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Autoria(s): Terán L.; Ladner A.; Fivaz J.; Gerber S.; Meier A. (ed.); Donzé L. (ed.)
Data(s)

2012

Resumo

The use of the Internet now has a specific purpose: to find information. Unfortunately, the amount of data available on the Internet is growing exponentially, creating what can be considered a nearly infinite and ever-evolving network with no discernable structure. This rapid growth has raised the question of how to find the most relevant information. Many different techniques have been introduced to address the information overload, including search engines, Semantic Web, and recommender systems, among others. Recommender systems are computer-based techniques that are used to reduce information overload and recommend products likely to interest a user when given some information about the user's profile. This technique is mainly used in e-Commerce to suggest items that fit a customer's purchasing tendencies. The use of recommender systems for e-Government is a research topic that is intended to improve the interaction among public administrations, citizens, and the private sector through reducing information overload on e-Government services. More specifically, e-Democracy aims to increase citizens' participation in democratic processes through the use of information and communication technologies. In this chapter, an architecture of a recommender system that uses fuzzy clustering methods for e-Elections is introduced. In addition, a comparison with the smartvote system, a Web-based Voting Assistance Application (VAA) used to aid voters in finding the party or candidate that is most in line with their preferences, is presented.

Identificador

http://serval.unil.ch/?id=serval:BIB_09B0725E547D

isbn:9781466600959 (hardcover) and 9781466600966 (ebook) and 9781466600973 (print & perpetual access)

doi:10.4018/978-1-4666-0095-9.ch006

Idioma(s)

en

Publicador

IGI Global

Fonte

Fuzzy Methods for Customer Relationship Management and Marketing : Applications and Classifications

Using a Fuzzy-Based Cluster Algorithm for Recommending Candidates in E-Elections

Tipo

info:eu-repo/semantics/bookPart

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