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Regression with Input-dependent Noise: a Relevance Vector Machine Treatment

Regression with Input-dependent Noise: a Relevance Vector Machine Treatment
Regression with Input-dependent Noise: a Relevance Vector Machine Treatment
Gao, J.B.
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Gunn, S.R.
306af9b3-a7fa-4381-baf9-5d6a6ec89868
Harris, C.J.
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Brown, M.
52cf4f52-6839-4658-8cc5-ec51da626049
Gao, J.B.
5adc3f26-6fe2-4b31-9d1a-d1c64b7eefe0
Gunn, S.R.
306af9b3-a7fa-4381-baf9-5d6a6ec89868
Harris, C.J.
c4fd3763-7b3f-4db1-9ca3-5501080f797a
Brown, M.
52cf4f52-6839-4658-8cc5-ec51da626049

Gao, J.B., Gunn, S.R., Harris, C.J. and Brown, M. (2001) Regression with Input-dependent Noise: a Relevance Vector Machine Treatment. IEEE Transactions on Neural Networks.

Record type: Article

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More information

Published date: March 2001
Additional Information: (Submitted for publication)
Organisations: Electronic & Software Systems, Southampton Wireless Group

Identifiers

Local EPrints ID: 252960
URI: https://eprints.soton.ac.uk/id/eprint/252960
PURE UUID: b800940b-7cc3-4580-a166-8ccdc5b74f9c

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Date deposited: 29 Oct 2001
Last modified: 24 Jul 2017 16:42

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Contributors

Author: J.B. Gao
Author: S.R. Gunn
Author: C.J. Harris
Author: M. Brown

University divisions

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