Dispersed/Networked Open Social Discovery Research: Applications for Humanistic Machine Learning & Topic Modelling

R. Lane
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Abstract

One of the benefits of open social scholarship also presents researchers with a challenge: the dispersed nature of the knowledge breakthroughs presented by a diverse network of scholars inside and outside of the academy. Accessibility enhances the broad reach of open social scholarship, leading to a democratic engagement across a culturally rich spectrum of participants. But such processes do not necessarily provide coherent critical constellations or knowledge clusters from the perspective of the broad audience. Further, due to the positive benefits of functioning as a group, open social scholarship groups may ignore or simply not register potential discovery research breakthroughs that do not meet the criteria for the groups’ success. In all three instances (knowledge dispersal; lack of knowledge development coherence for all of the community and non-community members across a network; parallel knowledge breakthroughs that remain dispersed/unrecognized), machine learning and topic modelling can provide a methodology for recognizing and understanding open social knowledge creation.
分散/网络开放社会发现研究:人文机器学习和主题建模的应用
开放社会学术的好处之一也给研究人员带来了挑战:由学术界内外不同学者组成的网络所带来的知识突破的分散性。可访问性增强了开放社会学术的广泛影响,从而在文化丰富的参与者中实现民主参与。但是,从广大读者的角度来看,这样的过程不一定能提供连贯的关键星座或知识集群。此外,由于作为一个群体运作的积极利益,开放的社会学术团体可能会忽视或根本不登记潜在的发现研究突破,这些突破不符合团体成功的标准。在这三种情况下(知识扩散;整个网络中所有社区和非社区成员缺乏知识发展的一致性;并行的知识突破(仍然分散/未被识别)、机器学习和主题建模可以为识别和理解开放的社会知识创造提供一种方法。
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