import nltk from nltk.sentiment import SentimentIntensityAnalyzer # Download NLTK resources (only need to run once) nltk.download('vader_lexicon') # Sample text for sentiment analysis with open("lks.txt", 'r') as file: fl = file.read() contactId = fl.split("|")[0] transcript=fl.split("|")[1] transcript=transcript.replace("'",'') # Initialize the sentiment analyzer sia = SentimentIntensityAnalyzer() print(transcript) # Analyze sentiment sentiment_score = sia.polarity_scores(transcript) # Initialize dictionary to store tone counts tones = { 'analytical': 0, 'anger': 0, 'confident': 0, 'fear': 0, 'joy': 0, 'sadness': 0, 'tentative': 0 } # Apply thresholds and count tones if sentiment_score['compound'] >= 0.05: # Threshold for positive sentiment tones['joy'] += 1 elif sentiment_score['compound'] <= -0.05: # Threshold for negative sentiment tones['anger'] += 1 elif sentiment_score['neg'] >= 0.5: # Threshold for high negativity tones['sadness'] += 1 elif sentiment_score['pos'] <= 0.2: # Threshold for low positivity tones['fear'] += 1 elif sentiment_score['neu'] >= 0.5: # Threshold for high neutrality tones['tentative'] += 1 else: # Otherwise, consider it analytical or confident tones['analytical'] += 1 tones['confident'] += 1 # Print tone counts print("Tone Counts:", tones) # sample output #Tone Counts: {'analytical': 0, 'anger': 0, 'confident': 0, 'fear': 0, 'joy': 1, 'sadness': 0, 'tentative': 0}