Difference between revisions of "Submissions:2014/Measuring Editor Collaborativeness With Economic Modelling"

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;Abstract ''(at least 300 words to describe your proposal)'':
 
;Abstract ''(at least 300 words to describe your proposal)'':
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Even though Wikipedia is a vanguard of collaboration, Wikipedians still remain stuck with the old-thinking individual user performance metrics - most notably “Edit Count”. The search, for describing a group of editors has started through the Foundation's WikiMetrics cohort notion{{cite http://metrics.wmflabs.org/}}, hasn't answered “how” a set of users works together.
In our performance-driven world we care deeply about quantifying our contributions to Wikis, and yet we remain addicted the ''Edit Count'' metric despite all its shortcomings. Smarter metrics have been proposed such as counting hours spent editing, or the survival rate of a users contributed text. We investigated a method from Macroeconomics which considers the “exports” of a User - their contributed-to article portfolio. An unforeseen consequence was found in the results which suggest alternatives to measuring individual performance, but rather editor collaborativeness.
 
   
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A recent stream of research in Macroeconomics has shown simple techniques for predicting GDP with very little information <ref>Hidalgo, Hausmann, The Building Blocks of Economic Complexity [http://chidalgo.com/Papers/HidalgoHausmann_PNAS_2009.pdf] </ref> <ref>Caldarelli et al. Firm Grounds. [https://www.ncbi.nlm.nih.gov/pubmed/23094044] </ref>, which can be translated into the wiki realm. Using only the data of which countries export which products (not even how much of each product), one can quickly predict GDP rankings. Here we repurpose the algorithm, so that Editors are countries, articles are products, and GDP is “Labour Hours” (an edit count derivative <ref>Halfaker, Geiger, Using Edit Sessions [http://www-users.cs.umn.edu/~halfak/publications/Using_Edit_Sessions_to_Measure_Participation_in_Wikipedia/geiger13using-preprint.pdf]</ref>) .
In Macroeconomics the assumption is that the best countries produce the best products; and the best products are those produced by the fewest countries (the hardest to produce). Therefore our problem of ''ranking user performance, based on article portfolio'' rests on answering the twin question ''ranking article quality, based on contributor performances''. It is possible to solve these two questions simultaneously, and the solution is similar to Google PageRank algorithm. Specifically we gather the user-article “matrix” of a Category (see Figure below of ''Category:Feminist Writers''). Then we produce the editor and article rankings, and compare them to two ground-truth rankings. For editors our ground-truth is "Labour Hours", which is derived from the editors contribution history. For articles our ground-truth is a mix 5 measures of articles text (citations per sentence, number of images, etc.)
 
   
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This method comes only from considering a matrix of which editors have touched which articles – producing an entirely new perspective on Wikipedia (see Figure below). The simplicity of this model can help us to quickly and easily determine which areas are more likely to be hostile and power-user dominated, and which are more egaliterean an collaborative.
To get an intuition for the method consider these telling extremes. The best editors in ''Category:Military history of the US'' - a category known for being very competitive - are characterized by emphasizing investment in touching many articles in the category. On the other end, the editors in ''Category:Sexual acts'' - a taboo subject where much editing could be considered perverse - are characterized by divesting in touching many articles in the category.
 
   
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Incredibly, this borrowed method works even better for Wikis than Economies. Where the maximum achievable correlation in Macroeconomics is about 0.42, we can achieve correlations of upto 0.91. But the real innovation comes from, two factors which are tweaked to optimize the model. These two variables are: the ''importance'' of the high quality articles in an editor's contribution portfolio, and conversely the “importance” of highly invested editors in an article's contribution history. These variables can range independently, and tell us about “collaborativeness”.
The correlation between our produced rankings and the ground-truth rankings rely on two factors in our model, termed α and β. These determine the ''importance'' of the high quality articles in an editor's portfolio, and conversely highly invested editors in an article's contribution history. When both α and β are optimized to maximize the ranking correlations we find correlations between 0.46 and 0.91 between the model and groundtruth metrics. (see Table below). By finding the optimizing values of α and β we know how characterized a category is by highly invested editors, or by highly developed articles. Taken together we can talk about the collaborativeness of a Category - how close they are to featuring highly divested editors and yet highly developed articles.
 
