confirmation bias 和 subjective validation 有什么区别?

2025-03-17 02:58:46
推荐回答(2个)
回答1:

confirmation bias是指,遇到一个命题时人会倾向于寻找支持这个命题的证据,而忽视否定这个命题的证据。比如看见“费德勒比纳达尔强”,会去自动寻找费德勒比纳达尔强的证据,而忽视费德勒输给纳达尔这种与命题相反的证据。判断命题的人未必是费德勒的粉丝,只是人通常有确定一个命题的倾向。中国人如此,美国人也如此。

而subjective validation是指,遇到一个命题会因为自己的某个Belief或者Identification而赞同它。比如一个费德勒粉丝会坚定支持“费德勒比纳达尔强”,甚至费德勒输给纳达尔时他也会持有“费德勒在巅峰时期肯定比巅峰时期的纳达尔强”这种观点。

还有相反的,比如美国人说叶诗文符禁药,我们作为中国人当然觉得中国名誉受损,所以会特别希望反驳这一条;但公知们为了批评体制,为了显得自己反政府反体制,会觉得叶诗文肯定是服禁药了肯定是体制的牺牲品生活一定不幸福blablabla。还有个更离谱的是,比如“美女都很温柔”这个命题,一个温柔又美丽的女孩子可能会比较赞同这个命题,因为这符合自己的性格,尽管“美女”和“温柔”没有必然联系。

回答2:

confirmation bias:确认偏差
subjective validation:主观验证
confirmation bias是指,遇到一个命题时人会倾向于寻找支持这个命题的证据,而忽视否定这个命题的证据。
而subjective validation是指,遇到一个命题会因为自己的某个Belief或者Identification而赞同它。

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