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Multi-input Recurrent Independent Mechanisms for leveraging knowledge sources: Case studies on sentiment analysis and health text mining

机译:利用知识源的多输入循环独立机制:情绪分析和健康文本挖掘的案例研究

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This paper presents a way to inject and leverage existing knowledge from external sources in a Deep Learning environment, extending the recently proposed Recurrent Independent Mechnisms (RIMs) architecture, which comprises a set of interacting yet independent modules. We show that this extension of the RIMs architecture is an effective framework with lower parameter implications compared to purely fine-tuned systems.
机译:本文提出了一种在深度学习环境中注入和利用来自外部资源的现有知识的方法,扩展了最近提出的递归独立机制(RIMs)体系结构,该体系结构由一组相互作用但独立的模块组成。我们表明,与纯微调系统相比,RIMs体系结构的这种扩展是一种参数含义较低的有效框架。

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