Wong Christina, Amini Reza, De Koninck Joseph
School of Psychology, University of Ottawa, Ottawa, Ontario K1N 6N5, Canada.
Conscious Cogn. 2016 Aug;44:20-28. doi: 10.1016/j.concog.2016.06.004. Epub 2016 Jun 23.
A computer program was developed in an attempt to differentiate the dreams of males from females. Hypothesized gender predictors were based on previous literature concerning both dream content and written language features. Dream reports from home-collected dream diaries of 100 male (144 dreams) and 100 female (144 dreams) adolescent Anglophones were matched for equal length. They were first scored with the Hall and Van de Castle (HVDC) scales and quantified using DreamSAT. Two male and two female undergraduate students were asked to read all dreams and predict the dreamer's gender. They averaged a pairwise percent correct gender prediction of 75.8% (κ=0.516), while the Automatic Analysis showed that the computer program's accuracy was 74.5% (κ=0.492), both of which were higher than chance of 50% (κ=0.00). The prediction levels were maintained when dreams containing obvious gender identifiers were eliminated and integration of HVDC scales did not improve prediction.
开发了一个计算机程序,试图区分男性和女性的梦境。假设的性别预测指标基于先前有关梦境内容和书面语言特征的文献。从100名讲英语的青少年男性(144个梦境)和100名青少年女性(144个梦境)在家收集的梦境日记中选取的梦境报告长度相等。首先使用霍尔和范德卡斯尔(HVDC)量表进行评分,并使用DreamSAT进行量化。两名男性和两名女性本科生被要求阅读所有梦境并预测做梦者的性别。他们平均对性别预测的两两正确率为75.8%(κ=0.516),而自动分析显示计算机程序的准确率为74.5%(κ=0.492),两者均高于50%的随机概率(κ=0.00)。当剔除包含明显性别标识符的梦境时,预测水平得以维持,并且整合HVDC量表并没有提高预测效果。