nlp feature
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47
dbm_lib/dbm_features/raw_features/nlp/speech_features.py
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47
dbm_lib/dbm_features/raw_features/nlp/speech_features.py
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"""
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file_name: speech_features
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project_name: DBM
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created: 2020-13-11
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"""
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import os
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import numpy as np
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import pandas as pd
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import glob
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from os.path import join
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import logging
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from dbm_lib.dbm_features.raw_features.util import util as ut
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from dbm_lib.dbm_features.raw_features.util import nlp_util as n_util
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logging.basicConfig(level=logging.INFO)
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logger=logging.getLogger()
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speech_dir = 'nlp/speech_feature'
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speech_ext = '_nlp.csv'
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transcribe_ext = 'nlp/transcribe/*_transcribe.csv'
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def run_speech_feature(video_uri, out_dir, r_config):
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"""
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Processing all patient's for fetching nlp features
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-------------------
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-------------------
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Args:
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video_uri: video path; r_config: raw variable config object
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out_dir: (str) Output directory for processed output
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"""
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try:
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input_loc, out_loc, fl_name = ut.filter_path(video_uri, out_dir)
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transcribe_path = glob.glob(join(out_loc, transcribe_ext))
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if len(transcribe_path)>0:
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transcribe_df = pd.read_csv(transcribe_path[0])
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df_speech= n_util.process_speech(transcribe_df, r_config)
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logger.info('Saving Output file {} '.format(out_loc))
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ut.save_output(df_speech, out_loc, fl_name, speech_dir, speech_ext)
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except Exception as e:
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logger.error('Failed to process video file')
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@@ -21,7 +21,7 @@ formant_dir = 'nlp/transcribe'
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csv_ext = '_transcribe.csv'
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error_txt = 'error: length less than 0.1'
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def calc_transcribe(video_uri, audio_file, out_loc, fl_name, r_config, deep_path):
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def calc_transcribe(video_uri, audio_file, out_loc, fl_name, r_config, deep_path, aud_dur):
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"""
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Preparing Formant freq matrix
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Args:
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@@ -33,6 +33,7 @@ def calc_transcribe(video_uri, audio_file, out_loc, fl_name, r_config, deep_path
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df_formant = pd.DataFrame([text], columns=[r_config.nlp_transcribe])
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df_formant.replace('', np.nan, regex=True,inplace=True)
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df_formant[r_config.nlp_totalTime] = aud_dur
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df_formant[r_config.err_reason] = 'Pass'# will replace with threshold in future release
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df_formant['dbm_master_url'] = video_uri
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@@ -44,8 +45,8 @@ def empty_transcribe(video_uri, out_loc, fl_name, r_config):
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"""
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Preparing empty formant frequency matrix if something fails
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"""
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cols = [r_config.nlp_transcribe, r_config.err_reason]
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out_val = [[np.nan, error_txt]]
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cols = [r_config.nlp_transcribe, r_config.nlp_totalTime, r_config.err_reason]
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out_val = [[np.nan, np.nan, error_txt]]
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df_fm = pd.DataFrame(out_val, columns = cols)
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df_fm['dbm_master_url'] = video_uri
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@@ -77,6 +78,7 @@ def run_transcribe(video_uri, out_dir, r_config, deep_path):
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empty_transcribe(video_uri, out_loc, fl_name, r_config)
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return
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calc_transcribe(video_uri, audio_file, out_loc, fl_name, r_config, deep_path)
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calc_transcribe(video_uri, audio_file, out_loc, fl_name, r_config, deep_path, aud_dur)
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except Exception as e:
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logger.error('Failed to process audio file')
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logger.error('Failed to process audio file')
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@@ -11,6 +11,11 @@ import pandas as pd
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import os
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import logging
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import nltk
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import re
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from lexicalrichness import LexicalRichness
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from vaderSentiment.vaderSentiment import SentimentIntensityAnalyzer
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logging.basicConfig(level=logging.INFO)
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logger=logging.getLogger()
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@@ -64,3 +69,144 @@ def process_deepspeech(audio_file,deep_path):
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deep_text= deep_speech_output_clean(deep_output)
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return deep_text
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def nltk_download():
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try:
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nltk.data.find('tokenizers/punkt')
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except LookupError:
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logger.info('punkt is not available')
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nltk.download('punkt')
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try:
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nltk.data.find('averaged_perceptron_tagger')
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except LookupError:
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logger.info('averaged_perceptron_tagger is not available')
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nltk.download('averaged_perceptron_tagger')
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def empty_speech(r_config, master_url, error_txt):
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"""
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Preparing empty speech matrix with error
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Args:
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r_config: raw config file object
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error_txt: Error message during transcription
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Returns:
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Empty dataframe for speech features with error
