Difference between revisions of "IoTSec:Phone 2020/02/12"

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(short notes)
(Status)
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NR
 
NR
*
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has studied and tested predictive analytics based on machine learning algorithms. At this stage, the following machine learning algorithms have been selected for the predictive analytics toolkit: Support Vector Machine (SVM), K- nearest neighbors (KNN), Decision Tree, Random Forest. The toolkit has been tested using the following three different datasets.
 
+
The KDDCup-99 dataset  [http://kdd.ics.uci.edu/databases/kddcup99/kddcup99.html].
 
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The CIC IDS 2017 dataset [https://www.unb.ca/cic/datasets/ids-2017.html]. 
 +
The  UNSW-NB15 dataset [https://www.unsw.adfa.edu.au/unsw-canberra-cyber/cybersecurity/ADFA-NB15-Datasets/]. 
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This preliminary study has shown that the SVM method has performed inadequately for training /testing time.
 +
It has also achieved lower accuracy for the UNSW-NB15 Dataset. The random forest method performs well while requiring slightly more time for training than the decision tree method.  In this preliminary study, we have used the datasets that available on line.  All features supplied with these datasets have been applied. OpenAPI is also implemented using swagger.
 +
In the next stage, we plan to define how to select a feature set that produces acceptable results with predefined accuracy while reducing the volume of the collected and stored data. Further, we plan to develop methods for predictive analytics that operate on real-time data collections and investigate new efficient predictive algorithms based on deep learning techniques.
  
 
== other discussion ==
 
== other discussion ==
 
{{IoTSec:ActionItems}}
 
{{IoTSec:ActionItems}}

Revision as of 14:03, 12 February 2020

Security in IoT for Smart Grids
Home Research Security Centre Publications Student corner About
English-Language-icon.png
Title IoTSec:Phone Meeting February2020
Phone number, info +47 21933751 725-796-213
Date, time, Duration 2020/02/12, 14:00, 60 min
Organizer Christian Johansen
Participants Christian Johansen

this page was created by Special:FormEdit/Phone_IoTSec, and can be edited by Special:FormEdit/Phone_IoTSec/IoTSec:Phone 2020/02/12

Call Info

http://gotomeet.me/BasicInternet

or phone Norway: +47 21 93 37 51 Access Code: 725-796-213

More phone numbers FI: +358 923 17 0568 DE: +49 692 5736 7317 IT: +39 0 247 92 13 01 NL: +31 202 251 017 ES: +34 932 75 2004 SE: +46 853 527 827

Help on joining can be taken from IoTSec:Meetings#Help_for_using_GoToMeeting_conference_tool


Agenda

  • Status for the joint IoTSec papers and general project goal fitting
    • Progress plans with Milestones and Responsibilities
  • Status from each partner (at least from PhD students including update on time-line)
  • AOB

Minutes

Minutes of the meeting IoTAdmin:20200212PhoneMeeting_Notes

short notes

Status

UiO

SIN

NTNU

NR has studied and tested predictive analytics based on machine learning algorithms. At this stage, the following machine learning algorithms have been selected for the predictive analytics toolkit: Support Vector Machine (SVM), K- nearest neighbors (KNN), Decision Tree, Random Forest. The toolkit has been tested using the following three different datasets. The KDDCup-99 dataset [1]. The CIC IDS 2017 dataset [2]. The UNSW-NB15 dataset [3]. This preliminary study has shown that the SVM method has performed inadequately for training /testing time. It has also achieved lower accuracy for the UNSW-NB15 Dataset. The random forest method performs well while requiring slightly more time for training than the decision tree method. In this preliminary study, we have used the datasets that available on line. All features supplied with these datasets have been applied. OpenAPI is also implemented using swagger. In the next stage, we plan to define how to select a feature set that produces acceptable results with predefined accuracy while reducing the volume of the collected and stored data. Further, we plan to develop methods for predictive analytics that operate on real-time data collections and investigate new efficient predictive algorithms based on deep learning techniques.

other discussion