--- id: wiki-2026-0508-text-mining title: Text Mining category: 10_Wiki/Topics status: verified canonical_id: self aliases: [Text Analytics, Information Extraction] duplicate_of: none source_trust_level: A confidence_score: 0.9 verification_status: applied tags: [nlp, text-mining, information-extraction] raw_sources: [] last_reinforced: 2026-05-10 github_commit: pending tech_stack: language: Python framework: spaCy / LLM-based --- # Text Mining ## 매 한 줄 > **"매 unstructured text → structured signal"**. Text mining 매 large text corpora 에서 patterns / entities / relationships / sentiment 의 extract 하는 분야. 매 traditional (TF-IDF, NER models) 에서 매 LLM-based extraction (structured output, function calling) 으로 매 paradigm shift. ## 매 핵심 ### 매 traditional pipeline - **Tokenization** → **POS tagging** → **NER** → **dependency parsing** → **sentiment** → **topic modeling**. - Tools: spaCy, NLTK, scikit-learn (TF-IDF + classifiers), gensim (LDA). - 매 production NER: spaCy `transformers` pipeline or fine-tuned BERT. ### 매 modern (LLM-based) - **Structured output** — 매 LLM 이 JSON schema 의 fill (Claude tool use, OpenAI structured output, Outlines). - **Few-shot extraction** — 매 fine-tune 없이 매 5 examples 만으로 task 의 정의. - **Long-context** — 매 200k+ token document 의 single-shot processing. - 매 cost trade-off: spaCy NER ~$0.0001/doc vs LLM ~$0.01/doc — 매 batch + small model (Haiku, gpt-4o-mini) 으로 reduce. ### 매 응용 1. Resume parsing, contract analysis (entity + clause extraction). 2. Customer feedback aggregation (sentiment + topic). 3. Biomedical literature mining (gene/protein/disease NER). ## 💻 패턴 ### spaCy NER (traditional) ```python import spacy nlp = spacy.load("en_core_web_trf") doc = nlp("Apple acquired Anthropic for $50B in March 2025.") for ent in doc.ents: print(ent.text, ent.label_) # Apple ORG, Anthropic ORG, $50B MONEY, March 2025 DATE ``` ### TF-IDF + classifier ```python from sklearn.feature_extraction.text import TfidfVectorizer from sklearn.linear_model import LogisticRegression from sklearn.pipeline import Pipeline pipe = Pipeline([ ("tfidf", TfidfVectorizer(ngram_range=(1, 2), max_features=20000)), ("clf", LogisticRegression(max_iter=1000)), ]) pipe.fit(X_train, y_train) ``` ### LLM structured extraction (Claude) ```python from anthropic import Anthropic from pydantic import BaseModel class Contract(BaseModel): parties: list[str] effective_date: str total_value_usd: float | None governing_law: str | None client = Anthropic() resp = client.messages.create( model="claude-opus-4-7", max_tokens=2000, tools=[{ "name": "extract_contract", "input_schema": Contract.model_json_schema(), }], tool_choice={"type": "tool", "name": "extract_contract"}, messages=[{"role": "user", "content": contract_text}], ) data = Contract(**resp.content[0].input) ``` ### Topic modeling (BERTopic) ```python from bertopic import BERTopic from sentence_transformers import SentenceTransformer embed = SentenceTransformer("BAAI/bge-large-en-v1.5") topic_model = BERTopic(embedding_model=embed, min_topic_size=10) topics, probs = topic_model.fit_transform(docs) topic_model.get_topic_info() ``` ### Long-context document QA ```python # 200k token contract → single LLM call resp = client.messages.create( model="claude-opus-4-7", max_tokens=4000, messages=[{"role": "user", "content": [ {"type": "text", "text": contract_full_text, "cache_control": {"type": "ephemeral"}}, {"type": "text", "text": "Extract all change-of-control provisions."}, ]}], ) ``` ### Hybrid (LLM + regex precheck) ```python import re DATE_RE = re.compile(r"\b\d{4}-\d{2}-\d{2}\b") candidates = DATE_RE.findall(text) # 매 LLM 의 candidate 만 disambiguate — 매 cost reduce ``` ## 매 결정 기준 | 상황 | Approach | |---|---| | High-volume (M docs/day) NER | spaCy / fine-tuned BERT | | Complex schema, low volume | LLM structured output | | Topic discovery | BERTopic / embeddings + clustering | | Sentiment | Fine-tuned RoBERTa or LLM | | Long documents (>50k tokens) | LLM with caching | | Domain-specific (legal, medical) | Fine-tune + LLM hybrid | **기본값**: 매 prototype LLM, 매 production 은 LLM (low volume) or distilled fine-tuned model (high volume). ## 🔗 Graph - 부모: [[Information-Retrieval]] - 변형: [[Named-Entity-Recognition]] · [[Sentiment-Analysis]] - 응용: [[RAG]] · [[Search]] - Adjacent: [[Embeddings]] ## 🤖 LLM 활용 **언제**: 매 unstructured text corpus 의 query / extract / classify, schema-driven extraction, low-to-medium volume. **언제 X**: 매 milli-second latency 의 필요 (real-time chat moderation) — 매 small distilled model. ## ❌ 안티패턴 - **Regex-only complex extraction**: 매 brittle — 매 LLM hybrid 로 graceful. - **No evaluation set**: 매 LLM 매 hallucinate — 매 ground-truth eval 의 maintain. - **Full-document LLM 의 every query**: 매 cache or pre-extract structured DB. - **Unicode normalization 의 skip**: 매 Korean/CJK text 매 NFC normalize 필수. ## 🧪 검증 / 중복 - Verified (spaCy 3.x docs, Anthropic structured output guide, BERTopic, 2024-2026 NLP practice). - 신뢰도 A. ## 🕓 Changelog | 날짜 | 변경 | |---|---| | 2026-05-08 | Phase 1 | | 2026-05-10 | Manual cleanup — traditional + LLM-based extraction patterns |