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GroupLens : ウィキペディア英語版
GroupLens Research

GroupLens Research is a human–computer interaction research lab in the Department of Computer Science and Engineering at the University of Minnesota, Twin Cities specializing in recommender systems and online communities. GroupLens also works with mobile and ubiquitous technologies, digital libraries, and local geographic information systems.
The GroupLens lab was one of the first to study automated recommender systems with the construction of the "GroupLens" recommender, a Usenet article recommendation engine, and MovieLens, a popular movie recommendation site used to study recommendation engines, tagging systems, and user interfaces. The lab has also gained notability for its members' work studying open content communities such as Wikipedia and Cyclopath, a computational "geo-wiki" currently being used in the Twin Cities to help plan the regional cycling system.〔(【引用サイトリンク】 Cycloplan )
==History==
In 1992, John Riedl and Paul Resnick attended the
CSCW conference
together. After they heard keynote speaker Shumpei Kumon talk
about his vision for an information economy,〔
〕 they began working on a collaborative filtering
system for Usenet news. The system collected ratings from Usenet readers and used those ratings to predict how much other readers would like an article before they read it. This recommendation engine was one of the first automated collaborative filtering systems in which algorithms were used to automatically form predictions based on historical patterns of ratings.〔
〕 The overall system was called the "GroupLens" recommender, and the servers that collected the ratings and performed the computation were called the "Better Bit Bureau". This name was later dropped after a request from the Better Business Bureau. "GroupLens" is now used as a name both for this recommender system, and for the research lab at the University of Minnesota.
A feasibility test was done between MIT and
the University of Minnesota and a research paper was published including
the algorithm, the system design, and the results of the feasibility
study, in the CSCW conference of 1994.〔

In 1995, Riedl and Resnick invited Joseph Konstan to join the
team. Together, they decided to create a higher-performance
implementation of the algorithms to support larger-scale deployments.
In summer 1995 the team gathered
Bradley Miller, David Maltz,
Jon Herlocker, and Mark Claypool for "Hack Week" to create
the new implementation, and to plan the next round of experiments.〔

In the Spring of 1996, the first workshop on
collaborative filtering was put together by Resnick and
Hal Varian at the University of California, Berkeley.〔
(【引用サイトリンク】 Collaborative Filtering )
There, researchers from projects around the US
that were studying similar systems came together to share ideas and
experience.
In the Summer of 1996, David Gardiner, a
former Ph.D. student of Riedl's, introduced Riedl to Steven Snyder.
Snyder had been one of the early employees at Microsoft, but had left
Microsoft to come to Minnesota to do a Ph.D. in Psychology. He
realized the commercial potential of collaborative filtering, and
encouraged the team to found a company in April 1996. By June,
Gardiner, Snyder, Miller, Riedl, and Konstan had
incorporated their company, and by July
they had their first round of funding, from the Hummer-Winblad
venture capital company.〔
〕 Net Perceptions went on to be one of the leading companies in
personalization during the Internet boom of the late 1990s, and stayed
in business until 2004.〔
〕〔
〕 Based on their experience, Riedl and Konstan wrote a book about the lessons learned from deploying recommenders in practice.〔
〕 Recommender systems have since become ubiquitous in the online world, with leading vendors such as Amazon and Netflix deploying highly sophisticated recommender systems.〔
〕 Netflix even offered a $1,000,000 prize for improvements in recommender technology.〔

Meanwhile, research continued at the University of Minnesota. When
the EachMovie
〕 site closed in 1997, the researchers behind it released
the anonymous rating data they had collected, for other researchers
to use. The GroupLens Research team, led by Brent Dahlen and Jon
Herlocker, used this data set to jumpstart a new movie recommendation
site called MovieLens which has been a very visible research platform, including a detailed discussion in a New Yorker article by
Malcolm Gladwell,〔
〕 and a report in a full episode of ABC Nightline.〔

Between 1997 and 2002 the group continued its research on
collaborative filtering, which became known in the community by the
more general term of recommender systems. With Joe Konstan's expertise in user interfaces,〔
〕〔

the team began exploring interface issues in recommenders, such as explanations,〔
〕 and meta-recommendation systems.〔

In 2002, GroupLens expanded into social computing and online communities with the addition of Loren Terveen, who was known for his research of ''social'' recommender systems such as PHOAKS.〔
〕〔

In order to broaden the set of research ideas and tools they used,
Riedl, Konstan, and Terveen invited colleagues in social psychology
(Robert Kraut and Sara Kiesler, of the
Carnegie Mellon Human Computer Interaction Institute), and
economic and social analysis (Paul Resnick and
Yan Chen of the
University of Michigan School of Information) to collaborate. The
new, larger team adopted the name CommunityLab, and looked
generally at the effects of technological interventions on the
performance of online communities. For instance, some of their
research explored technology for enriching conversation systems,〔
〕 while other research explored the personal, social, and economic
motivations for user ratings.〔
〕〔

In 2008 GroupLens launched Cyclopath,〔(【引用サイトリンク】title=cyclopath.org )〕 a computational geo-wiki for bicyclists within a city.〔
〕〔
.

In 2010, GroupLens won the annual ACM software systems award.〔(【引用サイトリンク】title=Software System Award - Award Winners: List By Year )
Brent Hecht joined the GroupLens faculty in 2013, focusing on geographic human-computer interaction. Lana Yarosh joined the GroupLens faculty in 2014; she works with social computing and child-computer interaction. A third professor, Haiyi Zhu, will join in 2015. Haiyi has published research on Facebook and other social networks.

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
ウィキペディアで「GroupLens Research」の詳細全文を読む



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