The Annenberg School for Communication, University of Pennsylvania, Philadelphia, Pennsylvania, United States of America.
School of Engineering, University of Pennsylvania, Philadelphia, Pennsylvania, United States of America.
PLoS One. 2020 Feb 6;15(2):e0227813. doi: 10.1371/journal.pone.0227813. eCollection 2020.
Despite substantial investments in public health campaigns, misunderstanding of health-related scientific information is pervasive. This is especially true in the case of tobacco use, where smokers have been found to systematically misperceive scientific information about the negative health effects of smoking, in some cases leading smokers to increase their pro-smoking bias. Here, we extend recent work on 'networked collective intelligence' by testing the hypothesis that allowing smokers and nonsmokers to collaboratively evaluate anti-smoking advertisements in online social networks can improve their ability to accurately assess the negative health effects of tobacco use. Using Amazon's Mechanical Turk, we conducted an online experiment where smokers and nonsmokers (N = 1600) were exposed to anti-smoking advertisements and asked to estimate the negative health effects of tobacco use, either on their own or in the presence of peer influence in a social network. Contrary to popular predictions, we find that both smokers and nonsmokers were surprisingly inaccurate at interpreting anti-smoking messages, and their errors persisted if they continued to interpret these messages on their own. However, smokers and nonsmokers significantly improved in their ability to accurately interpret anti-smoking messages by sharing their opinions in structured online social networks. Specifically, subjects in social networks reduced the error of their risk estimates by over 10 times more than subjects who revised solely based on individual reflection (p < 0.001, 10 experimental trials in total). These results suggest that social media networks may be used to activate social learning that improves the public's ability to accurately interpret vital public health information.
尽管在公共卫生宣传方面投入了大量资金,但人们对与健康相关的科学信息仍存在误解。这种情况在吸烟问题上尤为明显,研究发现吸烟者会系统性地误解有关吸烟对健康负面影响的科学信息,有时甚至会导致吸烟者增加对吸烟的偏见。在这里,我们通过测试一个假设来扩展最近关于“网络集体智慧”的研究,即允许吸烟者和不吸烟者在在线社交网络中合作评估反吸烟广告,可以提高他们准确评估吸烟危害的能力。我们利用亚马逊的 Mechanical Turk 进行了一项在线实验,其中 1600 名吸烟者和不吸烟者(N=1600)接触了反吸烟广告,并被要求自行或在社交网络中的同伴影响下评估吸烟对健康的负面影响。与普遍的预测相反,我们发现吸烟者和不吸烟者在解释反吸烟信息时都惊人地不准确,而且如果他们继续自行解释这些信息,他们的错误仍然存在。然而,吸烟者和不吸烟者通过在结构化的在线社交网络中分享他们的意见,大大提高了他们准确解释反吸烟信息的能力。具体来说,社交网络中的参与者将他们的风险估计错误减少了 10 多倍,而仅仅基于个人反思的参与者则减少了(p<0.001,总共进行了 10 次实验)。这些结果表明,社交媒体网络可以用于激活社会学习,从而提高公众准确解读重要公共卫生信息的能力。