Recently I faced the same problem. I developed a news article scraper and I had to detect the main textual content of the article pages. Many news sites are displaying lots of other textual content beside the "main article" (e.g 'read next', 'you might be interested in'). My first approach was to collect all text between
<p> tags. But this did't work because there were news sites that used the
<p> for other elements like navigation, 'read more', etc. too. Some time ago I stumbled on the Boilerpipe libary.
The library already provides specific strategies for common tasks (for example: news article extraction) and may also be easily extended for individual problem settings.
That sounded like the perfect solution for my problem, but it wasn't. It failed at many news sites, because it was often not able to parse the whole text of the news article. I don't know why, but think that the boilerpipe algorithm can't deal with badly written html. So in many cases it just returned an empty string and not the main content of the news article.
After this bad experience I tried to develop my own "article text extractor" algorithm. The main idea was to split the html into different depths, for example:
<!-- depth: 1 -->
<!-- depth: 2 -->
<!-- depth: 3 -->
<li><a href="/mhh">Site<!-- depth: 5 --></a></li>
<li><a href="/bla">Site<!--- depth: 5 ---></a></li>
<!--- depth: 2 --->
<p>Thats the main content...<!-- depth: 3 --></p>
<p>main content, bla, bla bla ... <!-- depth: 3 --></p>
<p>bla bla bla interesting bla bla! <!-- depth: 3 --></p>
<p>whatever, bla... <!-- depth: 3 --></p>
As you can see, to filer out the surplus "clutter" with this algorithm, things like navigation elements, "you may like" sections, etc. must be on a different depth than the main content. Or in other words: the surplus "clutter" must be described with more (or less) html tags than the main textual content.
- Calculate the depth of every html element.
- Find the depth with the highest amount of textual content.
- Select all textual content with this depth
To proof this concept I wrote a Ruby script, which works out good, with most of the news sites. In addition to the Ruby script I also developed the textracto.com api which you can use for free.