Here's the problem:
Users register for a site and can pick one of 8 job categories, or choose to skip this step. I want to classify the users who've skipped that step into job categories, based on the domain name in their email address.
Using a combination of Beautiful Soup and nltk, I scrape the homepage and look for links to pages on the site that contain the word "about". I scrape that page, too. I've copied the bit of code that does the scraping at the end of this post.
I'm not getting enough data to get a good learning routine in place. I'd like to know if my scraping algorithm is set up for success--in other words, are there any gaping holes in my logic, or any better way to ensure that I have a good chunk of text that describes what kind of work a company does?
The (relevant) code:
import bs4 as bs import httplib2 as http import nltk # Only these characters are valid in a url ALLOWED_CHARS = "ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz0123456789-._~:/?#@!$&'()*+,;=" class WebPage(object): def __init__(self, domain): """ Constructor :param domain: URL to look at :type domain: str """ self.url = 'http://www.' + domain try: self._get_homepage() except: # Catch specific here? self.homepage = None try: self._get_about_us() except: self.about_us = None def _get_homepage(self): """ Open the home page, looking for redirects """ import re web = http.Http() response, pg = web.request(self.url) # Check for redirects: if int(response.get('content-length',251)) < 250: new_url = re.findall(r'(https?://\S+)', pg) if len(new_url): # otherwise there's not much I can do... self.url = ''.join(x for x in new_url if x in ALLOWED_CHARS) response, pg = web.request(self.url) self.homepage = self._parse_html(nltk.clean_html(pg)) self._raw_homepage = pg def _get_about_us(self): """ Soup-ify the home page, find the "About us" page, and store its contents in a string """ soup = bs.BeautifulSoup(self._raw_homepage) links = [x for x in soup.findAll('a') if x.get('href', None) is not None] about = [x.get('href') for x in links if 'about' in x.get('href', '').lower()] # need to find about or about-us about_us_page = None for a in about: bits = a.strip('/').split('/') if len(bits) == 1: about_us_page = bits elif 'about' in bits[-1].lower(): about_us_page = bits[-1] # otherwise assume shortest string is top-level about pg. if about_us_page is None and len(about): about_us_page = min(about, key=len) self.about_us = None if about_us_page is not None: self.about_us_url = self.url + '/' + about_us_page web = http.Http() response, pg = web.request(self.about_us_url) if int(response.get('content-length', 251)) > 250: self.about_us = self._parse_html(nltk.clean_html(pg)) def _parse_html(self, raw_text): """ Clean html coming from a web page. Gets rid of - all '\n' and '\r' characters - all zero length words - all unicode characters that aren't ascii (i.e., &...) """ lines = [x.strip() for x in raw_text.splitlines()] all_text = ' '.join([x for x in lines if len(x)]) # zero length strings return [x for x in all_text.split(' ') if len(x) and x != '&']