如何向男性提供性别多样性教育:拯救培训算法

IF 4.9 2区 心理学 Q1 PSYCHOLOGY, APPLIED
Radostina K. Purvanova, Andrew Bryant
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引用次数: 0

摘要

性别多样性培训通常是为不同性别的受众提供的。这种 "一刀切 "的方法可能并不理想,因为有关性别偏见和不平等的信息往往会因性别差异而不同:男性比女性更不可能相信这些信息。我们主张通过在培训系统中实施细分和定制算法来定制性别多样性培训。为了发展我们的理论,我们将以学习者为中心的多元化培训方法与柔术说服理论的原则相结合。由此,我们测试了一种新的多样性培训方法,这种方法涉及动态适应和针对学习者的培训。具体来说,我们首先确定了两个不同的男性群体--信仰者和怀疑者--并开发了一种用户友好型细分算法,只需使用五个项目就能实时细分男性群体(研究 1)。然后,我们使用该算法将男性受训者分段分配到定制或非定制培训中,结果表明,向持怀疑态度的男性提供定制信息可改善培训反应,提高他们支持性别多元化工作的意愿(研究 2)。因此,我们表明,动态适应和量身定制成功地解释了培训结果,尤其是对那些对多元化信息持怀疑态度的受训者而言。实际上,我们的研究证明了细分算法在组织培训系统中的功能和价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to deliver gender diversity education to men: Training algorithms to the rescue

Gender diversity training is typically provided to mix-gender audiences. This one-size-fits-all approach may be suboptimal because information about gender bias and inequity is often received differently along gender lines: men are less likely than women to believe it. We argue for tailoring gender diversity training via implementing segmentation and tailoring algorithms in training systems. To develop our theorizing, we integrate a learner-centric approach to diversity training with principles of jiu jitsu persuasion theory. This leads us to test a new approach to diversity training that involves dynamic adaptation and tailoring the training to learners. Specifically, we first identify two distinct segments of men—believers and skeptics—and develop a user-friendly segmentation algorithm that segments men, in real time, using only five items (Study 1). We then use the algorithm to assign segments of men trainees to tailored or non-tailored training and show that presenting skeptic men with a tailored message improves training reactions and increases intentions to support gender diversity efforts (Study 2). Thus, we show that dynamic adaptation and tailoring successfully explain training outcomes, particularly for trainees who are skeptical of the diversity message. Practically, our study demonstrates the functionality and value of segmentation algorithms for organizations' training systems.

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来源期刊
CiteScore
13.70
自引率
5.60%
发文量
84
期刊介绍: "Applied Psychology: An International Review" is the esteemed official journal of the International Association of Applied Psychology (IAAP), a venerable organization established in 1920 that unites scholars and practitioners in the field of applied psychology. This peer-reviewed journal serves as a global platform for the scholarly exchange of research findings within the diverse domain of applied psychology. The journal embraces a wide array of topics within applied psychology, including organizational, cross-cultural, educational, health, counseling, environmental, traffic, and sport psychology. It particularly encourages submissions that enhance the understanding of psychological processes in various applied settings and studies that explore the impact of different national and cultural contexts on psychological phenomena.
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