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Collaborativeness is determined from the edit patterns of the most highly invested editors. Do they edit many articles? And how well developed are the articles they edit? Consider these telling extremes. The best editors in ''Category:Military history of the US'' - a category known for being very competitive - are characterized by emphasizing investment in touching many articles in the category. On the other end, the editors in ''Category:Sexual acts'' - a taboo subject where much editing could be considered perverse - are characterized by not touching many articles in the category, more collaborative.
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== References ==
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Revision as of 20:50, 27 March 2014

Title of the submission

Measuring Editor Collaborativeness With Economic Modelling

Themes (Proposal Themes - Community, Tech, Outreach, GLAM, Education)

Community - presents a way to characterise editors.

Type of submission (Presentation Types - Panel, Workshop, Presentation, etc)

Presentation

Author of the submission

Max Klein

E-mail address

isalix@gmail.com

Username

w:User:Maximilianklein

US state or country of origin

California

Affiliation, if any (organization, company etc.)
Personal homepage or blog

[4]

Abstract (at least 300 words to describe your proposal)

Even though Wikipedia is a vanguard of collaboration, Wikipedians still remain stuck with the old-thinking individual user performance metrics - most notably “Edit Count”. The search, for describing a group of editors has started through the Foundation's WikiMetrics cohort notionTemplate:Cite http://metrics.wmflabs.org/, hasn't answered “how” a set of users works together.

A recent stream of research in Macroeconomics has shown simple techniques for predicting GDP with very little information [1] [2], which can be translated into the wiki realm. Using only the data of which countries export which products (not even how much of each product), one can quickly predict GDP rankings. Here we repurpose the algorithm, so that Editors are countries, articles are products, and GDP is “Labour Hours” (an edit count derivative [3]) .

This method comes only from considering a matrix of which editors have touched which articles – producing an entirely new perspective on Wikipedia (see Figure below). The simplicity of this model can help us to quickly and easily determine which areas are more likely to be hostile and power-user dominated, and which are more egaliterean an collaborative.

Incredibly, this borrowed method works even better for Wikis than Economies. Where the maximum achievable correlation in Macroeconomics is about 0.42, we can achieve correlations of upto 0.91. But the real innovation comes from, two factors which are tweaked to optimize the model. These two variables are: the importance of the high quality articles in an editor's contribution portfolio, and conversely the “importance” of highly invested editors in an article's contribution history. These variables can range independently, and tell us about “collaborativeness”.

Collaborativeness is determined from the edit patterns of the most highly invested editors. Do they edit many articles? And how well developed are the articles they edit? Consider these telling extremes. The best editors in Category:Military history of the US - a category known for being very competitive - are characterized by emphasizing investment in touching many articles in the category. On the other end, the editors in Category:Sexual acts - a taboo subject where much editing could be considered perverse - are characterized by not touching many articles in the category, more collaborative.

References

  1. Hidalgo, Hausmann, The Building Blocks of Economic Complexity [1]
  2. Caldarelli et al. Firm Grounds. [2]
  3. Halfaker, Geiger, Using Edit Sessions [3]


Length of presentation/talk (see Presentation Types for lengths of different presentation types)
75 Minutes

Preferred 30 mins to fit into a thematic session, but could talk longer.

Will you attend WikiConference USA if your submission is not accepted?

Yes, I if receive a travel scholarship as well.

Slides or further information (optional)

A triangular matrix from Wikipedia data

A rendering of a latex table

Special request as to time of presentations


Interested attendees

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  1. Add your username here.