Klasifikasi transkrip ucapan dengan Sklearn

Pemrosesan Bahasa Lisan dengan Python

Daniel Bourke

Machine Learning Engineer/YouTube creator

Memeriksa data

# Periksa folder audio post purchase
import os
post_purchase_audio = os.listdir("post_purchase")
print(post_purchase_audio[:5])
['post-purchase-audio-0.mp3',
  'post-purchase-audio-1.mp3',
  'post-purchase-audio-2.mp3',
  'post-purchase-audio-3.mp3',
  'post-purchase-audio-4.mp3']
Pemrosesan Bahasa Lisan dengan Python

Mengonversi ke wav

# Loop melalui file mp3
for file in post_purchase_audio:
  print(f"Converting {file} to .wav...")
  # Gunakan fungsi sebelumnya untuk konversi ke .wav
  convert_to_wav(file)
Converting post-purchase-audio-0.mp3 to .wav...
Converting post-purchase-audio-1.mp3 to .wav...
Converting post-purchase-audio-2.mp3 to .wav...
Converting post-purchase-audio-3.mp3 to .wav...
Converting post-purchase-audio-4.mp3 to .wav...
Pemrosesan Bahasa Lisan dengan Python

Men-transkripsi semua cuplikan panggilan

# Transkripsikan teks dari file wav
def create_text_list(folder):

text_list = []
# Loop melalui folder for file in folder:
# Periksa ekstensi .wav if file.endswith(".wav"):
# Transkripsi audio text = transcribe_audio(file)
# Tambahkan teks transkrip ke daftar text_list.append(text)
return text_list
Pemrosesan Bahasa Lisan dengan Python

Men-transkripsi semua cuplikan panggilan

# Konversi audio post purchase ke teks
post_purchase_text = create_text_list(post_purchase_audio)

print(post_purchase_text[:5])
['hey man I just water product from you guys and I think is amazing but I leave a little help setting it up',
 'these clothes I just bought from you guys too small is there anyway I can change the size',
 "I recently got these pair of shoes but they're too big can I change the size",
 "I bought a pair of pants from you guys but they're way too small",
 "I bought a pair of pants and they're the wrong colour is there any chance I can change that"]
Pemrosesan Bahasa Lisan dengan Python

Mengorganisasi teks hasil transkripsi

import pandas as pd

# Buat dataframe post purchase post_purchase_df = pd.DataFrame({"label": "post_purchase", "text": post_purchase_text})
# Buat dataframe pre purchase pre_purchase_df = pd.DataFrame({"label": "pre_purchase", "text": pre_purchase_text})
# Gabungkan pre purchase dan post purchase
df = pd.concat([post_purchase_df, pre_purchase_df])
# Lihat dataframe gabungan
df.head()
Pemrosesan Bahasa Lisan dengan Python

Mengorganisasi teks hasil transkripsi

   label                                               text
0  post_purchase  yeah hello someone this morning delivered a pa...
1  post_purchase  my shipment arrived yesterday but it's not the...
2  post_purchase  hey my name is Daniel I received my shipment y...
3  post_purchase  hey mate how are you doing I'm just calling in...
4   pre_purchase  hey I was wondering if you know where my new p...
Pemrosesan Bahasa Lisan dengan Python

Membangun klasifikator teks

# Import paket klasifikasi teks
import numpy as np
from sklearn.pipeline import Pipeline
from sklearn.naive_bayes import MultinomialNB
from sklearn.feature_extraction.text import CountVectorizer, TfidfTransformer
from sklearn.model_selection import train_test_split
# Bagi data menjadi train dan test
X_train, X_test, y_train, y_test = train_test_split(
    X=df["text"],
    y=df["label"],
    test_size=0.3)
Pemrosesan Bahasa Lisan dengan Python

Pipeline Naive Bayes

# Buat pipeline klasifikasi teks
text_classifier = Pipeline([
  ("vectorizer", CountVectorizer()),
  ("tfidf", TfidfTransformer()),
  ("classifier", MultinomialNB())
])
# Latih pipeline pada data train
text_classifier.fit(X_train, y_train)
Pemrosesan Bahasa Lisan dengan Python

Tidak begitu Naive

# Buat prediksi dan bandingkan dengan label test
predictions = text_classifier.predict(X_test)

accuracy = 100 * np.mean(predictions == y_test.label) print(f"The model is {accuracy:.2f}% accurate.")
Model ini akurat 97.87%.
Pemrosesan Bahasa Lisan dengan Python

Ayo berlatih!

Pemrosesan Bahasa Lisan dengan Python

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