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Create semantic_analysis,py

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modules/text_analysis/semantic_analysis,py ADDED
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+ #semantic_analysis.py
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+ import streamlit as st
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+ import spacy
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+ import networkx as nx
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+ import matplotlib.pyplot as plt
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+ from collections import Counter, defaultdict
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+ from sklearn.feature_extraction.text import TfidfVectorizer
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+ from sklearn.metrics.pairwise import cosine_similarity
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+
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+ # Define colors for grammatical categories
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+ POS_COLORS = {
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+ 'ADJ': '#FFA07A', 'ADP': '#98FB98', 'ADV': '#87CEFA', 'AUX': '#DDA0DD',
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+ 'CCONJ': '#F0E68C', 'DET': '#FFB6C1', 'INTJ': '#FF6347', 'NOUN': '#90EE90',
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+ 'NUM': '#FAFAD2', 'PART': '#D3D3D3', 'PRON': '#FFA500', 'PROPN': '#20B2AA',
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+ 'SCONJ': '#DEB887', 'SYM': '#7B68EE', 'VERB': '#FF69B4', 'X': '#A9A9A9',
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+ }
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+
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+ POS_TRANSLATIONS = {
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+ 'es': {
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+ 'ADJ': 'Adjetivo', 'ADP': 'Preposición', 'ADV': 'Adverbio', 'AUX': 'Auxiliar',
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+ 'CCONJ': 'Conjunción Coordinante', 'DET': 'Determinante', 'INTJ': 'Interjección',
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+ 'NOUN': 'Sustantivo', 'NUM': 'Número', 'PART': 'Partícula', 'PRON': 'Pronombre',
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+ 'PROPN': 'Nombre Propio', 'SCONJ': 'Conjunción Subordinante', 'SYM': 'Símbolo',
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+ 'VERB': 'Verbo', 'X': 'Otro',
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+ },
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+ 'en': {
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+ 'ADJ': 'Adjective', 'ADP': 'Preposition', 'ADV': 'Adverb', 'AUX': 'Auxiliary',
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+ 'CCONJ': 'Coordinating Conjunction', 'DET': 'Determiner', 'INTJ': 'Interjection',
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+ 'NOUN': 'Noun', 'NUM': 'Number', 'PART': 'Particle', 'PRON': 'Pronoun',
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+ 'PROPN': 'Proper Noun', 'SCONJ': 'Subordinating Conjunction', 'SYM': 'Symbol',
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+ 'VERB': 'Verb', 'X': 'Other',
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+ },
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+ 'fr': {
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+ 'ADJ': 'Adjectif', 'ADP': 'Préposition', 'ADV': 'Adverbe', 'AUX': 'Auxiliaire',
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+ 'CCONJ': 'Conjonction de Coordination', 'DET': 'Déterminant', 'INTJ': 'Interjection',
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+ 'NOUN': 'Nom', 'NUM': 'Nombre', 'PART': 'Particule', 'PRON': 'Pronom',
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+ 'PROPN': 'Nom Propre', 'SCONJ': 'Conjonction de Subordination', 'SYM': 'Symbole',
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+ 'VERB': 'Verbe', 'X': 'Autre',
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+ }
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+ }
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+
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+ ENTITY_LABELS = {
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+ 'es': {
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+ "Personas": "lightblue",
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+ "Lugares": "lightcoral",
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+ "Inventos": "lightgreen",
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+ "Fechas": "lightyellow",
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+ "Conceptos": "lightpink"
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+ },
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+ 'en': {
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+ "People": "lightblue",
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+ "Places": "lightcoral",
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+ "Inventions": "lightgreen",
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+ "Dates": "lightyellow",
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+ "Concepts": "lightpink"
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+ },
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+ 'fr': {
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+ "Personnes": "lightblue",
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+ "Lieux": "lightcoral",
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+ "Inventions": "lightgreen",
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+ "Dates": "lightyellow",
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+ "Concepts": "lightpink"
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+ }
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+ }
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+
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+ def identify_and_contextualize_entities(doc, lang):
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+ entities = []
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+ for ent in doc.ents:
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+ # Obtener el contexto (3 palabras antes y después de la entidad)
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+ start = max(0, ent.start - 3)
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+ end = min(len(doc), ent.end + 3)
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+ context = doc[start:end].text
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+
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+ # Mapear las etiquetas de spaCy a nuestras categorías
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+ if ent.label_ in ['PERSON', 'ORG']:
