| Literature DB >> 33969290 |
Frank Emmert-Streib1,2, Matthias Dehmer3,4,5,6.
Abstract
The ultimate goal of the social sciences is to find a general social theory encompassing all aspects of social and collective phenomena. The traditional approach to this is very stringent by trying to find causal explanations and models. However, this approach has been recently criticized for preventing progress due to neglecting prediction abilities of models that support more problem-oriented approaches. The latter models would be enabled by the surge of big Web-data currently available. Interestingly, this problem cannot be overcome with methods from computational social science (CSS) alone because this field is dominated by simulation-based approaches and descriptive models. In this article, we address this issue and argue that the combination of big social data with social networks is needed for creating prediction models. We will argue that this alliance has the potential for gradually establishing a causal social theory. In order to emphasize the importance of integrating big social data with social networks, we call this approach data-driven computational social network science (DD-CSNS).Entities:
Keywords: causal models; computational social science; data science; network science; prediction models; social data; social sciences; web experiments
Year: 2021 PMID: 33969290 PMCID: PMC8100320 DOI: 10.3389/fdata.2021.591749
Source DB: PubMed Journal: Front Big Data ISSN: 2624-909X
FIGURE 1A time line of milestones in the social sciences. The shown years mark notable events of seminal contributions which all contribute to the definition of DD-CSNS. The specific milestones from left to right are studies by Milgram (1967), Axelrod (1997), Watts and Strogatz (1998), Mislove et al. (2007), Lazer et al. (2009), Krizhevsky et al. (2012), Muchnik et al. (2013).
FIGURE 2(A) Connection between offline-reality, online-reality, and constructed-reality. In online communication, individuals do not directly interact with each other but the communication is technology-mediated via computers, laptops, or phones. The resulting technology-mediated social data can then be used to create two different types of models: 1) inferential models also called explanatory models or 2) predictive models. Due to the fact that behind offline as well as online communication is a social network, the technology-medicated social data carry a network signature. (B) Converting Web information to social data requires usually an indirect approach either via an API (application programming interface) or Web site scraping. Only in exceptional cases, it will be possible to directly download the data.
FIGURE 3An overview of DD-CSNS for social theory discovery. Regardless of the type of model that is used (inferential or predictive), such models are network-informed capturing social interactions from the underlying phenomena under investigation. Importantly, the process of scientific discovery is a cyclically sequence of exploration, prediction and validation.