创造力嵌入:深度学习NLP模型中表征和分类似然三元组的向量

Isabeau Oliveri, Luca Ardito, Giuseppe Rizzo, M. Morisio
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引用次数: 0

摘要

英语。本文基于多样性、新颖性、偶然性和重要性、知识图谱和神经网络这四个自我评估的创造力指标来定义文本的创造力嵌入。我们使用三元概念(头、关系、尾)作为基本单位。我们调查了关于创造力的额外信息是否能改善自然语言处理任务。在这项工作中,我们专注于三重合理性任务,利用BERT模型和WordNet11数据集样本。与我们的假设相反,我们没有发现性能的提高。
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Creativity Embedding: A Vector to Characterise and Classify Plausible Triples in Deep Learning NLP Models
English. In this paper we define the creativity embedding of a text based on four self-assessment creativity metrics, namely diversity, novelty, serendipity and magnitude, knowledge graphs, and neural networks. We use as basic unit the notion of triple (head, relation, tail). We investigate if additional information about creativity improves natural language processing tasks. In this work, we focus on triple plausibility task, exploiting BERT model and a WordNet11 dataset sample. Contrary to our hypothesis, we do not detect increase in the performance.
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