Difference between revisions of "DiLES"

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(Created page with '=== Description === ''DiLES'' is a disclosure learning evaluation system. It has been developed within the project [http://wwwiuk.informatik.uni-rostock.de/research/current_proj…')
 
 
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=== Description ===
 
=== Description ===
  
''DiLES'' is a disclosure learning evaluation system. It has been developed within the project [http://wwwiuk.informatik.uni-rostock.de/research/current_projects/privacy_in_smart_environments/ Privacy in Smart Environments].
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''DiLES'' is a disclosure learning evaluation system. It has been developed as part of the thesis ''Privacy Management in Smart Environments'' by Christian Bünnig (the thesis is currently in the review process).
  
=== Contributers ===
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=== Contributors ===
  
 
* [[User:Cbuennig|Christian Bünnig]]
 
* [[User:Cbuennig|Christian Bünnig]]
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=== Software ===
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* Latest version: https://opsci.informatik.uni-rostock.de/repos/software/DiLES/diles-20120831.tgz
  
 
=== Datasets ===
 
=== Datasets ===
  
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The ''DiLES'' system has been used to evaluate machine learning methods on two scenarios - a manually composed scenario and a scenario generated from a [[DiHabs]] survey.
  
=== Software ===
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* Scenario specifications https://opsci.informatik.uni-rostock.de/repos/datasets/DiLES/Scenario-Specifications/
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* Evaluation results (illustrated) https://opsci.informatik.uni-rostock.de/repos/datasets/DiLES/Evaluation-Results/Plots/
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* Evaluation results (raw) https://opsci.informatik.uni-rostock.de/repos/datasets/DiLES/Evaluation-Results/
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=== Publication ===
  
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Dissertation thesis: http://katalog.ub.uni-rostock.de/DB=1/XMLPRS=N/PPN?PPN=750563060

Latest revision as of 11:47, 15 December 2015

Description

DiLES is a disclosure learning evaluation system. It has been developed as part of the thesis Privacy Management in Smart Environments by Christian Bünnig (the thesis is currently in the review process).

Contributors

Software

Datasets

The DiLES system has been used to evaluate machine learning methods on two scenarios - a manually composed scenario and a scenario generated from a DiHabs survey.

Publication

Dissertation thesis: http://katalog.ub.uni-rostock.de/DB=1/XMLPRS=N/PPN?PPN=750563060