| |
|
|
| import spacy |
| from collections import Counter |
| from spacy import displacy |
| import re |
| from streamlit.components.v1 import html |
| import base64 |
|
|
| from collections import Counter |
| import re |
| from ..utils.widget_utils import generate_unique_key |
|
|
| import logging |
| logger = logging.getLogger(__name__) |
|
|
|
|
| |
| POS_COLORS = { |
| 'ADJ': '#FFA07A', |
| 'ADP': '#98FB98', |
| 'ADV': '#87CEFA', |
| 'AUX': '#DDA0DD', |
| 'CCONJ': '#F0E68C', |
| 'DET': '#FFB6C1', |
| 'INTJ': '#FF6347', |
| 'NOUN': '#90EE90', |
| 'NUM': '#FAFAD2', |
| 'PART': '#D3D3D3', |
| 'PRON': '#FFA500', |
| 'PROPN': '#20B2AA', |
| 'SCONJ': '#DEB887', |
| 'SYM': '#7B68EE', |
| 'VERB': '#FF69B4', |
| 'X': '#A9A9A9', |
| } |
|
|
| POS_TRANSLATIONS = { |
| 'es': { |
| 'ADJ': 'Adjetivo', 'ADP': 'Preposición', 'ADV': 'Adverbio', 'AUX': 'Auxiliar', |
| 'CCONJ': 'Conjunción Coordinante', 'DET': 'Determinante', 'INTJ': 'Interjección', |
| 'NOUN': 'Sustantivo', 'NUM': 'Número', 'PART': 'Partícula', 'PRON': 'Pronombre', |
| 'PROPN': 'Nombre Propio', 'SCONJ': 'Conjunción Subordinante', 'SYM': 'Símbolo', |
| 'VERB': 'Verbo', 'X': 'Otro', |
| }, |
| 'en': { |
| 'ADJ': 'Adjective', 'ADP': 'Preposition', 'ADV': 'Adverb', 'AUX': 'Auxiliary', |
| 'CCONJ': 'Coordinating Conjunction', 'DET': 'Determiner', 'INTJ': 'Interjection', |
| 'NOUN': 'Noun', 'NUM': 'Number', 'PART': 'Particle', 'PRON': 'Pronoun', |
| 'PROPN': 'Proper Noun', 'SCONJ': 'Subordinating Conjunction', 'SYM': 'Symbol', |
| 'VERB': 'Verb', 'X': 'Other', |
| }, |
| 'uk': { |
| 'ADJ': 'Прикметник', 'ADP': 'Прийменник', 'ADV': 'Прислівник', 'AUX': 'Допоміжне дієслово', |
| 'CCONJ': 'Сурядний сполучник', 'DET': 'Означник', 'INTJ': 'Вигук', |
| 'NOUN': 'Іменник', 'NUM': 'Число', 'PART': 'Частка', 'PRON': 'Займенник', |
| 'PROPN': 'Власна назва', 'SCONJ': 'Підрядний сполучник', 'SYM': 'Символ', |
| 'VERB': 'Дієслово', 'X': 'Інше', |
| } |
| } |
|
|
| |
| def get_repeated_words_colors(doc): |
| word_counts = Counter(token.text.lower() for token in doc if token.pos_ != 'PUNCT') |
| repeated_words = {word: count for word, count in word_counts.items() if count > 1} |
|
|
| word_colors = {} |
| for token in doc: |
| if token.text.lower() in repeated_words: |
| word_colors[token.text.lower()] = POS_COLORS.get(token.pos_, '#FFFFFF') |
|
|
| return word_colors |
| |
| |
| def highlight_repeated_words(doc, word_colors): |
| highlighted_text = [] |
| for token in doc: |
| if token.text.lower() in word_colors: |
| color = word_colors[token.text.lower()] |
| highlighted_text.append(f'<span style="background-color: {color};">{token.text}</span>') |
| else: |
| highlighted_text.append(token.text) |
| return ' '.join(highlighted_text) |
| |
| |
|
|
| def generate_arc_diagram(doc): |
| """ |
| Genera diagramas de arco para cada oración en el documento usando spacy-streamlit. |
| |
| Args: |
| doc: Documento procesado por spaCy |
| Returns: |
| list: Lista de diagramas en formato HTML |
| """ |
| arc_diagrams = [] |
| try: |
| options = { |
| "compact": False, |
| "color": "#ffffff", |
| "bg": "#0d6efd", |
| "font": "Arial", |
| "offset_x": 50, |
| "distance": 100, |
| "arrow_spacing": 12, |
| "arrow_width": 2, |
| "arrow_stroke": 2, |
| "word_spacing": 25, |
| "maxZoom": 2 |
| } |
|
|
