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In order to perform difficult analyses and train intelligent wiki-tools (e.g. for detecting vandalism and assessing the quality of articles), we need labeled data and lots of it. Wikipedia:Labels is the project on the English Wikipedia for getting the labeling work done. We use the m:Wiki labels tool to collaboratively label wiki artifacts ...
Wiki labels is both the name for a software suite and a WikiProject. In this WikiProject, we produce datasets of labeled wiki artifacts and the software suite is designed to make that work easier. The name can be interpreted either as a noun. We work together on Wikipedia to produce wiki labels for important data.
Print/export Download as PDF; Printable version ... Labels/Edit_types The NPOV mainly occurs in places like "Some suicide bombers are educated, ...
label. description. Copy Editing. rephrase; improve grammar, spelling, tone, or punctuation. Clarification. specify or explain an existing fact or meaning by example or discussion without adding new information. Simplification. reduce the complexity or breadth of discussion; may remove information. Point of View.
Coupon. In marketing, a coupon is a ticket or document that can be redeemed for a financial discount or rebate when purchasing a product . Customarily, coupons are issued by manufacturers of consumer packaged goods [1] or by retailers, to be used in retail stores as a part of sales promotions. They are often widely distributed through mail ...
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In order to perform difficult analyses and train intelligent wiki-tools (e.g. for detecting vandalism and assessing the quality of articles), we need labeled data and lots of it. Wikipedia:Labels is the project on the English Wikipedia for getting the labeling work done.
Wikipedia. : Labels/Edit quality. A previous campaign was completed in 2015. We're now working on an additional dataset to train ORES how to catch damage and recognize goodfaith in 2016! We'll be using WP:Labels to review 6334 randomly sampled edits as "damaging" and/or "good-faith" in order to train classifiers for mw:ORES.