Computational assessment of long-term memory structures from SDA-M related to action sequences.
Assistance systems should be able to adapt to individual task-related skills and knowledge. Structural-dimensional analysis of mental representations (SDA-M) is an established method for retrieving human memory structures related to specific activities. For this purpose, SDA-M involves a semi-automa...
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doaj-b177f0b6525f46efb569f184d0030c872021-03-03T20:52:04ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01142e021241410.1371/journal.pone.0212414Computational assessment of long-term memory structures from SDA-M related to action sequences.Benjamin StrengeLudwig VogelThomas SchackAssistance systems should be able to adapt to individual task-related skills and knowledge. Structural-dimensional analysis of mental representations (SDA-M) is an established method for retrieving human memory structures related to specific activities. For this purpose, SDA-M involves a semi-automatized survey of users (the "split procedure"), which yields data about users' associations between action representations in long-term memory. Up to now this data about associations has commonly been clustered and visualized by SDA-M software in the form of dendrograms that can be used by human experts as a tool to (manually) assess users' individual expertise and identify potential issues with respect to predefined action sequences. This article presents new algorithmic approaches for automatizing the process of assessing task-related memory structures based on SDA-M data to predict probable errors in action sequences. This automation enables direct integration into technical systems, e.g. user-adaptive assistance systems. An evaluation study has compared the automatized computational assessments to predictions made by human scholars based on visualizations of SDA-M data. The different algorithms' outputs matched human experts' manual assessments in 84% to 86% of the test cases.https://doi.org/10.1371/journal.pone.0212414 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Benjamin Strenge Ludwig Vogel Thomas Schack |
spellingShingle |
Benjamin Strenge Ludwig Vogel Thomas Schack Computational assessment of long-term memory structures from SDA-M related to action sequences. PLoS ONE |
author_facet |
Benjamin Strenge Ludwig Vogel Thomas Schack |
author_sort |
Benjamin Strenge |
title |
Computational assessment of long-term memory structures from SDA-M related to action sequences. |
title_short |
Computational assessment of long-term memory structures from SDA-M related to action sequences. |
title_full |
Computational assessment of long-term memory structures from SDA-M related to action sequences. |
title_fullStr |
Computational assessment of long-term memory structures from SDA-M related to action sequences. |
title_full_unstemmed |
Computational assessment of long-term memory structures from SDA-M related to action sequences. |
title_sort |
computational assessment of long-term memory structures from sda-m related to action sequences. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2019-01-01 |
description |
Assistance systems should be able to adapt to individual task-related skills and knowledge. Structural-dimensional analysis of mental representations (SDA-M) is an established method for retrieving human memory structures related to specific activities. For this purpose, SDA-M involves a semi-automatized survey of users (the "split procedure"), which yields data about users' associations between action representations in long-term memory. Up to now this data about associations has commonly been clustered and visualized by SDA-M software in the form of dendrograms that can be used by human experts as a tool to (manually) assess users' individual expertise and identify potential issues with respect to predefined action sequences. This article presents new algorithmic approaches for automatizing the process of assessing task-related memory structures based on SDA-M data to predict probable errors in action sequences. This automation enables direct integration into technical systems, e.g. user-adaptive assistance systems. An evaluation study has compared the automatized computational assessments to predictions made by human scholars based on visualizations of SDA-M data. The different algorithms' outputs matched human experts' manual assessments in 84% to 86% of the test cases. |
url |
https://doi.org/10.1371/journal.pone.0212414 |
work_keys_str_mv |
AT benjaminstrenge computationalassessmentoflongtermmemorystructuresfromsdamrelatedtoactionsequences AT ludwigvogel computationalassessmentoflongtermmemorystructuresfromsdamrelatedtoactionsequences AT thomasschack computationalassessmentoflongtermmemorystructuresfromsdamrelatedtoactionsequences |
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