| for sent in doc.sents: |
| try: |
| |
| html = displacy.render(sent, style="dep", options=options) |
| arc_diagrams.append(html) |
| except Exception as e: |
| logger.error(f"Error al renderizar oración: {str(e)}") |
| continue |
|
|
| return arc_diagrams |
| except Exception as e: |
| logger.error(f"Error general en generate_arc_diagram: {str(e)}") |
| return None |
|
|
| |
| |
| def get_detailed_pos_analysis(doc): |
| """ |
| Realiza un análisis detallado de las categorías gramaticales (POS) en el texto. |
| """ |
| pos_counts = Counter(token.pos_ for token in doc) |
| total_tokens = len(doc) |
| pos_analysis = [] |
| for pos, count in pos_counts.items(): |
| percentage = (count / total_tokens) * 100 |
| pos_analysis.append({ |
| 'pos': pos, |
| 'count': count, |
| 'percentage': round(percentage, 2), |
| 'examples': [token.text for token in doc if token.pos_ == pos][:5] |
| }) |
| return sorted(pos_analysis, key=lambda x: x['count'], reverse=True) |
|
|
| |
| def get_morphological_analysis(doc): |
| """ |
| Realiza un análisis morfológico detallado de las palabras en el texto. |
| """ |
| morphology_analysis = [] |
| for token in doc: |
| if token.pos_ in ['NOUN', 'VERB', 'ADJ', 'ADV']: |
| morphology_analysis.append({ |
| 'text': token.text, |
| 'lemma': token.lemma_, |
| 'pos': token.pos_, |
| 'tag': token.tag_, |
| 'dep': token.dep_, |
| 'shape': token.shape_, |
| 'is_alpha': token.is_alpha, |
| 'is_stop': token.is_stop, |
| 'morph': str(token.morph) |
| }) |
| return morphology_analysis |
|
|
| |
| def get_sentence_structure_analysis(doc): |
| """ |
| Analiza la estructura de las oraciones en el texto. |
| """ |
| sentence_analysis = [] |
| for sent in doc.sents: |
| sentence_analysis.append({ |
| 'text': sent.text, |
| 'root': sent.root.text, |
| 'root_pos': sent.root.pos_, |
| 'num_tokens': len(sent), |
| 'num_words': len([token for token in sent if token.is_alpha]), |
| 'subjects': [token.text for token in sent if "subj" in token.dep_], |
| 'objects': [token.text for token in sent if "obj" in token.dep_], |
| 'verbs': [token.text for token in sent if token.pos_ == "VERB"] |
| }) |
| return sentence_analysis |
| |
| |
| def perform_advanced_morphosyntactic_analysis(text, nlp): |
| """ |
| Realiza un análisis morfosintáctico avanzado del texto. |
| """ |
| try: |
| |
| model_lang = nlp.lang |
| logger.info(f"Realizando análisis con modelo de idioma: {model_lang}") |
| |
| |
| doc = nlp(text) |
| |
| |
| return { |
| 'doc': doc, |
| 'pos_analysis': get_detailed_pos_analysis(doc), |
| 'morphological_analysis': get_morphological_analysis(doc), |
| 'sentence_structure': get_sentence_structure_analysis(doc), |
| 'arc_diagrams': generate_arc_diagram(doc), |
| 'repeated_words': get_repeated_words_colors(doc), |
| 'highlighted_text': highlight_repeated_words(doc, get_repeated_words_colors(doc)) |
| } |
| except Exception as e: |
| logger.error(f"Error en análisis morfosintáctico: {str(e)}") |
| return None |
|
|
| |
| __all__ = [ |
| 'perform_advanced_morphosyntactic_analysis', |
| 'get_repeated_words_colors', |
| 'highlight_repeated_words', |
| 'generate_arc_diagram', |
| 'get_detailed_pos_analysis', |
| 'get_morphological_analysis', |
| 'get_sentence_structure_analysis', |
| 'POS_COLORS', |
| 'POS_TRANSLATIONS' |
| ] |
|
|