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Agent-Based Customer Profile Learning in 3G Recommender Systems: Ontology-Driven Multi-source Cross-Domain Case

机译:3G推荐器系统中基于代理的客户资料学习:本体驱动的多源跨域案例

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Advanced recommender systems of the third generation (3G) emphasize employment of semantically clear models of customer cross-domain profile learned using all available data sources. The paper focuses on conceptual level of ontology-based formal model of the customer profile built in actionable form. Learning of cross-domain customer profile as well as its use in recommendation scenario requires solving a number of novel problems, e.g. information fusion and data source privacy preservation, amongothers. The paper proposes an ontology-driven personalized customer profile model and outlines an agent-based architecture supporting implementation of interaction-intensive agent collaboration in two variants of target decision making procedure that are content-based and collaborative filtering both exploiting semantic similarity measures.
机译:第三代(3G)的高级推荐系统强调使用在语义上清晰的客户跨域配置文件模型,这些模型是使用所有可用数据源学习的。本文着重于以可行形式构建的,基于本体的客户档案正式模型的概念级别。学习跨域客户资料及其在推荐方案中的使用要求解决许多新颖的问题,例如信息融合和数据源隐私保护等。本文提出了一种本体驱动的个性化客户档案模型,并概述了一种基于代理的体系结构,该体系结构支持在目标决策过程的两个变体中实现交互密集型代理协作,这两种方法都是基于内容的协作筛选和利用语义相似性度量的协作过滤。

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