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uci_040_online_news_popularity.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import urllib.request
import io
import zipfile
import pandas # install pandas by "pip install pandas", or install Anaconda distribution (https://www.anaconda.com/)
# Warning: the data processing techniques shown below are just for concept explanation, which are not best-proctices
# data set repository
# https://archive.ics.uci.edu/ml/datasets/Online+News+Popularity
# if the file is on your local device, change url_data_train into local file path, e.g., 'D:\local_file.data'
url_data_train = 'https://archive.ics.uci.edu/ml/machine-learning-databases/00332/OnlineNewsPopularity.zip'
def download_file(url):
resp = urllib.request.urlopen(url)
if resp.status != 200:
resp.close()
raise ValueError('Error: {0}'.format(resp.reason))
print('\rStarted', end = '\r')
content_length = resp.getheader('Content-Length')
if content_length is None:
content_length = '(total: unknown)'
else:
content_length = int(content_length)
if content_length < 1024:
content_length_str = '(total %.0f Bytes)' % content_length
elif content_length < 1024 * 1024:
content_length_str = '(total %.0f KB)' % (content_length / 1024)
else:
content_length_str = '(total %.1f MB)' % (content_length / 1024 / 1024)
total = bytes()
while not resp.isclosed():
total += resp.read(10 * 1024)
if len(total) < 1024:
print(('\rDownloaded: %.0f Bytes ' % len(total)) + content_length_str + ' ', end = '\r')
if len(total) < 1024 * 1024:
print(('\rDownloaded: %.0f KB ' % (len(total) / 1024)) + content_length_str + ' ', end = '\r')
else:
print(('\rDownloaded: %.1f MB ' % (len(total) / 1024 / 1024)) + content_length_str + ' ', end = '\r')
print()
return io.BytesIO(total)
# download data from UCI Machine Learning Repository
data_train = download_file(url_data_train) if url_data_train.startswith('http') else url_data_train
# unzip the downloaded file, and get data files
with zipfile.ZipFile(data_train) as myzip:
with myzip.open('OnlineNewsPopularity/OnlineNewsPopularity.csv') as myfile:
df_training = pandas.read_csv(myfile, header = 0, index_col = False, skipinitialspace = True)
# drop variables which are inappropriate for modeling
df_training = df_training.drop(['url', 'timedelta'], axis = 1)
# the target variable, inserted into the dataframe as the first column, and drop the original shares variable
# define shares >= 15000 as popular and set target values to 1, shares < 15000 are set to 0
df_training.insert(0, 'target_shares', df_training['shares'].apply(lambda x: 1 if x >= 15000 else 0))
df_training = df_training.drop('shares', axis = 1)
# save the dataframe as CSV file, you can zip it, upload it to t1modeler.com, and build a model
df_training.to_csv('uci_040_online_news_popularity.csv', index = False)