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Using memory to reduce the information overload in a university digital library

机译:使用内存减少大学数字图书馆中的信息过载

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In the recent times the amount of information coming overwhelms us, and because of it we have serious problems to access to relevant information, that is, we suffer information overload problems. Recommender systems have been applied successfully to avoid the information overload in different scopes, but the number of electronic resources daily generated keeps growing and the problem still remain. Therefore, we find a persistent problem of information overload. In this paper we propose an improved recommender system to avoid the persistent information overload found in a University Digital Library. The idea is to include a memory to remember selected resources but not recommended to the user, and in such a way, the system could incorporate them in future recommendations to complete the set of filtered resources, for example, if there are a few resources to be recommended or if the user wishes output obtained by combination of resources selected in different recommendation rounds.
机译:近年来,信息的数量使我们不知所措,因此,我们在访问相关信息时遇到了严重的问题,也就是说,我们遇到了信息过载的问题。推荐系统已成功应用,可以避免不同范围内的信息过载,但是每天产生的电子资源数量却在不断增长,问题仍然存在。因此,我们发现了一个持续存在的信息过载问题。在本文中,我们提出了一种改进的推荐系统,以避免在大学数字图书馆中发现持续的信息过载。这个想法是要包括一个内存来记住选定的资源,但是不建议用户使用,这样,系统可以将它们合并到将来的建议中,以完成过滤后的资源集,例如,如果有一些资源可以推荐,或者用户希望通过在不同推荐回合中选择的资源组合获得输出。

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