利用社交媒体指标和关联调查数据了解调查行为

Tarek Al Baghal, Paulo Serôdio, Shujun Liu, Luke Sloan, C. Jessop
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引用次数: 0

摘要

简介和背景 将个人层面的社交媒体和调查数据联系起来,有可能为各种研究问题提供更多证据。为了将这些数据开放给他人使用,需要将社交媒体数据转换成有用的指标,在最大限度地提高效用的同时尽量减少信息披露问题。本研究探讨了 "了解社会 "创新小组中 Twitter 数据与调查数据之间的联系,重点关注 Twitter 数据与类似的匿名调查数据中创建的非披露指标的使用情况。目标与方法创新小组要求同意将 Twitter 数据与调查回复联系起来,并已从 Twitter API 收集了数据。然而,Twitter 的非结构化特性要求我们创建可与关联调查数据共同使用的衡量指标。我们开发了一个框架,用于创建可与调查数据相结合的社交媒体指标,同时删除任何披露性数据,这样这些数据就可以广泛共享,发挥最大效用。目前的研究对这些数据进行了分析,通过描述性统计来了解这些指标是什么样的。我们还通过在逻辑回归模型中加入一组指标来预测自然减员和测量心理健康,从而开始显示这些数据可与调查数据结合使用。与数字足迹的相关性社交媒体是社会生活的一个普遍方面,并留下了大量的数字足迹。然而,这些数据有许多局限性,包括不了解数据的制作者,以及是否有能力将这些数据与具有代表性的人口样本的各种特定(可能是更高质量)衡量标准联系起来。与调查联系起来可以解决这些问题,并能利用数字足迹数据带来新的研究机会。结果虽然样本量小影响了某些分析的有效性,但所开发的方法说明了使用这种新型数据源的方法。结果表明,所创建的指标之间存在很大差异,初步分析表明,包含一组用户级 Twitter 数据与自然减员没有显著关系。然而,Twitter 上被关注的账户越多,用户转发的次数越多,这与 GHQ 量表中较高的精神压力水平有显著关系。结论与启示总的来说,有证据表明社交媒体有助于了解调查结果,也许在测量结果方面更有帮助。本研究为如何使用这些经过策划的社交媒体和调查数据提供了一个初步的起点,我们注意到还有其他社交媒体网络可以应用这一策略;例如 LinkedIn,尤其是在 Twitter (X) 发生变化的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using social media metrics and linked survey data to understand survey behaviors
Introduction & BackgroundLinking social media and survey data at the individual level has the potential to add evidence to a variety of research questions. To make this data openly available to others, social media data need to be converted into useful metrics that minimise issues of disclosure while maximising utility. This research explores linkages of Twitter data and survey data in the Understanding Society Innovation panel, focusing on the usage of non-disclosive metrics created from Twitter data alongside the similarly anonymised survey data. Objectives & ApproachThe Innovation Panel asked for consent to link Twitter data to survey responses and data has been collected from the Twitter API. However, Twitter’s unstructured nature necessitates creating measures that can be used jointly with linked survey data. We have developed a framework to create social media metrics that can be combined with survey data that also remove any disclosive data, so these data can be widely shared for maximum utility. The current research analyses these data to understand what the metrics look like through presentation of descriptive statistics. We also begin to show these data may be used in combination with survey data through inclusion of a set of metrics in logistic regression models predicting attrition and measurement of mental health. Relevance to Digital FootprintsSocial media is a prevalent aspect of social life and leaves a substantial digital footprint. However, there are a number of limitations to these data, including a lack of understanding of who is producing the data, and having the ability to relate these to a variety of specific (and possibly higher quality) measures for a representative sample of the population. Linkage to surveys address these problems and can lead to new research opportunities using digital footprint data. ResultsWhile small sample sizes impact the power of some analyses, the methods developed are illustrative of ways to use this novel data source. Results show that there is high variation in the created metrics, and initial analysis shows that the inclusion of a set of user-level Twitter data is not significantly related to attrition. However, more accounts followed on Twitter and the number of user retweets are significantly related to higher levels of mental distress on the GHQ scale. Conclusions & ImplicationsOverall, there is some evidence that social media helps to understand survey outcomes, perhaps more so on measurement outcomes. This study provides an initial start on how to use these curated linked social media and survey data, and we note there are other social media networks that we can apply this strategy to; for example, LinkedIn, particularly with changes made to Twitter (X).
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