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Beyond Recommender Systems: Helping People Help Each Other

Loren Terveen, +1 more
TLDR
This work presents a framework for understanding recommender systems and surveys a number of distinct approaches in terms of this framework, and suggests two main research challenges: helping people form communities of interest while respecting personal privacy and developing algorithms that combine multiple types of information to compute recommendations.
Abstract
The Internet and World Wide Web have brought us into a world of endless possibilities: interactive Web sites to experience, music to listen to, conversations to participate in, and every conceivable consumer item to order. But this world also is one of endless choice: how can we select from a huge universe of items of widely varying quality? Computational recommender systems have emerged to address this issue. They enable people to share their opinions and benefit from each other’s experience. We present a framework for understanding recommender systems and survey a number of distinct approaches in terms of this framework. We also suggest two main research challenges: (1) helping people form communities of interest while respecting personal privacy, and (2) developing algorithms that combine multiple types of information to compute recommendations.

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Citations
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Journal ArticleDOI

A Taxonomy of Recommender Agents on theInternet

TL;DR: A state-of-the-art taxonomy of intelligent recommender agents on the Internet and a cross-dimensional analysis with the aim of providing a starting point for researchers to construct their own recommender system.
Proceedings ArticleDOI

Slash(dot) and burn: distributed moderation in a large online conversation space

TL;DR: Analysis of the site Slashdot.org suggests that the answer is a qualified yes, but that important challenges remain for designers of such systems.

Beyond Bowling Together: SocioTechnical Capital

TL;DR: SocioTechnical capital as discussed by the authors is a theoretical construct for generating and evaluating technology-mediated social relations, which can be used to find new ways for people to interact that will generate even more social capital than bowling together does.
Proceedings ArticleDOI

Impact of social influence in e-commerce decision making

TL;DR: An overview of the impact of social influence in E-commerce decision making is presented to provide guidance to researchers and companies who have an interest in related issues and identifies how data about social influence can be captured from online customer behaviors and how it can be used by E- commerce websites to aid the user decision making process.
Journal ArticleDOI

The ties that bind: Social network principles in online communities

TL;DR: It is found that Slashdot users develop deep networks at lower levels of participation indicating value from closure and that participation intensity helps increase the returns.
References
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Journal ArticleDOI

Recommender systems

TL;DR: This special section includes descriptions of five recommender systems, which provide recommendations as inputs, which the system then aggregates and directs to appropriate recipients, and which combine evaluations with content analysis.
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