Ontology-based recommender system for information support in knowledge-intensive processes

Yordan Terziev, Marian Benner-Wickner, Tobias Brückmann, V. Gruhn
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引用次数: 5

Abstract

Knowledge-intensive processes are difficult to support because of their complexity, high variability and unpredictable information requirements. Therefore such process types are handled manually by knowledge workers with expertise in the domain. Yet to make informed decisions, knowledge workers require a multitude of domain specific, case-related information. This often leads to a time-consuming search for information and knowledge required to address the issues occurring in the case. To reduce the time spent searching for information, we propose an ontology-based recommender system that provides case-related information based on documents gathered in accumulated similar cases. The recommender system builds models of domain specific concepts for past cases as well as for the current case, which are used for case similarity calculation. To evaluate the performance of parts of our approach we used the OHSUMED document collection and compared the cosine similarity measure of ontological case model against textual case model.
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知识密集型过程中基于本体的信息支持推荐系统
知识密集型过程由于其复杂性、高可变性和不可预测的信息需求而难以支持。因此,这些过程类型由具有该领域专业知识的知识工作者手动处理。然而,为了做出明智的决策,知识工作者需要大量特定领域的、与案例相关的信息。这通常导致需要花费大量时间来寻找解决案例中出现的问题所需的信息和知识。为了减少搜索信息所花费的时间,我们提出了一个基于本体的推荐系统,该系统根据积累的相似案例中收集的文档提供与案例相关的信息。推荐系统为过去案例和当前案例构建领域特定概念模型,用于案例相似度计算。为了评估我们的方法的部分性能,我们使用了OHSUMED文档集合,并比较了本体案例模型和文本案例模型的余弦相似性度量。
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