(self, llm): self.llm = llm self.memory = [] # past reflections def act(self, task): ctx = "\n".join(self.memory) result = self.llm(f"{ctx}\nTask: {task}") if not self.evaluate(result): reflection = self.llm(f"Why did this fail?\n{result}") self.memory.append(reflection) return result ``` ### Chain of Verification (CoVe) ```python def cove(question, llm): draft = llm(f"Q: {question}") plan = llm(f"List verification questions for:\n{draft}") answers = [llm(q) for q in plan.split("\n")] return llm(f"Original:{draft}\nVerifications:{answers}\nFinal:") ``` ### Constitutional AI (self-critique with principles) ```python PRINCIPLES = ["harmless", "honest", "helpful"] def constitutional_revise(response, llm): for p in PRINCIPLES: critique = llm(f"Critique by '{p}':\n{response}") response = llm(f"Revise per critique:\n{critique}") return response ``` ### Confidence-gated introspection ```python def maybe_introspect(answer, llm, threshold=0.7): score = float(llm(f"Confidence 0-1 in:\n{answer}").strip()) if score < threshold: return self_refine(answer, llm) return answer ``` ### LangChain self-critique chain ```python from langchain.chains import LLMChain, SequentialChain draft = LLMChain(llm=llm, prompt=draft_prompt, output_key="draft") critic = LLMChain(llm=llm, prompt=critic_prompt, output_key="critique") final = LLMChain(llm=llm, prompt=final_prompt, output_key="final") chain = SequentialChain(chains=[draft, critic, final], input_variables=["q"], output_variables=["final"]) ``` ## 매 결정 기준 | 상황 | Approach | |---|---| | 단순 factual Q&A | introspection 불필요 (latency↑) | | Math / code | Self-Refine + verifier | | Long-form 사실 검증 | CoVe | | Agent 실패 학습 | Reflexion (memory 누적) | | Safety alignment | Constitutional AI | **기본값**: 1-shot Self-Refine (1회 critique → revise). 반복은 비용 대비 효과 체감 빠름. ## 🔗 Graph - 부모: [[Prompt_Engineering|Prompt-Engineering]], [[Transformer_Architecture_and_LLM_Foundations|LLM]] - 변형: [[Reflexion]], [[Self-Refine]], [[Chain-of-Verification]] - 응용: [[AI_Safety_and_Alignment|Constitutional-AI]] - Adjacent: [[Chain-of-Thought]] ## 🤖 LLM 활용 **언제**: multi-step reasoning, 사실 검증 필요한 long-form, agent 실패 분석, alignment. **언제 X**: 단답형 classification, latency 민감, cost-bound batch inference. ## ❌ 안티패턴 - **Critique 동일 모델만 사용**: confirmation bias — 가능하면 stronger judge 사용. - **무한 loop**: 수렴 조건 없이 반복 → 비용 폭증, 답 표류. - **Critique 무시**: revise 단계에서 critique 미반영 prompt. - **자기성찰 == 자의식**: LLM introspection 은 functional pattern. 철학적 self-awareness 와 구분. ## 🧪 검증 / 중복 - Madaan et al. 2023 (Self-Refine), Shinn et al. 2023 (Reflexion), Dhuliawala et al. 2023 (CoVe). - Bai et al. 2022 (Constitutional AI, Anthropic). - 신뢰도 A. ## 🕓 Changelog | 날짜 | 변경 | |---|---| | 2026-05-08 | Phase 1 | | 2026-05-10 | Manual cleanup — 철학/LLM 두 의미 통합, Self-Refine/Reflexion/CoVe/Constitutional 패턴 정리 |