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Enriching Word Embeddings with Temporal and Spatial Information

机译:用时间和空间信息丰富单词嵌入

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The meaning of a word is closely linked to so-ciocultural factors that can change over time and location, resulting in corresponding meaning changes. Taking a global view of words and their meanings in a widely used language, such as English, may require us to capture more refined semantics for use in time-specific or location-aware situations, such as the study of cultural trends or language use. However, popular vector representations for words do not adequately include temporal or spatial information. In this work, we present a model for learning word representation conditioned on time and location. In addition to capturing meaning changes over time and location, we require that the resulting word embeddings retain salient semantic and geometric properties. We train our model on time- and location-stamped corpora, and show using both quantitative and qualitative evaluations that it can capture semantics across time and locations. We note that our model compares favorably with the state-of-the-art for time-specific embedding, and serves as a new benchmark for location-specific embeddings.
机译:单词的含义与可以随时间和位置变化的So-Civolural因素密切相关,导致相应的含义变化。以广泛使用的语言为单词及其含义来说,如英语,可能要求我们捕获更精细的语义以用于时间特定或地点感知情况,例如文化趋势或语言使用的研究。然而,用于单词的流行传染媒介表示不充分包括时间或空间信息。在这项工作中,我们展示了一个用于按时和位置调节的单词表示的模型。除了捕获含义随时间和位置的变化之外,我们要求产生的Word Embeddings保留突出的语义和几何属性。我们培训我们的模型和位置盖章的模特,并使用定量和定性评估显示它可以跨越时间和位置捕获语义。我们注意到,我们的型号与最先进的时间嵌入方式比较,并用作特定于位置嵌入的新基准。

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