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+ category = "Personas" if lang == 'es' else "People" if lang == 'en' else "Personnes"
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+ elif ent.label_ in ['LOC', 'GPE']:
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+ category = "Lugares" if lang == 'es' else "Places" if lang == 'en' else "Lieux"
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+ elif ent.label_ in ['PRODUCT']:
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+ category = "Inventos" if lang == 'es' else "Inventions" if lang == 'en' else "Inventions"
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+ elif ent.label_ in ['DATE', 'TIME']:
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+ category = "Fechas" if lang == 'es' else "Dates" if lang == 'en' else "Dates"
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+ else:
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+ category = "Conceptos" if lang == 'es' else "Concepts" if lang == 'en' else "Concepts"
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+
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+ entities.append({
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+ 'text': ent.text,
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+ 'label': category,
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+ 'start': ent.start,
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+ 'end': ent.end,
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+ 'context': context
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+ })
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+
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+ # Identificar conceptos clave (usando sustantivos y verbos más frecuentes)
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+ word_freq = Counter([token.lemma_.lower() for token in doc if token.pos_ in ['NOUN', 'VERB'] and not token.is_stop])
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+ key_concepts = word_freq.most_common(10) # Top 10 conceptos clave
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+
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+ return entities, key_concepts
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+
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+ def create_concept_graph(text, concepts):
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+ vectorizer = TfidfVectorizer()
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+ tfidf_matrix = vectorizer.fit_transform([text])
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+ concept_vectors = vectorizer.transform(concepts)
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+ similarity_matrix = cosine_similarity(concept_vectors, concept_vectors)
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+
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+ G = nx.Graph()
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+ for i, concept in enumerate(concepts):
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+ G.add_node(concept)
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+ for j in range(i+1, len(concepts)):
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+ if similarity_matrix[i][j] > 0.1:
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+ G.add_edge(concept, concepts[j], weight=similarity_matrix[i][j])
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+
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+ return G
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+
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+ def visualize_concept_graph(G, lang):
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+ fig, ax = plt.subplots(figsize=(12, 8))
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+ pos = nx.spring_layout(G)
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+
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+ nx.draw_networkx_nodes(G, pos, node_size=3000, node_color='lightblue', ax=ax)
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+ nx.draw_networkx_labels(G, pos, font_size=10, font_weight="bold", ax=ax)
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+ nx.draw_networkx_edges(G, pos, width=1, ax=ax)
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+
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+ edge_labels = nx.get_edge_attributes(G, 'weight')
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+ nx.draw_networkx_edge_labels(G, pos, edge_labels=edge_labels, font_size=8, ax=ax)
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+
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+ title = {
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+ 'es': "Relaciones Conceptuales",
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+ 'en': "Conceptual Relations",
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+ 'fr': "Relations Conceptuelles"
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+ }
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+ ax.set_title(title[lang], fontsize=16)
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+ ax.axis('off')
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+
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+ return fig
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+
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+ def perform_semantic_analysis(text, nlp, lang):
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+ doc = nlp(text)
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+
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+ # Identificar entidades y conceptos clave
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+ entities, key_concepts = identify_and_contextualize_entities(doc, lang)
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+
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+ # Crear y visualizar grafo de conceptos
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+ concepts = [concept for concept, _ in key_concepts]
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+ concept_graph = create_concept_graph(text, concepts)
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+ relations_graph = visualize_concept_graph(concept_graph, lang)
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+
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+ return {
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+ 'entities': entities,
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+ 'key_concepts': key_concepts,
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+ 'relations_graph': relations_graph
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+ }
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+
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+ __all__ = ['perform_semantic_analysis', 'ENTITY_LABELS', 'POS_TRANSLATIONS']