Re: [Wikimedia-l] Research Showcase Wednesday, January 17, 2018

2018-01-17 Thread Dario Taraborelli
Hey all,

a reminder that the livestream of our monthly research showcase starts in
45 minutes (11.30 PT)

   - Video: https://www.youtube.com/watch?v=L-1uzYYneUo
   - IRC: #wikimedia-research
   - Abstracts:
   https://www.mediawiki.org/wiki/Wikimedia_Research/Showcase#January_2018

Dario


On Tue, Jan 16, 2018 at 9:45 AM, Lani Goto  wrote:

> Hi Everyone,
>
> The next Research Showcase will be live-streamed this Wednesday, January
> 17, 2018 at 11:30 AM (PST) 19:30 UTC.
>
> YouTube stream: https://www.youtube.com/watch?v=L-1uzYYneUo
>
> As usual, you can join the conversation on IRC at #wikimedia-research. And,
> you can watch our past research showcases here.
>
> This month's presentation:
>
> *What motivates experts to contribute to public information goods? A field
> experiment at Wikipedia*
> By Yan Chen, University of Michigan
> Wikipedia is among the most important information sources for the general
> public. Motivating domain experts to contribute to Wikipedia can improve
> the accuracy and completeness of its content. In a field experiment, we
> examine the incentives which might motivate scholars to contribute their
> expertise to Wikipedia. We vary the mentioning of likely citation, public
> acknowledgement and the number of views an article receives. We find that
> experts are significantly more interested in contributing when citation
> benefit is mentioned. Furthermore, cosine similarity between a Wikipedia
> article and the expert's paper abstract is the most significant factor
> leading to more and higher-quality contributions, indicating that better
> matching is a crucial factor in motivating contributions to public
> information goods. Other factors correlated with contribution include
> social distance and researcher reputation.
>
> *Wikihounding on Wikipedia*
> By Caroline Sinders, WMF
> Wikihounding (a form of digital stalking on Wikipedia) is incredibly
> qualitative and quantitive. What makes wikihounding different then
> mentoring? It's the context of the action or the intention. However, all
> interactions inside of a digital space has a quantitive aspect to it, every
> comment, revert, etc is a data point. By analyzing data points
> comparatively inside of wikihounding cases and reading some of the cases,
> we can create a baseline for what are the actual overlapping similarities
> inside of wikihounding to study what makes up wikihounding. Wikihounding
> currently has a fairly loose definition. Wikihounding, as defined by the
> Harassment policy on en:wp, is: “the singling out of one or more editors,
> joining discussions on multiple pages or topics they may edit or multiple
> debates where they contribute, to repeatedly confront or inhibit their
> work. This is with an apparent aim of creating irritation, annoyance or
> distress to the other editor. Wikihounding usually involves following the
> target from place to place on Wikipedia.” This definition doesn't outline
> parameters around cases such as frequency of interaction, duration, or
> minimum reverts, nor is there a lot known about what a standard or
> canonical case of wikihounding looks like. What is the average wikihounding
> case? This talk will cover the approaches myself and members of the
> research team: Diego Saez-Trumper, Aaron Halfaker and Jonathan Morgan are
> taking on starting this research project.
>
> --
> Lani Goto
> Project Assistant, Engineering Admin
> ___
> Wikimedia-l mailing list, guidelines at: https://meta.wikimedia.org/
> wiki/Mailing_lists/Guidelines and https://meta.wikimedia.org/
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> 




-- 

*Dario Taraborelli  *Director, Head of Research, Wikimedia Foundation
wikimediafoundation.org • nitens.org • @readermeter

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[Wikimedia-l] Research Showcase Wednesday, January 17, 2018

2018-01-16 Thread Lani Goto
Hi Everyone,

The next Research Showcase will be live-streamed this Wednesday, January
17, 2018 at 11:30 AM (PST) 19:30 UTC.

YouTube stream: https://www.youtube.com/watch?v=L-1uzYYneUo

As usual, you can join the conversation on IRC at #wikimedia-research. And,
you can watch our past research showcases here.

This month's presentation:

*What motivates experts to contribute to public information goods? A field
experiment at Wikipedia*
By Yan Chen, University of Michigan
Wikipedia is among the most important information sources for the general
public. Motivating domain experts to contribute to Wikipedia can improve
the accuracy and completeness of its content. In a field experiment, we
examine the incentives which might motivate scholars to contribute their
expertise to Wikipedia. We vary the mentioning of likely citation, public
acknowledgement and the number of views an article receives. We find that
experts are significantly more interested in contributing when citation
benefit is mentioned. Furthermore, cosine similarity between a Wikipedia
article and the expert's paper abstract is the most significant factor
leading to more and higher-quality contributions, indicating that better
matching is a crucial factor in motivating contributions to public
information goods. Other factors correlated with contribution include
social distance and researcher reputation.

*Wikihounding on Wikipedia*
By Caroline Sinders, WMF
Wikihounding (a form of digital stalking on Wikipedia) is incredibly
qualitative and quantitive. What makes wikihounding different then
mentoring? It's the context of the action or the intention. However, all
interactions inside of a digital space has a quantitive aspect to it, every
comment, revert, etc is a data point. By analyzing data points
comparatively inside of wikihounding cases and reading some of the cases,
we can create a baseline for what are the actual overlapping similarities
inside of wikihounding to study what makes up wikihounding. Wikihounding
currently has a fairly loose definition. Wikihounding, as defined by the
Harassment policy on en:wp, is: “the singling out of one or more editors,
joining discussions on multiple pages or topics they may edit or multiple
debates where they contribute, to repeatedly confront or inhibit their
work. This is with an apparent aim of creating irritation, annoyance or
distress to the other editor. Wikihounding usually involves following the
target from place to place on Wikipedia.” This definition doesn't outline
parameters around cases such as frequency of interaction, duration, or
minimum reverts, nor is there a lot known about what a standard or
canonical case of wikihounding looks like. What is the average wikihounding
case? This talk will cover the approaches myself and members of the
research team: Diego Saez-Trumper, Aaron Halfaker and Jonathan Morgan are
taking on starting this research project.

-- 
Lani Goto
Project Assistant, Engineering Admin
___
Wikimedia-l mailing list, guidelines at: 
https://meta.wikimedia.org/wiki/Mailing_lists/Guidelines and 
https://meta.wikimedia.org/wiki/Wikimedia-l
New messages to: Wikimedia-l@lists.wikimedia.org
Unsubscribe: https://lists.wikimedia.org/mailman/listinfo/wikimedia-l,