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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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| import io
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| import base64
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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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| import logging
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|
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| logger = logging.getLogger(__name__)
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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': 'Preposici贸n', 'ADV': 'Adverbio', 'AUX': 'Auxiliar',
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| 'CCONJ': 'Conjunci贸n Coordinante', 'DET': 'Determinante', 'INTJ': 'Interjecci贸n',
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| 'NOUN': 'Sustantivo', 'NUM': 'N煤mero', 'PART': 'Part铆cula', 'PRON': 'Pronombre',
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| 'PROPN': 'Nombre Propio', 'SCONJ': 'Conjunci贸n Subordinante', 'SYM': 'S铆mbolo',
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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': 'Pr茅position', 'ADV': 'Adverbe', 'AUX': 'Auxiliaire',
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| 'CCONJ': 'Conjonction de Coordination', 'DET': 'D茅terminant', '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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| def perform_semantic_analysis(text, nlp, lang_code):
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| logger.info(f"Starting semantic analysis for language: {lang_code}")
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| try:
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| doc = nlp(text)
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| key_concepts = identify_key_concepts(doc)
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| concept_graph = create_concept_graph(doc, key_concepts)
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| concept_graph_fig = visualize_concept_graph(concept_graph, lang_code)
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| entities = extract_entities(doc, lang_code)
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| entity_graph = create_entity_graph(entities)
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| entity_graph_fig = visualize_entity_graph(entity_graph, lang_code)
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|
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| logger.info("Semantic analysis completed successfully")
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| return {
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| 'doc': doc,
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| 'key_concepts': key_concepts,
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| 'concept_graph': concept_graph_fig,
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| 'entities': entities,
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| 'entity_graph': entity_graph_fig
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| }
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| except Exception as e:
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| logger.error(f"Error in perform_semantic_analysis: {str(e)}")
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| raise
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|
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| '''
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| def fig_to_html(fig):
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| buf = io.BytesIO()
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| fig.savefig(buf, format='png')
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| buf.seek(0)
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| img_str = base64.b64encode(buf.getvalue()).decode()
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| return f'<img src="data:image/png;base64,{img_str}" />'
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| '''
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|
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| def identify_key_concepts(doc):
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| logger.info("Identifying key concepts")
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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)
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| return [(concept, float(freq)) for concept, freq in key_concepts]
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|
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| def create_concept_graph(doc, key_concepts):
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| G = nx.Graph()
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| for concept, freq in key_concepts:
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| G.add_node(concept, weight=freq)
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| for sent in doc.sents:
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| sent_concepts = [token.lemma_.lower() for token in sent if token.lemma_.lower() in dict(key_concepts)]
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| for i, concept1 in enumerate(sent_concepts):
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| for concept2 in sent_concepts[i+1:]:
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| if G.has_edge(concept1, concept2):
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| G[concept1][concept2]['weight'] += 1
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| else:
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| G.add_edge(concept1, concept2, weight=1)
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| return G
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|
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| def visualize_concept_graph(G, lang_code):
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| fig, ax = plt.subplots(figsize=(12, 8))
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| pos = nx.spring_layout(G, k=0.5, iterations=50)
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| node_sizes = [G.nodes[node]['weight'] * 100 for node in G.nodes()]
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| nx.draw_networkx_nodes(G, pos, node_size=node_sizes, node_color='lightblue', alpha=0.8, ax=ax)
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| nx.draw_networkx_labels(G, pos, font_size=10, font_weight="bold", ax=ax)
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| edge_weights = [G[u][v]['weight'] for u, v in G.edges()]
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| nx.draw_networkx_edges(G, pos, width=edge_weights, alpha=0.5, ax=ax)
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| title = {
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| 'es': "Relaciones entre Conceptos Clave",
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| 'en': "Key Concept Relations",
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| 'fr': "Relations entre Concepts Cl茅s"
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| }
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| ax.set_title(title[lang_code], fontsize=16)
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| ax.axis('off')
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| plt.tight_layout()
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| return fig
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|
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| def create_entity_graph(entities):
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| G = nx.Graph()
