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Classification of Dreams Using Machine Learning

机译:使用机器学习的梦想分类

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We describe a project undertaken by an interdisciplinary team of researchers in sleep and in and machine learning. The goal is sentiment extraction from a corpus containing short textual descriptions of dreams. Dreams are categorized in a four-level scale of affections. The approach is based on a novel representation, taking into account the leading themes of the dream and the sequential unfolding of associated affective feelings during the dream. The dream representation is based on three combined parts, two of which are automatically produced from the description of the dream. The first part consists of co-occurrence vectors, which - unlike the standard Bag-of-words model - capture non-local relationships between meanings of word in a corpus. The second part introduces the dynamic representation that captures the change in affections throughout the progress of the dream. The third part is the self-reported assessment of the dream by the dreamer according to eight given attributes. The three representations are subject to aggressive feature selection. Using an ensemble of classifiers and the combined 3-partite representation, we have achieved 64% accuracy, which is in the range of human experts' consensus in that domain.
机译:我们描述了临床和机器学习中的研究人员跨学科团队进行的项目。目标是从包含梦想短文本描述的语料库中提取的情绪提取。梦想分为四级的情感规模。该方法基于一个新颖的代表性,考虑到梦中的主要主题和梦中相关的情感感受的连续展开。梦想表示基于三个组合零件,其中两个组合零件自动从梦想的描述中生成。第一部分由共同发生的载体组成,与标准袋式模型不同 - 捕获语料库中字的含义之间的非局部关系。第二部分介绍了动态表示,其在整个梦中的过程中捕获了情感的变化。第三部分是根据八个特定属性的梦想家自我报告的梦想评估。三个表示受到侵略性的特征选择。使用分类器的合并和组合的3船尾代表性,我们已经实现了64%的准确性,这是在该领域的人力专家共识的范围内。

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