I am trying to learn python, and I actually feel that "learn python the hardway", "a byte of python", and "head first python" are really great books. However - now that I want to start a "real" project, lxml makes me feel like a complete git.
This is what I would like to do (objectives)
I am trying to parse a newspaper sites article about politics
The url is http://politiken.dk/politik/
The final project should
- 1) each day (maybe each hour) visit the above URL
- 2) for each relevant
article, I want to save the url to a
database. The relevant articles are
<div class="w460 section_forside sec-forside">. Some of the elements have images, some dont.
I would like to save the following:
- a - the headline (
<h1 class="top-art-header fs-26">)
- b - the subheader (
c - if the element has corresponding img, then the "alt" or "title" attribute
3) visit each relevant URL and scrape the articles body and save it to the database.
- 4) if each relevant URL is already in the database, then I skip that URL (the relevant articles as defined above are always the latest 10 published)
The desired result should be a database table with fields:
- art.i) ID
- art.ii) URL
- art.iii) headline
- art.iiii) subheader
- art.iiiii) img alt
- art.iiiiii) article body.
- art.iiiiiii) date and time (a string located in
<span class="date tr-upper m-top-2">)
The above is what I would like help to accomplish. Since screen-scraping is not always benovelent, I would like to explain why I want to do this.
Basically I want to mine the data for occurences of members of parliment or political parties. I will not republish the articles, sell the data or some such thing (I have not checked the legality of my approach, but hope and think it should be legal)
I imagine I have a table of politicians and a table of political parties.
for each politician I will have:
- pol.i) ID
- pol.ii) first_name
- pol.iii) sur_name
- pol.iiii) party
For each political party I will have:
- party.i) ID
- party.ii) correct-name
- party.iii) calling-name -party.iiii) abbrevation
I want to do this for several danish newspaper sites, and then analyse if one newspaper gives prefrences to some politicians / parties - simply based on number of mentions.
This I will also need help to do - but one step at a time :-)
Later I would like to explore NLTK and the posibilities for sentiment mining.
I want to see if this could turn in to a ph.d. project in political science/journalism.
This is basically what I have (i.e. nothing)
I really have a hard time wrapping my head around lxml, the concept of elements, the different parses etc. I have of course read the tutorials but I am still very much stuck.
import lxml.html url = "http://politiken.dk/politik/" root = lxml.html.parse(url).getroot() # this should retur return all the relevant elements # does not work: #relevant = root.cssselect("divi.w460 section_forside sec-forside") # the class has spaces in the name - but I can't seem to escape them? # this will return all the linked artikles headlines artikler = root.cssselect("h1.top-art-header") # narrowing down, we use the same call to get just the URLs of the articles that we have already retrieved # theese urls we will later mine, and subsequently skip retrived_urls= for a in root.cssselect("h1.top-art-header a"): retrived_urls.append(a) # this works.
What I hope to get from the answers
First of - as long as you don't call me (very bad) names - I would continue to be happy.
- But what I really hope is a simple to understand explanation of how lxml works. If I know what tools to use for the above tasks it would be so much easier for me to really "dive into lxml". Maybe because of my short attention span, I currently get disillusioned when reading stuff way above my level of understanding, when I am not even sure that I am looking in the right place.
- If you could provide any example code that fits some of the tasks, that would be really great. I hope to turn this project into a ph.d. but I am sure this sort of thing must have been done a thousand times already? If so, it is my experience that learning from others is a great way to get smarter.
- If you feel strongly that I should forget about lxml and use eg. scrapy or html5lib then please say so :-) I started to look into html5lib because Drew Conway suggests in a blog post about python tools for the political scientist, but I couldn't find any introduction level material. Alsp lxml is what the good people at scraperwiki recommends. As per scrapy, this might be the best solution, but I am afraid that scrapy is to much of a framework - as such really good if you know what you are doing, and want to do it fast, but maybe not the best way to learn python magic.
- I plan on using a relational database, but if you think e.g. mongo would be an advantage, I will change my plans.
- Since I can't install import lxml in python 3.1 I am using 2.6. If this is wrong - please say so also.
I have asked a bunch of beginner questions on stackoverflow. Too many to be proud of. But with more then a fulltime job I never seem to be able to burry myself in code and just absorb the skillz I so long for. I hope this will be a question/answer that I can come back to regualy and update what I have learn, and relearn what I have forgot. This also means that this question will most likely remain active for quite some time. But I will comment on every answer that I might be lucky enough to recieve, and I will continuosly update the "what I got" section.
Currently I feel that I might have bitten off more then I can chew - so now it's back to "head first python" and "learn python the hard way".
If you have gotten this far - you are amazing - even if you don't answer the question. You have now read a lot of simple, confused, and stupid questions (I am proud of asking thoose questions, so don't argue). You should grap a coffe and a filterless smoke and congratulate your self :-)
Happy holidays (in Denmark we celebrate easter and currently the sun is shining like Samual Jacksons wallet in pulp fiction)
It seems beutifulSoup is a good choice. As per the developer however BeautifulSoup is not a good choice if I want to use python3. But as per this I would prefer python3 (not strongly though).
I have also discovered that there is an lxml chapter in "dive into python 3". Will look into that aswell.