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| import gradio as gr | |
| import pandas as pd | |
| import matplotlib.pyplot as plt | |
| import numpy as np | |
| import nltk, spacy, gensim | |
| from sklearn.decomposition import LatentDirichletAllocation | |
| from sklearn.feature_extraction.text import CountVectorizer | |
| from pprint import pprint | |
| def concat_comments(sup_comment: list[str], comment: list[str]) -> list[str]: | |
| format_s = "{s}\n{c}" | |
| return [ | |
| format_s.format(s=s, c=c) for s, c in zip(sup_comment, comment) | |
| ] | |
| def sent_to_words(sentences): | |
| for sentence in sentences: | |
| yield(gensim.utils.simple_preprocess(str(sentence), deacc=True)) # deacc=True removes punctuations | |
| def lemmatization(texts, allowed_postags=['NOUN', 'ADJ', 'VERB', 'ADV']): #'NOUN', 'ADJ', 'VERB', 'ADV' | |
| texts_out = [] | |
| for sent in texts: | |
| doc = nlp(" ".join(sent)) | |
| texts_out.append(" ".join([ | |
| token.lemma_ if token.lemma_ not in ['-PRON-'] else '' for token in doc if token.pos_ in allowed_postags | |
| ])) | |
| return texts_out | |
| def main(button, choose_context): | |
| df = pd.read_csv('./data/results.csv', index_col=0) | |
| if choose_context == 'comment': | |
| data = df.comment | |
| elif choose_context == 'sup comment': | |
| data = df.sup_comment | |
| elif choose_context == 'sup comment + comment': | |
| data = concat_comments(df.sup_comment, df.comment) | |
| data_words = list(sent_to_words(data)) | |
| nlp = spacy.load("en_core_web_sm", disable=["parser", "ner"]) | |
| data_lemmatized = lemmatization(data_words, allowed_postags=["NOUN", "ADJ"]) #select noun and verb | |
| vectorizer = CountVectorizer( | |
| analyzer='word', | |
| min_df=10, | |
| stop_words='english', | |
| lowercase=True, | |
| token_pattern='[a-zA-Z0-9]{3,}' | |
| ) | |
| data_vectorized = vectorizer.fit_transform(data_lemmatized) | |
| lda_model = LatentDirichletAllocation( | |
| n_components=5, | |
| max_iter=10, | |
| learning_method='online', | |
| random_state=100, | |
| batch_size=128, | |
| evaluate_every = -1, | |
| n_jobs = -1, | |
| ) | |
| lda_output = lda_model.fit_transform(data_vectorized) | |
| print(lda_model) # Model attributes | |
| # Log Likelyhood: Higher the better | |
| print("Log Likelihood: ", lda_model.score(data_vectorized)) | |
| # Perplexity: Lower the better. Perplexity = exp(-1. * log-likelihood per word) | |
| print("Perplexity: ", lda_model.perplexity(data_vectorized)) | |
| # See model parameters | |
| pprint(lda_model.get_params()) | |
| best_lda_model = lda_model | |
| lda_output = best_lda_model.transform(data_vectorized) | |
| topicnames = ["Topic" + str(i) for i in range(best_lda_model.n_components)] | |
| docnames = ["Doc" + str(i) for i in range(len(data))] | |
| df_document_topic = pd.DataFrame(np.round(lda_output, 2), columns=topicnames, index=docnames) | |
| dominant_topic = np.argmax(df_document_topic.values, axis=1) | |
| df_document_topic["dominant_topic"] = dominant_topic | |
| # Topic-Keyword Matrix | |
| df_topic_keywords = pd.DataFrame(best_lda_model.components_) | |
| df_topic_keywords | |
| # Assign Column and Index | |
| df_topic_keywords.columns = vectorizer.get_feature_names_out() | |
| df_topic_keywords.index = topicnames | |
| # View | |
| df_topic_keywords | |
| # Show top n keywords for each topic | |
| def show_topics(vectorizer=vectorizer, lda_model=lda_model, n_words=20): | |
| keywords = np.array(vectorizer.get_feature_names_out()) | |
| topic_keywords = [] | |
| for topic_weights in lda_model.components_: | |
| top_keyword_locs = (-topic_weights).argsort()[:n_words] | |
| topic_keywords.append(keywords.take(top_keyword_locs)) | |
| return topic_keywords | |
