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首页> 外文期刊>The Journal of Artificial Intelligence Research >Data-driven Conceptual Spaces: Creating Semantic Representations For Linguistic Descriptions Of Numerical Data
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Data-driven Conceptual Spaces: Creating Semantic Representations For Linguistic Descriptions Of Numerical Data

机译:数据驱动的概念空间:为数字数据的语言描述创建语义表示

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There is an increasing need to derive semantics from real-world observations to facilitate natural information sharing between machine and human. Conceptual spaces theory is a possible approach and has been proposed as mid-level representation between symbolic and sub-symbolic representations, whereby concepts are represented in a geometrical space that is characterised by a number of quality dimensions. Currently, much of the work has demonstrated how conceptual spaces are created in a knowledge-driven manner, relying on prior knowledge to form concepts and identify quality dimensions. This paper presents a method to create semantic representations using data-driven conceptual spaces which are then used to derive linguistic descriptions of numerical data. Our contribution is a principled approach to automatically construct a conceptual space from a set of known observations wherein the quality dimensions and domains are not known a priori. This novelty of the approach is the ability to select and group semantic features to discriminate between concepts in a data-driven manner while preserving the semantic interpretation that is needed to infer linguistic descriptions for interaction with humans. Two data sets representing leaf images and time series signals are used to evaluate the method. An empirical evaluation for each case study assesses how well linguistic descriptions generated from the conceptual spaces identify unknown observations. Furthermore, comparisons are made with descriptions derived on alternative approaches for generating semantic models.
机译:越来越需要从现实世界的观察中获取语义,以促进机器与人类之间的自然信息共享。概念空间理论是一种可能的方法,并已被提出作为符号和子符号表示之间的中层表示,由此概念在具有多个质量维数的几何空间中表示。当前,许多工作已经证明了如何以知识驱动的方式创建概念空间,并依靠先验知识来形成概念并确定质量维度。本文提出了一种使用数据驱动的概念空间创建语义表示的方法,然后将其用于导出数值数据的语言描述。我们的贡献是从一组已知的观察中自动构建概念空间的原则方法,其中质量维和域不是先验的。这种方法的新颖之处在于能够以数据驱动的方式选择和分组语义特征以区分概念,同时保留推断语言描述以与人类交互所需的语义解释。使用两个代表叶图像和时间序列信号的数据集来评估该方法。每个案例研究的经验评估都评估了从概念空间生成的语言描述如何识别未知的观察结果。此外,与在生成语义模型的替代方法上获得的描述进行了比较。

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