Researcher reasoning meets computational capacity: Machine learning for social science.

Journal: Social science research
PMID:

Abstract

Computational power and big data have created new opportunities to explore and understand the social world. A special synergy is possible when social scientists combine human attention to certain aspects of the problem with the power of algorithms to automate other aspects of the problem. We review selected exemplary applications where machine learning amplifies researcher coding, summarizes complex data, relaxes statistical assumptions, and targets researcher attention to further social science research. We aim to reduce perceived barriers to machine learning by summarizing several fundamental building blocks and their grounding in classical statistics. We present a few guiding principles and promising approaches where we see particular potential for machine learning to transform social science inquiry. We conclude that machine learning tools are increasingly accessible, worthy of attention, and ready to yield new discoveries for social research.

Authors

  • Ian Lundberg
    Department of Sociology and California Center for Population Research University of California, Los Angeles.
  • Jennie E Brand
    Department of Sociology, Department of Statistics, California Center for Population Research, and Center for Social Statistics, University of California, Los Angeles, California, USA.
  • Nanum Jeon
    Department of Sociology, Department of Statistics, California Center for Population Research, UCLA, USA. Electronic address: njeon@ucla.edu.