Social sciences Social data science is part of the
social sciences along with established disciplines (
anthropology,
economics,
political science,
psychology, and
sociology) and newer interdisciplinary fields like
behavioral science,
criminology,
international relations, and
cognitive science. As such, its fundamental unit of study is social relations, human behavior and cultural ideas, which it investigates by using quantitative and/or qualitative data and methods to develop, test and improve fundamental theories concerning the nature of the human condition. SDS also differs from traditional social science in two ways. • First, its primary object is digitized phenomena and data in the widest sense of this word, ranging from digitized text corpora to the footprints gathered by digital platforms and sensors. • Secondly, more than simply applying existing quantitative and qualitative
social science methods, social data science seeks to develop and disrupt these via the import and integration of state of the art of data science techniques
Data Science Social data science is a form of
data science in that it applies advanced
computational methods and
statistics to gain information and insights from data. Social data science researchers often make use of methods developed by
data scientists, such as
data mining and
machine learning, which includes but is not limited to the extraction and processing of information from
big data sources. Unlike the broader field of data science, which involves any application and study involving the combination of computational and statistical methods, social data science mainly concerns the scientific study of digital social data and/or
digital footprints from human behavior.
Computational Social Science Like
computational social science, social data science uses data science methods to solve social science problems. This includes the reappropriation and refinement of methods developed by data scientists to better fit the questions and data of the social sciences as well as their specialized domain knowledge and theories. Unlike computational social science, social data science also includes critical studies of how digital platforms and computational processes affect wider society and of how computational and non-computational approaches integrate and combine.
Digital Methods While most social data science researchers are closely affiliated with or part of computational social science, some qualitative oriented social data scientists are influenced by the fields of
digital humanities and digital methods that emerged from
science and technology studies (STS). Like digital methods, the aim is here to repurpose the 'methods of the medium' to study digitally-mediated society and to engage in an ongoing discussions about bias in science and society by bringing computational social science and Digital Methods into dialogue. SDS is also related to
digital sociology and
digital anthropology, but to a higher degree aspires to augment qualitative data and digital methods with state of the art data science techniques. ==History of the field==