期刊文献+

基于自主化情报定制的新型发布/订阅系统研究 被引量:6

Research on a Novel Pub/Sub System Based on Autonomy Intelligence Customization
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摘要 情报按需分发技术是网络中心战中发挥信息优势、形成决策优势和作战优势的关键技术.针对目前战场情报分发的特点,建立了一个基于自主化情报定制的新型发布/订阅系统模型,并对情报用户兴趣模型建立、更新以及情报推荐算法等系统实现的关键技术进行了研究.与其他发布/订阅系统相比,基于自主化情报定制的新型发布/订阅系统更适合现代战场海量信息、动态、复杂的本质,可以提高指挥员的决策效率. Intelligence on-demand distribution technology plays a key role in exerting the superiority of information, forming the superiority of decision-making and operation. Aimed at the featm'es of present battlefield intelligence distribution, a novel Pub/Sub system model is set up based on autonomy intelligence customization, and the key technologies are studied in terms of the establishment of intelligence user' s interest model and its update as well as the implementation of intelligence recommendation algorithm and other systems, in this paper. Compared to other Pub/Sub systems, the novel system proposed is more appropriate for the essence of massive, dynamic and complex information in modem battleground, which can improve the commanders' decision-making efficiency.
出处 《空军雷达学院学报》 2012年第3期185-188,共4页 Journal of Air Force Radar Academy
基金 部委级资助项目 学院预研基金资助项目(2010KYCX26)
关键词 发布/订阅 情报分发 用户兴趣模型 推荐算法 publish/subscribe (Pub/Sub) intelligence distribution user' s interest model recommendationalgorithm
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参考文献9

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