Proposal of a simple recommendation system for small and medium enterprises for decision making based on unsupervised learning

D. E. Urueta-Hinojosa, Pedro Lara-Velázquez, M. Gutiérrez-Ándrade, Sergio G. De los Cobos-Silva
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引用次数: 0

Abstract

Recommendation systems are generally complicated, due they search to increase their reach and robustness, they combine different artificial intelligence approaches mainly of supervised learning. A disadvantage of this type of systems is that they must have a prior classification to be able to train a system and after they can be able to make decisions in a simmilar way that a human would do it; however, the task of classification is often expensive because is needed to consult with experts the possible classification (also known as label) that should be given to a specific data; although this method can be profitable for large companies, it is not for small and medium companies. This is the reason which the present work shows a proposal of a simple system that does not need to have a previous classification, allowing it to be profitable for small and medium enterprises in decision making.
基于无监督学习的简单中小企业决策推荐系统的提出
推荐系统通常是复杂的,由于它们搜索以增加其覆盖范围和鲁棒性,它们结合了不同的人工智能方法,主要是监督学习。这类系统的一个缺点是,它们必须有一个预先的分类才能训练系统,然后它们才能以与人类类似的方式做出决定;然而,分类的任务往往是昂贵的,因为需要与专家协商应该给予特定数据的可能分类(也称为标签);虽然这种方法对大公司来说是有利可图的,但对中小公司来说并不适用。这就是为什么目前的工作显示了一个简单系统的建议,不需要有一个以前的分类,允许它是有利可图的中小企业在决策。
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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