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Linked Data-Based Concept Recommendation: Comparison of Different Methods in Open Innovation Scenario

机译:基于数据的链接概念建议:开放式创新方案中不同方法的比较

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摘要

Concept recommendation is a widely used technique aimed to assist users to chose the right tags, improve their Web search experience and a multitude of other tasks. In finding potential problem solvers in Open Innovation (OI) scenarios, the concept recommendation is of a crucial importance as it can help to discover the right topics, directly or laterally related to an innovation problem. Such topics then could be used to identify relevant experts. We propose two Linked Data-based concept recommendation methods for topic discovery. The first one, hyProximity, exploits only the particularities of Linked Data structures, while the other one applies a well-known Information Retrieval method. Random Indexing, to the linked data. We compare the two methods against the baseline in the gold standard-based and user study-based evaluations, using the real problems and solutions from an OI company.
机译:概念推荐是一种广泛使用的技术,旨在帮助用户选择正确的标签,改善他们的Web搜索体验以及许多其他任务。在寻找开放式创新(OI)场景中的潜在问题解决者时,概念建议至关重要,因为它可以帮助发现与创新问题直接或横向相关的正确主题。这些主题然后可以用来确定相关专家。我们提出了两种基于链接数据的概念推荐方法来进行主题发现。第一个是hyProximity,仅利用链接数据结构的特殊性,而另一个则采用众所周知的信息检索方法。随机索引,链接的数据。我们使用OI公司的实际问题和解决方案,将这两种方法与基于黄金标准和基于用户研究的评估中的基准进行了比较。

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