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Optimizing Content with A/B Headline Testing: Changing Newsroom Practices

机译:通过A / B标题测试优化内容:改变新闻编辑室的做法

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Audience analytics are an increasingly essential part of the modern newsroom as publishers seek to maximize the reach and commercial potential of their content. On top of a wealth of audience data collected, algorithmic approaches can then be applied with an eye towards predicting and optimizing the performance of content based on historical patterns. This work focuses specifically on content optimization practices surrounding the use of A/B headline testing in newsrooms. Using such approaches, digital newsrooms might audience-test as many as a dozen headlines per article, collecting data that allows an optimization algorithm to converge on the headline that is best with respect to some metric, such as the click-through rate. This article presents the results of an interview study which illuminate the ways in which A/B testing algorithms are changing workflow and headline writing practices, as well as the social dynamics shaping this process and its implementation within US newsrooms.
机译:受众分析已成为现代新闻编辑室中越来越重要的组成部分,因为发行商正在寻求最大限度地扩大其内容的覆盖范围和商业潜力。除了收集大量的受众数据之外,然后可以将算法方法应用于基于历史模式的预测和优化内容性能。这项工作专门针对在新闻编辑室中使用A / B标题测试的内容优化实践。使用这种方法,数字新闻编辑室可以对每篇文章进行多达十二个标题的受众测试,并收集数据,以使优化算法可以在某些指标(例如点击率)方面达到最佳。本文介绍了一项访谈研究的结果,该研究阐明了A / B测试算法如何改变工作流程和标题写作习惯,以及塑造这一过程的社会动态及其在美国新闻编辑室中的实施情况。

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