Opening the black box of perceived quality: Predicting endorsement on a blog site

Catherine Sotirakou, Damian Trilling, Panagiotis Germanakos, C. Mourlas
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引用次数: 1

Abstract

Uncovering their readers’ perceptions is of key importance for every news media organization to find methods to improve the quality of their product. It has the potential to facilitate journalists’ work in attracting attention and gaining a loyal audience. Discovering which elements of a news story influence readers’ perceptions has been a cross-disciplinary research goal for the past years, because it can play a crucial role in news dissemination and consumption in the digital age. Drawing upon literature in the various areas such as journalism, psychology, computer science, and AI, this paper proposes a machine learning approach that explores three dimensions of article features that can help predicting the online behavior of the reader. Results show that how the story is written, the topic, and certain aspects of the author’s online reputation can affect reader endorsements and the perceived quality of an article. CCS CONCEPTS • Computing methodologies → Natural language processing; • Applied computing → Document management and text processing.
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打开感知质量的黑盒子:预测博客网站的认可
揭示读者的看法对每个新闻媒体组织找到提高产品质量的方法至关重要。它有可能促进记者的工作,以吸引注意力和获得忠实的观众。过去几年,发现新闻故事的哪些元素会影响读者的感知一直是一个跨学科的研究目标,因为它可以在数字时代的新闻传播和消费中发挥至关重要的作用。本文借鉴了新闻、心理学、计算机科学和人工智能等各个领域的文献,提出了一种机器学习方法,该方法探索了文章特征的三个维度,可以帮助预测读者的在线行为。结果显示,文章的写作方式、主题和作者在线声誉的某些方面会影响读者对文章的认可和感知质量。•计算方法→自然语言处理;•应用计算→文档管理和文本处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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