| Literature DB >> 35220816 |
Peter Kokol1, Marko Kokol2, Sašo Zagoranski2.
Abstract
Machine Learning is an increasingly important technology dealing with the growing complexity of the digitalised world. Despite the fact, that we live in a 'Big data' world where, almost 'everything' is digitally stored, there are many real-world situations, where researchers are still faced with small data samples. The present bibliometric knowledge synthesis study aims to answer the research question 'What is the small data problem in machine learning and how it is solved?' The analysis a positive trend in the number of research publications and substantial growth of the research community, indicating that the research field is reaching maturity. Most productive countries are China, United States and United Kingdom. Despite notable international cooperation, the regional concentration of research literature production in economically more developed countries was observed. Thematic analysis identified four research themes. The themes are concerned with to dimension reduction in complex big data analysis, data augmentation techniques in deep learning, data mining and statistical learning on small datasets.Entities:
Keywords: Machine learning; bibliometrics; knowledge synthesis; small data sets
Mesh:
Year: 2022 PMID: 35220816 DOI: 10.1177/00368504211029777
Source DB: PubMed Journal: Sci Prog ISSN: 0036-8504 Impact factor: 2.774