Skip to main content
Intended for healthcare professionals

The International Journal of Hybrid Intelligent Systems (IJHIS) is a peer refereed journal on the theory and applications of hybrid and integrated intelligent systems. The key objective of IJHIS is to provide the academic community with a medium for presenting original research and applications related to the simultaneous use of two or more intelligent techniques. Rather than publishing papers in one particular area of expertise, the journal aims to be the main forum for publishing papers that involve the use of two or more intelligent techniques and approaches, such as neural networks, traditional knowledge-based methods, fuzzy techniques, genetic algorithms, agent-based techniques, case based reasoning, etc. The combination or integration of more distinct methodologies can be done in any form, either by a modular integration of two or more intelligent methodologies, which maintains the identity of each methodology, or by fusing one methodology into another, or by transforming the knowledge representation in one methodology into another form of representation, characteristic to another methodology. View full journal description

Browse by

Articles most recently published online for this journal.
Most read articles in this journal in the last 6 months.
Most cited articles published in this journal in the last 3 years. These statistics are updated weekly using data sourced exclusively from CrossRef.
Articles with the highest Altmetric score from the last 3 months, indicating influence and impact.

You might be interested in

Publish with us

Authors will enjoy:

  • Rigorous peer review of your research
  • Prompt publishing
  • Multidisciplinary audience
  • High visibility for global exposure

Information for Authors, Editors, and Reviewers

Sage supports authors, editors, and reviewers throughout all steps of the publishing process. Explore our resources:

Sage discipline hubs

Explore the content from across our disciplines, including the latest journal articles, special issues, and related books and digital library content.