Group Formation with Incomplete Profiles

Zied Ben Othmane, A. Hadjali
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引用次数: 1

Abstract

In this paper we provide a general process to create the most K-groups based on incomplete profiles and conditional preferences. The proposed approach is shown to be a combination of techniques that each output is the input of the next. It solves three problems: studying the incompletenesses of profiles based on conditional preferences, distances ans similarity measurement, and finding the top credible K-Groups of elements. Our process is efficient it's based on different previous works and tested techniques where each one returns a result that will be adjusted for the next step until the computation of the top K-Group is leaded. We provide a formal semantic of each step, and we describe how each technique provide an outcome that can be exploited according to the general process. Our work is customizable relevant to each approach and algorithm used. We ensure that the top K-Groups formation is reported with no loss in accuracy.
具有不完整概况的群体形成
在本文中,我们提供了一个基于不完全配置文件和条件偏好来创建最多k组的一般过程。所提出的方法显示为技术的组合,每个输出是下一个的输入。它解决了三个问题:研究基于条件偏好、距离和相似性度量的轮廓的不完全性,以及找到元素的最高可信k组。我们的过程是高效的,它基于不同的先前工作和测试技术,其中每个返回的结果将为下一步进行调整,直到领先的K-Group的计算。我们提供了每个步骤的正式语义,并描述了每种技术如何提供可根据一般过程利用的结果。我们的工作是可定制的相关的每个方法和算法使用。我们确保在准确无误的情况下报告顶级k - group的组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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