Log in
Language:

MERAL Myanmar Education Research and Learning Portal

  • Top
  • Universities
  • Ranking
To
lat lon distance
To

Field does not validate



Index Link

Index Tree

Please input email address.

WEKO

One fine body…

WEKO

One fine body…

Item

{"_buckets": {"deposit": "a18c4e77-4f25-4291-99b5-46ccc5865fb4"}, "_deposit": {"created_by": 45, "id": "6163", "owner": "45", "owners": [45], "owners_ext": {"displayname": "", "username": ""}, "pid": {"revision_id": 0, "type": "recid", "value": "6163"}, "status": "published"}, "_oai": {"id": "oai:meral.edu.mm:recid/6163", "sets": ["user-uit"]}, "communities": ["uit"], "item_1583103067471": {"attribute_name": "Title", "attribute_value_mlt": [{"subitem_1551255647225": "A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition", "subitem_1551255648112": "en"}]}, "item_1583103085720": {"attribute_name": "Description", "attribute_value_mlt": [{"interim": "Feature selection is a technique of selecting the most important features for predictive model construction. It is a key component in machine learning for many pattern recognition applications. The primary objective of this paper is to create a more precise system for Human Activity Recognition (HAR) by identifying the most appropriate features. We propose a Cyclic Attribution Technique (CAT) feature selection technique for recognition of human activity based on group theory and the fundamental properties of the cyclic group. We tested our model on UCI-HAR dataset focusing on six activities. With the proposed method, 561 features could be reduced to 63. Using an Artificial Neural Network (ANN), we compared performances of our new dataset with selected features and the original dataset classifier. Results showed that the model could provide an excellent overall accuracy of 96.7%. The proposed CAT technique can specify high-quality features to the success of HAR with ANN classifier. Two benefits support this technique by reducing classification overfitting and training time."}]}, "item_1583103108160": {"attribute_name": "Keywords", "attribute_value_mlt": [{"interim": "Feature selection"}, {"interim": "Attribution technique"}, {"interim": "Human activity recognition"}, {"interim": "Cyclic group"}, {"interim": "Artificial Neural Network"}]}, "item_1583103120197": {"attribute_name": "Files", "attribute_type": "file", "attribute_value_mlt": [{"accessrole": "open_no", "date": [{"dateType": "Available", "dateValue": "2020-11-13"}], "displaytype": "preview", "filename": "A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition.pdf", "filesize": [{"value": "531 Kb"}], "format": "application/pdf", "licensefree": "© 2019 MECS", "licensetype": "license_free", "url": {"url": "https://meral.edu.mm/record/6163/files/A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition.pdf"}, "version_id": "01114f51-b75d-4f04-bde6-52f894657946"}]}, "item_1583103131163": {"attribute_name": "Journal articles", "attribute_value_mlt": [{"subitem_journal_title": "International Journal of Intelligent Systems and Applications (IJISA)", "subitem_pages": "25-32"}]}, "item_1583105942107": {"attribute_name": "Authors", "attribute_value_mlt": [{"subitem_authors": [{"subitem_authors_fullname": "Win Win Myo"}, {"subitem_authors_fullname": "Wiphada Wettayaprasit"}, {"subitem_authors_fullname": "Pattara Aiyarak"}]}]}, "item_1583108359239": {"attribute_name": "Upload type", "attribute_value_mlt": [{"interim": "Publication"}]}, "item_1583108428133": {"attribute_name": "Publication type", "attribute_value_mlt": [{"interim": "Journal article"}]}, "item_1583159729339": {"attribute_name": "Publication date", "attribute_value": "2019-10-01"}, "item_1583159847033": {"attribute_name": "Identifier", "attribute_value": "10.5815/ijisa.2019.10.03"}, "item_title": "A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition", "item_type_id": "21", "owner": "45", "path": ["1596102427017"], "permalink_uri": "http://hdl.handle.net/20.500.12678/0000006163", "pubdate": {"attribute_name": "Deposited date", "attribute_value": "2020-11-13"}, "publish_date": "2020-11-13", "publish_status": "0", "recid": "6163", "relation": {}, "relation_version_is_last": true, "title": ["A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition"], "weko_shared_id": -1}
  1. University of Information Technology
  2. Faculty of Computing

A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition

http://hdl.handle.net/20.500.12678/0000006163
http://hdl.handle.net/20.500.12678/0000006163
82d0164d-3250-42de-9151-ffa4a6277b4a
a18c4e77-4f25-4291-99b5-46ccc5865fb4
Publication type
Journal article
Upload type
Publication
Title
Title A Cyclic Attribution Technique Feature Selection Method for Human Activity Recognition
Language en
Publication date 2019-10-01
Authors
Win Win Myo
Wiphada Wettayaprasit
Pattara Aiyarak
Description
Feature selection is a technique of selecting the most important features for predictive model construction. It is a key component in machine learning for many pattern recognition applications. The primary objective of this paper is to create a more precise system for Human Activity Recognition (HAR) by identifying the most appropriate features. We propose a Cyclic Attribution Technique (CAT) feature selection technique for recognition of human activity based on group theory and the fundamental properties of the cyclic group. We tested our model on UCI-HAR dataset focusing on six activities. With the proposed method, 561 features could be reduced to 63. Using an Artificial Neural Network (ANN), we compared performances of our new dataset with selected features and the original dataset classifier. Results showed that the model could provide an excellent overall accuracy of 96.7%. The proposed CAT technique can specify high-quality features to the success of HAR with ANN classifier. Two benefits support this technique by reducing classification overfitting and training time.
Keywords
Feature selection, Attribution technique, Human activity recognition, Cyclic group, Artificial Neural Network
Identifier 10.5815/ijisa.2019.10.03
Journal articles
International Journal of Intelligent Systems and Applications (IJISA)
25-32
Back
0
0
views
downloads
See details
Views Downloads

Versions

Ver.1 2020-11-13 16:34:15.787891
Show All versions

Share

Mendeley Twitter Facebook Print Addthis

Export

OAI-PMH
  • OAI-PMH DublinCore
Other Formats
  • JSON

Confirm


Back to MERAL


Back to MERAL