Department of Applied Mathematics, MIEM, National Research University Higher School of Economics, Moscow, Russia.
Kharkevich Institute for Information Transmission Problems RAS, Moscow, Russia.
PLoS One. 2021 Apr 6;16(4):e0248986. doi: 10.1371/journal.pone.0248986. eCollection 2021.
We study correlations between the structure and properties of a free association network of the English language, and solutions of psycholinguistic Remote Association Tests (RATs). We show that average hardness of individual RATs is largely determined by relative positions of test words (stimuli and response) on the free association network. We argue that the solution of RATs can be interpreted as a first passage search problem on a network whose vertices are words and links are associations between words. We propose different heuristic search algorithms and demonstrate that in "easily-solving" RATs (those that are solved in 15 seconds by more than 64% subjects) the solution is governed by "strong" network links (i.e. strong associations) directly connecting stimuli and response, and thus the efficient strategy consist in activating such strong links. In turn, the most efficient mechanism of solving medium and hard RATs consists of preferentially following sequence of "moderately weak" associations.
我们研究了英语自由联想网络的结构与性质,以及心理语言学远距离联想测验(RAT)的解之间的相关性。我们发现,个别 RAT 的平均难度在很大程度上取决于测验词(刺激和反应)在自由联想网络上的相对位置。我们认为,RAT 的解可以被解释为在一个网络上的首次通过搜索问题,该网络的顶点是单词,边是单词之间的联系。我们提出了不同的启发式搜索算法,并证明在“易解”的 RAT(超过 64%的受试者在 15 秒内解决的 RAT)中,解由直接连接刺激和反应的“强”网络边(即强联系)决定,因此有效的策略包括激活这些强边。反过来,解决中、难 RAT 的最有效机制包括优先遵循“中等弱”联系的序列。