| topic_keywords = show_topics(vectorizer=vectorizer, lda_model=best_lda_model, n_words=15) | |
| # Topic - Keywords Dataframe | |
| df_topic_keywords = pd.DataFrame(topic_keywords) | |
| df_topic_keywords.columns = ['Word '+str(i) for i in range(df_topic_keywords.shape[1])] | |
| df_topic_keywords.index = ['Topic '+str(i) for i in range(df_topic_keywords.shape[0])] | |
| df_topic_keywords | |
| topics = [ | |
| f'Topic {i}' for i in range(len(df_topic_keywords)) | |
| ] | |
| df_topic_keywords["Topics"] = topics | |
| df_topic_keywords | |
| # # Define function to predict topic for a given text document. | |
| # nlp = spacy.load('en_core_web_sm', disable=['parser', 'ner']) | |
| # def predict_topic(text, nlp=nlp): | |
| # global sent_to_words | |
| # global lemmatization | |
| # # Step 1: Clean with simple_preprocess | |
| # mytext_2 = list(sent_to_words(text)) | |
| # # Step 2: Lemmatize | |
| # mytext_3 = lemmatization(mytext_2, allowed_postags=['NOUN', 'ADJ', 'VERB', 'ADV']) | |
| # # Step 3: Vectorize transform | |
| # mytext_4 = vectorizer.transform(mytext_3) | |
| # # Step 4: LDA Transform | |
| # topic_probability_scores = best_lda_model.transform(mytext_4) | |
| # topic = df_topic_keywords.iloc[np.argmax(topic_probability_scores), 1:14].values.tolist() | |
| # # Step 5: Infer Topic | |
| # infer_topic = df_topic_keywords.iloc[np.argmax(topic_probability_scores), -1] | |
| # #topic_guess = df_topic_keywords.iloc[np.argmax(topic_probability_scores), Topics] | |
| # return infer_topic, topic, topic_probability_scores | |
| # # Predict the topic | |
| # mytext = ["This is a test of a random topic where I talk about politics"] | |
| # infer_topic, topic, prob_scores = predict_topic(text = mytext) | |
| def apply_predict_topic(text): | |
| text = [text] | |
| infer_topic, topic, prob_scores = predict_topic(text = text) | |
| return(infer_topic) | |
| df["Topic_key_word"] = df['comment'].apply(apply_predict_topic) | |
| # plot | |
| subreddits = df.subreddit.value_counts().index[:22] | |
| weight_counts = { | |
| t: [ | |
| df[df.Topic_key_word == t].subreddit.value_counts()[subreddit] / df.subreddit.value_counts()[subreddit] for subreddit in subreddits | |
| ] for t in topics | |
| } | |
| irony_percs = { | |
| t: [ | |
| len( | |
| df[df.subreddit == subreddit][(df[df.subreddit == subreddit].Topic_key_word == t) & (df[df.subreddit == subreddit].label == 1)] | |
| ) / | |
| len( | |
| df[df.subreddit == subreddit] | |
| ) for subreddit in subreddits | |
| ] for t in topics | |
| } | |
| width = 0.9 | |
| fig, ax = plt.subplots(figsize = (10, 7)) | |
| plt.axhline(0.5, color = 'red', ls=":", alpha = .3) | |
| bottom = np.zeros(len(subreddits)) | |
| for k, v in weight_counts.items(): | |
| p = ax.bar(subreddits, v, width, label=k, bottom=bottom) | |
| ax.bar(subreddits, irony_percs[k], width - 0.01, bottom=bottom, color = 'black', edgecolor = 'white', alpha = .2, hatch = '\\') | |
| bottom += v | |
| ax.set_title("Perc of topics for each subreddit") | |
| ax.legend(loc="upper right") | |
| plt.xticks(rotation=70) | |
| return fig | |
| with gr.Blocks() as demo: | |
| button = gr.Radio( | |
| label="Plot type", | |
| choices=['scatter_plot', 'heatmap', 'us_map', 'interactive_barplot', "radial", "multiline"], value='scatter_plot' | |
| ) | |
| choose_context = gr.Radio( | |
| label="Context LDA", | |
| choices=['comment', 'sup comment', 'sup comment + comment'], value='sup comment' | |
| ) | |
| plot = gr.Plot(label="Plot") | |
| button.change(main, inputs=[button, choose_context], outputs=[plot]) | |
| demo.load(main, inputs=[button], outputs=[plot]) | |
| # iface = gr.Interface(fn=greet, inputs="text", outputs="text") | |
| if __name__ == "__main__": | |
| demo.launch() | |