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情感相关词汇中的标度律及相应的网络拓扑结构。

Scaling laws in emotion-associated words and corresponding network topology.

作者信息

Takehara Takuma, Ochiai Fumio, Suzuki Naoto

机构信息

Department of Psychology, Doshisha University, 1-3 Tatara-miyakodani, Kyotanabe, Kyoto, 610-0394, Japan,

出版信息

Cogn Process. 2015 May;16(2):151-63. doi: 10.1007/s10339-014-0643-z. Epub 2014 Nov 16.

Abstract

We investigated whether scaling laws were present in the appearance-frequency distribution of emotion-associated words and determined whether the network constructed from those words had small-world or scale-free properties. Over 1,400 participants were asked to write down the first single noun that came to mind in response to nine emotional cue words, resulting in a total of 12,556 responses. We identified Zipf's law in the distribution of the data, as the slopes of the regression lines reached approximately -1.0 in the appearance frequencies for each emotional cue word. This suggested that the emotion-associated words had a clear regularity, were not randomly generated, were scale-invariant, and were influenced by unification/diversification forces. Thus, we predicted that the emotional intensity of the words might play an important role for a Zipf's law. Moreover, we also found that the 1-mode network of emotion-associated words clearly had small-world properties in terms of the network topologies of clustering, average distance, and small-worldness value, indicating that all nodes (words) were highly interconnected with each other and were only a few short steps apart. Furthermore, the data suggested the possibility of a scale-free property. Interestingly, we were able to identify hub words with neutral emotional content, such as 'dog', 'woman', and 'face', indicating that these neutral words might be an intermediary between words with conflicting emotional valence. Additionally, efficiency and optimal navigation in terms of complex networks were discussed.

摘要

我们研究了情感相关词汇的出现频率分布中是否存在标度律,并确定了由这些词汇构建的网络是否具有小世界或无标度特性。超过1400名参与者被要求写下他们看到九个情感提示词后脑海中浮现的第一个单个名词,总共得到了12556个反应。我们在数据分布中识别出了齐普夫定律,因为每个情感提示词的出现频率的回归线斜率约为-1.0。这表明情感相关词汇具有明显的规律性,不是随机生成的,是尺度不变的,并且受到统一/多样化力量的影响。因此,我们预测词汇的情感强度可能对齐普夫定律起着重要作用。此外,我们还发现,就聚类、平均距离和小世界值的网络拓扑而言,情感相关词汇的单模网络明显具有小世界特性,这表明所有节点(词汇)彼此高度互连,且距离仅几步之遥。此外,数据表明存在无标度特性的可能性。有趣的是,我们能够识别出具有中性情感内容的枢纽词,如“狗”“女人”和“脸”,这表明这些中性词可能是具有冲突情感效价的词汇之间的中介。此外,还讨论了复杂网络方面的效率和最优导航问题。

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