Skip to content
VuFind
Advanced
  • A novel semi-supervised algori...
  • Cite this
  • Print
  • Export Record
    • Export to RefWorks
    • Export to EndNoteWeb
    • Export to EndNote
A novel semi-supervised algorithm for rare prescription side effect discovery
QR Code

A novel semi-supervised algorithm for rare prescription side effect discovery

Bibliographic Details
Main Authors: Reps, Jenna M., Garibaldi, Jonathan M., Aickelin, Uwe, Soria, Daniele, Gibson, Jack E., Hubbard, Richard B.
Format: Article
Published: Institute of Electrical and Electronics Engineers 2014
Subjects:
Biomedical Informatics
Data Mining
Online Access:https://eprints.nottingham.ac.uk/3355/
  • Holdings
  • Description
  • Similar Items
  • Staff View

Internet

https://eprints.nottingham.ac.uk/3355/

Similar Items

  • Signalling paediatric side effects using an ensemble of simple study designs
    by: Reps, Jenna M., et al.
    Published: (2014)
  • Comparison of algorithms that detect drug side effects using electronic healthcare databases
    by: Reps, Jenna M., et al.
    Published: (2013)
  • Tuning a multiple classifier system for side effect discovery using genetic algorithms
    by: Reps, Jenna M., et al.
    Published: (2014)
  • Attributes for causal inference in electronic healthcare databases
    by: Reps, Jenna, et al.
    Published: (2013)
  • Comparing stochastic differential equations and agent-based modelling and simulation for early-stage cancer
    by: Figueredo, Grazziela P., et al.
    Published: (2014)

Search Options

  • Advanced Search

Find More

  • Browse the Catalog

Need Help?

  • Search Tips