Show simple item record

AuthorRanasinghe, N.
AuthorRamanan, A.
AuthorFernando, S.
AuthorHameed, P. N.
AuthorHerath, D.
AuthorMalepathirana, T.
AuthorSuganthan, P.
AuthorNiranjan, M.
AuthorHalgamuge, S.
Available date2023-02-15T07:05:45Z
Publication Date2022-01-01
Publication NameJournal of the National Science Foundation of Sri Lanka
Identifierhttp://dx.doi.org/10.4038/jnsfsr.v50i0.11249
CitationRanasinghe, N., Ramanan, A., Fernando, S., Hameed, P. N., Herath, D., Malepathirana, T., ... & Halgamuge, S. (2022). Interpretability and accessibility of machine learning in selected food processing, agriculture and health applications. arXiv preprint arXiv:2211.16699.‏
ISSN13914588
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85142728547&origin=inward
URIhttp://hdl.handle.net/10576/40054
AbstractArtificial Intelligence (Al) and its data-centric branch of machine learning (ML) have greatly evolved over the last few decades. However, as Al is used increasingly in real world use cases, the importance of the interpretability of and accessibility to Al systems have become major research areas. The lack of interpretability of ML based systems is a major hindrance to widespread adoption of these powerful algorithms. This is due to many reasons including ethical and regulatory concerns, which have resulted in poorer adoption of ML in some areas. The recent past has seen a surge in research on interpretable ML. Generally, designing a ML system requires good domain understanding combined with expert knowledge. New techniques are emerging to improve ML accessibility through automated model design. This paper provides a review of the work done to improve interpretability and accessibility of machine learning in the context of global problems while also being relevant to developing countries. We review work under multiple levels of interpretability including scientific and mathematical interpretation, statistical interpretation and partial semantic interpretation. This review includes applications in three areas, namely food processing, agriculture and health.
Languageen
PublisherNational Science Foundation
SubjectDisease detection in agriculture
drug repositioning
food processing
interpretation of neural networks
metagenomics
TitleInterpretability and accessibility of machine learning in selected food processing, agriculture and health applications
TypeOther
Pagination263-276
Issue NumberSpecial Issue
Volume Number50


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record