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https://issues.apache.org/jira/browse/TIKA-420?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=12866620#action_12866620
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Ken Krugler commented on TIKA-420:
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Thanks for the Sonatype link - very useful. Just to be clear, I'm a big fan of 
getting things into the Central Maven repo, but it's been very painful in the 
past.

The docs at Sonatype don't talk about one other roadblock - any dependencies 
must also be found in the central repo. The link to Brian Fox's blog about this 
say that they'll be making it easier to add 3rd party jars, but I didn't see 
any details. I don't see any dependencies listed in the boilerpipe pom [1], but 
maybe Christian can confirm that he really doesn't depend on any 3rd party jars 
(FWIR, he was using NekoHTML as the default HTML parser).

[1] http://download.java.net/maven/2/de/l3s/boilerpipe/boilerpipe/1.0.4/

> [PATCH] Integration of boilerpipe: Boilerplate Removal and Fulltext 
> Extraction from HTML pages
> ----------------------------------------------------------------------------------------------
>
>                 Key: TIKA-420
>                 URL: https://issues.apache.org/jira/browse/TIKA-420
>             Project: Tika
>          Issue Type: New Feature
>          Components: parser
>            Reporter: Christian Kohlschütter
>            Assignee: Ken Krugler
>         Attachments: tika-app.patch, tika-parsers.patch
>
>
> Hi all,
> while Tika already provides a parser for HTML that extracts the plain text 
> from it, the output generally contains all text portions, including the 
> surplus "clutter" such as navigation menus, links to related pages etc. 
> around the actual main content. This "boilerplate text" typically is not 
> related to the main content and may deteriorate search precision.
> I think Tika should be able to automatically detect and remove the 
> boilerplate text. I propose to use "boilerpipe" for this purpose, an Apache 
> 2.0 licensed Java library written by me. Boilerpipe provides both generic and 
> specific strategies for common tasks (for example: news article extraction) 
> and may also be easily extended for individual problem settings.
> Extracting content is very fast (milliseconds), just needs the input document 
> (no global or site-level information required) and is usually quite accurate. 
> In fact, it outperformed the state-of-the-art approaches for several test 
> collections.
> The algorithms used by the library are based on (and extending) some concepts 
> of my paper "Boilerplate Detection using Shallow Text Features", presented at 
> WSDM 2010 -- The Third ACM International Conference on Web Search and Data 
> Mining New York City, NY USA. (online at 
> http://www.l3s.de/~kohlschuetter/boilerplate/ )
> To use boilerpipe with Tika, I have developed a custom ContentHandler 
> (BoilerpipeContentHandler; provided as a patch to tika-parsers) that can 
> simply be passed to HtmlParser#parse. The BoilerpipeContentHandler can be 
> configured in several ways, particularly which extraction strategy should be 
> used and where the extracted content should go -- into Metadata or to a 
> Writer).
> I also provide a patch to TikaCLI, such that you can use boilerpipe via Tika 
> from the command line (use a capital "-T" flag instead of "-t" to extract the 
> main content only).
> I must note that boilerplate removal is considered a research problem:
> While one can always find clever rules to extract the main content from 
> particular web pages with 100% accuracy, applying it to random, previously 
> unseen pages on the web is non-trivial.
> In my paper, I have shown that on the Web (i.e. independent of a particular 
> site owner, page layout etc.), textual content can apparently be grouped into 
> two classes, long text (i.e., a lot of subsequent words without markup -- 
> most likely the actual content) and short text (i.e., a few words between two 
> HTML tags, most likely navigational boilerplate text) respectively. Removing 
> the words from the short text class alone already is a good strategy for 
> cleaning boilerplate and using a combination of multiple shallow text 
> features achieves an almost perfect accuracy. To a large extent the detection 
> of boilerplate text does not require any inter-document knowledge (frequency 
> of text blocks, common page layout etc.) nor any training at token level. The 
> costs for detecting boilerplates are negligible, as it comes down simply to 
> counting words.
> The algorithms provided in my paper seem to generally work well and 
> especially for news article-like pages (for a Zipf-representative collection 
> of English news pages crawled via Google News: 90-95% F1 on average, 95-98% 
> F1 median), well ahead of the competition (78-89% avg. F1, 87-95% median F1).
> Patches are attached, questions welcome.
> Best,
> Christian

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