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| for entity_type, entity_list in entities.items():
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| for entity in entity_list:
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| G.add_node(entity, type=entity_type)
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| for i, entity1 in enumerate(entity_list):
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| for entity2 in entity_list[i+1:]:
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| G.add_edge(entity1, entity2)
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| return G
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|
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| def visualize_entity_graph(G, lang_code):
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| fig, ax = plt.subplots(figsize=(12, 8))
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| pos = nx.spring_layout(G)
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| for entity_type, color in ENTITY_LABELS[lang_code].items():
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| node_list = [node for node, data in G.nodes(data=True) if data['type'] == entity_type]
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| nx.draw_networkx_nodes(G, pos, nodelist=node_list, node_color=color, node_size=500, alpha=0.8, ax=ax)
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| nx.draw_networkx_edges(G, pos, width=1, alpha=0.5, ax=ax)
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| nx.draw_networkx_labels(G, pos, font_size=8, font_weight="bold", ax=ax)
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| ax.set_title(f"Relaciones entre Entidades ({lang_code})", fontsize=16)
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| ax.axis('off')
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| plt.tight_layout()
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| return fig
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|
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|
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| def create_topic_graph(topics, doc):
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| G = nx.Graph()
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| for topic in topics:
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| G.add_node(topic, weight=doc.text.count(topic))
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| for i, topic1 in enumerate(topics):
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| for topic2 in topics[i+1:]:
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| weight = sum(1 for sent in doc.sents if topic1 in sent.text and topic2 in sent.text)
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| if weight > 0:
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| G.add_edge(topic1, topic2, weight=weight)
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| return G
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|
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| def visualize_topic_graph(G, lang_code):
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| fig, ax = plt.subplots(figsize=(12, 8))
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| pos = nx.spring_layout(G)
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| node_sizes = [G.nodes[node]['weight'] * 100 for node in G.nodes()]
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| nx.draw_networkx_nodes(G, pos, node_size=node_sizes, node_color='lightgreen', alpha=0.8, ax=ax)
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| nx.draw_networkx_labels(G, pos, font_size=10, font_weight="bold", ax=ax)
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| edge_weights = [G[u][v]['weight'] for u, v in G.edges()]
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| nx.draw_networkx_edges(G, pos, width=edge_weights, alpha=0.5, ax=ax)
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| ax.set_title(f"Relaciones entre Temas ({lang_code})", fontsize=16)
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| ax.axis('off')
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| plt.tight_layout()
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| return fig
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|
|
|
|
| def generate_summary(doc, lang_code):
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| sentences = list(doc.sents)
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| summary = sentences[:3]
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| return " ".join([sent.text for sent in summary])
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|
|
| def extract_entities(doc, lang_code):
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| entities = defaultdict(list)
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| for ent in doc.ents:
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| if ent.label_ in ENTITY_LABELS[lang_code]:
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| entities[ent.label_].append(ent.text)
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| return dict(entities)
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|
|
| def analyze_sentiment(doc, lang_code):
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| positive_words = sum(1 for token in doc if token.sentiment > 0)
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| negative_words = sum(1 for token in doc if token.sentiment < 0)
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| total_words = len(doc)
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| if positive_words > negative_words:
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| return "Positivo"
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| elif negative_words > positive_words:
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| return "Negativo"
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| else:
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| return "Neutral"
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|
|
| def extract_topics(doc, lang_code):
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| vectorizer = TfidfVectorizer(stop_words='english', max_features=5)
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| tfidf_matrix = vectorizer.fit_transform([doc.text])
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| feature_names = vectorizer.get_feature_names_out()
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| return list(feature_names)
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|
|
|
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| __all__ = [
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| 'perform_semantic_analysis',
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| 'identify_key_concepts',
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| 'create_concept_graph',
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| 'visualize_concept_graph',
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| 'create_entity_graph',
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| 'visualize_entity_graph',
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| 'generate_summary',
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| 'extract_entities',
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| 'analyze_sentiment',
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| 'create_topic_graph',
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| 'visualize_topic_graph',
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| 'extract_topics',
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| 'ENTITY_LABELS',
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| 'POS_COLORS',
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| 'POS_TRANSLATIONS'
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| ] |