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"""
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col = [r_config.nlp_numSentences, r_config.nlp_singPronPerAns, r_config.nlp_singPronPerSen, r_config.nlp_pastTensePerAns,
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r_config.nlp_pastTensePerSen, r_config.nlp_pronounsPerAns, r_config.nlp_pronounsPerSen, r_config.nlp_verbsPerAns,
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r_config.nlp_verbsPerSen, r_config.nlp_adjectivesPerAns, r_config.nlp_adjectivesPerSen, r_config.nlp_nounsPerAns,
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r_config.nlp_nounsPerSen, r_config.nlp_sentiment_mean, r_config.nlp_mattr, r_config.nlp_wordsPerMin,
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r_config.nlp_totalTime, r_config.err_reason]
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df_speech = pd.DataFrame([[np.nan] * len(col) + [error_txt]], columns = col)
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df_speech['dbm_master_url'] = master_url
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return df_speech
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def divide_var(speech_var1, spech_var2):
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"""
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divide variables
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"""
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speech_var = np.nan
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if spech_var2!=0:
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speech_var = speech_var1/spech_var2
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return speech_var
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def process_speech(transcribe_df,r_config):
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"""
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Preparing speech features
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Args:
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transcribe_df: Transcribed dataframe
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r_config: raw config file object
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Returns:
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Dataframe for speech features
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"""
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err_transcribe = transcribe_df[r_config.err_reason].iloc[0]
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transcribe = transcribe_df[r_config.nlp_transcribe].iloc[0]
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total_time = transcribe_df[r_config.nlp_totalTime].iloc[0]
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master_url = transcribe_df['dbm_master_url'].iloc[0]
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#clean transcribe
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transcribe = transcribe.replace(",", "")
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transcribe = " ".join(re.findall(r"[\w']+|[.!?]", transcribe))
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if err_transcribe != 'Pass':
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df_speech = empty_speech(r_config, master_url, error_txt)
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return df_speech
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speech_dict = {}
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nltk_download()
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sentences = nltk.tokenize.sent_tokenize(transcribe)
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words_all = nltk.tokenize.word_tokenize(transcribe)
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num_sentences = len(sentences)
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speech_dict[r_config.nlp_numSentences] = num_sentences
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#nlp_singPron
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i_s = transcribe.count('I')
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me_s = transcribe.count('me')
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my_s = transcribe.count('my')
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sing_count = i_s + me_s + my_s
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speech_dict[r_config.nlp_singPronPerAns] = sing_count if len(words_all)>0 else np.nan
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speech_dict[r_config.nlp_singPronPerSen] = divide_var(speech_dict[r_config.nlp_singPronPerAns], num_sentences)
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tagged = nltk.pos_tag(transcribe.split())
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tagged_df = pd.DataFrame(tagged, columns=['word', 'pos_tag'])
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#Past tense per answer
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all_POSs = tagged_df['pos_tag'].tolist()
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speech_dict[r_config.nlp_pastTensePerAns] = all_POSs.count('VBD') if len(words_all)>0 else np.nan
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speech_dict[r_config.nlp_pastTensePerSen] = divide_var(speech_dict[r_config.nlp_pastTensePerAns], num_sentences)
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#Pronoun per answer
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pronounsPerAns = all_POSs.count('PRP') + all_POSs.count('PRP$')
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speech_dict[r_config.nlp_pronounsPerAns] = pronounsPerAns if len(words_all)>0 else np.nan
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speech_dict[r_config.nlp_pronounsPerSen] = divide_var(speech_dict[r_config.nlp_pronounsPerAns], num_sentences)
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#Verb per answer
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verbPerAns = all_POSs.count('VB') + all_POSs.count('VBD') + all_POSs.count('VBG') \
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+ all_POSs.count('VBN') + all_POSs.count('VBP') + all_POSs.count('VBZ')
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speech_dict[r_config.nlp_verbsPerAns] = verbPerAns if len(words_all) > 0 else np.nan
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speech_dict[r_config.nlp_verbsPerSen] = divide_var(speech_dict[r_config.nlp_verbsPerAns], num_sentences)
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#Adjective per answer
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adjectivesAns = all_POSs.count('JJ') + all_POSs.count('JJR') + all_POSs.count('JJS')
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speech_dict[r_config.nlp_adjectivesPerAns] = adjectivesAns if len(words_all) > 0 else np.nan
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speech_dict[r_config.nlp_adjectivesPerSen] = divide_var(speech_dict[r_config.nlp_adjectivesPerAns], num_sentences)
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#Noun per answer
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nounsAns = all_POSs.count('NN') + all_POSs.count('NNP') + all_POSs.count('NNS')
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speech_dict[r_config.nlp_nounsPerAns] = nounsAns if len(words_all) > 0 else np.nan
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speech_dict[r_config.nlp_nounsPerSen] = divide_var(speech_dict[r_config.nlp_nounsPerAns], num_sentences)
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#Sentiment analysis
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vader = SentimentIntensityAnalyzer()
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sentence_valences = []
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for s in sentences:
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sentiment_dict = vader.polarity_scores(s)
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sentence_valences.append(sentiment_dict['compound'])
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speech_dict[r_config.nlp_sentiment_mean] = np.mean(sentence_valences) if len(sentence_valences) > 0 else np.nan
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non_punc = list(value for value in words_all if value not in ['.','!','?'])
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non_punc_as_str = " ".join(str(non_punc))
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lex = LexicalRichness(non_punc_as_str)
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speech_dict[r_config.nlp_mattr] = lex.mattr(window_size=lex.words) if lex.words > 0 else np.nan
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#Number of words per minute
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speech_dict[r_config.nlp_wordsPerMin] = divide_var(len(non_punc), total_time)*60
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speech_dict[r_config.nlp_totalTime] = total_time
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speech_dict['dbm_master_url'] = master_url
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df_speech = pd.DataFrame([speech_dict])
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return df_speech
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