ACM transactions on intelligent systems and technology: What can knowledge bring to machine learning?—A survey of low-shot learning for structured data
ACM transactions on intelligent systems and technology: What can knowledge bring to machine learning?—A survey of low-shot learning for structured data
Supervised machine learning has several drawbacks that make it difficult to use in many situations. Drawbacks include heavy reliance on massive training data, limited generalizability, and poor expressiveness of high-level semantics. Low-shot Learning attempts to address these drawbacks. Low-shot learning allows the model to obtain good predictive power with very little or no training data, where structured knowledge plays a key role as a high-level semantic representation of human. This article will review the fundamental factors of low-shot learning technologies, with a focus on the operation of structured knowledge under different low-shot conditions. We also introduce other techniques relevant to low-shot learning. Finally, we point out the limitations of low-shot learning, the prospects and gaps of industrial applications, and future research directions.
low-shot learning, future directions, Machine learning, structured knowledge, Industrial applications
1-45
Hu, Yang
3a9d668f-8b65-4a93-b15f-1363e07d44fa
Chapman, Age
721b7321-8904-4be2-9b01-876c430743f1
Wen, Guihua
411fd94f-89bd-4ad7-908d-9c876afd7564
Hall, Wendy
11f7f8db-854c-4481-b1ae-721a51d8790c
3 March 2022
Hu, Yang
3a9d668f-8b65-4a93-b15f-1363e07d44fa
Chapman, Age
721b7321-8904-4be2-9b01-876c430743f1
Wen, Guihua
411fd94f-89bd-4ad7-908d-9c876afd7564
Hall, Wendy
11f7f8db-854c-4481-b1ae-721a51d8790c
Hu, Yang, Chapman, Age, Wen, Guihua and Hall, Wendy
(2022)
ACM transactions on intelligent systems and technology: What can knowledge bring to machine learning?—A survey of low-shot learning for structured data.
ACM Transactions on Intelligent Systems and Technology, 13 (3), .
(doi:10.1145/3508465).
Abstract
Supervised machine learning has several drawbacks that make it difficult to use in many situations. Drawbacks include heavy reliance on massive training data, limited generalizability, and poor expressiveness of high-level semantics. Low-shot Learning attempts to address these drawbacks. Low-shot learning allows the model to obtain good predictive power with very little or no training data, where structured knowledge plays a key role as a high-level semantic representation of human. This article will review the fundamental factors of low-shot learning technologies, with a focus on the operation of structured knowledge under different low-shot conditions. We also introduce other techniques relevant to low-shot learning. Finally, we point out the limitations of low-shot learning, the prospects and gaps of industrial applications, and future research directions.
Text
3510030
- Version of Record
Restricted to Repository staff only
Request a copy
More information
Published date: 3 March 2022
Keywords:
low-shot learning, future directions, Machine learning, structured knowledge, Industrial applications
Identifiers
Local EPrints ID: 455835
URI: http://eprints.soton.ac.uk/id/eprint/455835
ISSN: 2157-6904
PURE UUID: 3b510fa7-fe1f-4763-9c6b-b12243e825bb
Catalogue record
Date deposited: 06 Apr 2022 16:37
Last modified: 17 Mar 2024 03:46
Export record
Altmetrics
Contributors
Author:
Yang Hu
Author:
Guihua Wen
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics