You may be trying to access this site from a secured browser on the server. Please enable scripts and reload this page.
Turn on more accessible mode
Turn off more accessible mode
Skip Ribbon Commands
Skip to main content
Turn off Animations
Turn on Animations
To navigate through the Ribbon, use standard browser navigation keys. To skip between groups, use Ctrl+LEFT or Ctrl+RIGHT. To jump to the first Ribbon tab use Ctrl+[. To jump to the last selected command use Ctrl+]. To activate a command, use Enter.
Browse
Tab 1 of 3.
View
Tab 2 of 3.
Custom Commands
Tab 3 of 3.
Follow
Edit
Item
Version History
Shared With
Delete Item
Manage
ASC Abstracts 2017
Currently selected
ASC program
It looks like your browser does not have JavaScript enabled. Please turn on JavaScript and try again.
Home
Currently selected
ASC Extended abstracts 2015
Recent
Documents
ASC program
ASC theme sessions
Registration
Tasks
Site Contents
Manage Permissions
|
Export Event
Title
Using machine learning to uncover hidden topics of fisheries models
Start Time
20/09/2017 16:17
End Time
20/09/2017 16:29
Description
Category
Theme session details
All Day Event
Recurrence
Presentation Code
Meeting rooms
Grand Ballroom H
Link to webpage
Presentation type
Oral
Order
ID
Link to Abstract
114
Link to Abstract:Abstract Title
Using machine learning to uncover hidden topics of fisheries models
Link to Abstract:First Author
Shaheen Syed
Link to Abstract:ID
114
Theme session
M
Theme session:Title
Modelling social-ecological systems: methods and tools for scenario development and prediction
Theme session:Symbol
M
Theme session:Convenors name
Olivier Thebaud (France) Jan Jaap Poos (the Netherlands) Jörn Schmidt (Germany)
Attachments
Content Type:
Event
Created at 18/09/2017 11:35 by Melissa Alexiou
Last modified at 18/09/2017 11:35 by Melissa Alexiou
Use this page to add attachments to an item.
Name