Automated Writing Evaluation (AWE) System: Difference between revisions

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** [[Research-Backed System]]s, such as:   
** [[Research-Backed System]]s, such as:   
*** [[WriteLab]], leveraging [[NLP]] for [[argumentation analysis]].   
*** [[WriteLab]], leveraging [[NLP]] for [[argumentation analysis]].   
*** [[ScriBB]], designed for [[non-native speaker]]s to improve [[academic writing]].   
*** [[Scribbr]], designed for [[non-native speaker]]s to improve [[academic writing]].   
* <B>Counter-Examples:</B>   
* <B>Counter-Examples:</B>   
** [[Basic Spell Checker]]s, which lack [[contextual feedback]] (e.g., [[Microsoft Word Spell Check]]).   
** [[Basic Spell Checker]]s, which lack [[contextual feedback]] (e.g., [[Microsoft Word Spell Check]]).   
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=== 2023b ===
=== 2023b ===
* ([[Fakher Ajabshir & Ebadi, 2023]]) ⇒ Zahra Fakher Ajabshir, and Saman Ebadi . (2023). [https://sfleducation.springeropen.com/articles/10.1186/s40862-023-00201-9 "The effects of automatic writing evaluation and teacher-focused feedback on CALF measures and overall quality of L2 writing across different genress"]. In: [[SpringerOpen - Smart Learning Environments Journal]].
* ([[Fakher Ajabshir & Ebadi, 2023]]) ⇒ Zahra Fakher Ajabshir, and Saman Ebadi . (2023). [https://sfleducation.springeropen.com/articles/10.1186/s40862-023-00201-9 "The effects of automatic writing evaluation and teacher-focused feedback on CALF measures and overall quality of L2 writing across different genress"]. In: [[SpringerOpen - Asian-Pacific Journal of Second and Foreign Language Education volume]].
** QUOTE: While traditionally providing feedback to written texts was done by teachers or peers, with increasing technological advancements and the devising of automated writing evaluation (AWE) tools, this responsibility has been delegated to online editing and proofreading platforms. These platforms serve as learning affordances that scaffold teachers by providing immediate feedback on micro-level writing features like grammar and spelling. Thus, teachers and students can allocate more time and attentional resources to macro-level writing skills such as organization and content (...)
** QUOTE: While traditionally providing feedback to written texts was done by teachers or peers, with increasing technological advancements and the devising of [[automated writing evaluation (AWE) tool]]s, this responsibility has been delegated to [[online editing and proofreading platform]]s. These platforms serve as learning affordances that scaffold teachers by providing immediate feedback on [[micro-level writing]] features like [[grammar]] and [[spelling]]. Thus, teachers and students can allocate more time and attentional resources to [[macro-level writing skill]]s such as organization and content (...)


=== 2023c ===
=== 2023c ===
* ([[van Steendam et al., 2023]]) ⇒ JJohanna Fleckenstein, Lucas W. Liebenow, and Jennifer Meyer(2023). [https://www.frontiersin.org/journals/artificial-intelligence/articles/10.3389/frai.2023.1162454/full "Automated feedback and writing: a multi-level meta-analysis of effects on students' performance"]. In: [[Frontiers in Artificial Intelligence]].
* ([[Fleckenstein et al., 2023]]) ⇒ Johanna Fleckenstein, Lucas W. Liebenow, and Jennifer Meyer(2023). [https://www.frontiersin.org/journals/artificial-intelligence/articles/10.3389/frai.2023.1162454/full "Automated feedback and writing: a multi-level meta-analysis of effects on students' performance"]. In: [[Frontiers in Artificial Intelligence]].
** QUOTE:  Adaptive learning opportunities and individualized, timely feedback are considered to be effective support measures for students' writing in educational contexts. However, the extensive time and expertise required to analyze numerous drafts of student writing pose a barrier to teaching. Automated writing evaluation (AWE) tools can be used for individual feedback based on advances in Artificial Intelligence (AI) technology. A number of primary (quasi-)experimental studies have investigated the effect of AWE feedback on students' writing performance.
** QUOTE:  [[Adaptive learning]] opportunities and individualized, timely feedback are considered to be effective support [[measure]]s for students' writing in educational contexts. However, the extensive time and expertise required to analyze numerous drafts of student writing pose a barrier to teaching. [[Automated writing evaluation (AWE) tool]]s can be used for individual feedback based on advances in [[Artificial Intelligence (AI)]] technology. A number of primary [[(quasi-)experimental studio]]es have investigated the effect of [[AWE feedback]] on [[students' writing performance]].


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Latest revision as of 22:33, 2 March 2025

An Automated Writing Evaluation (AWE) System is an Automated System that uses natural language processing and machine learning to assess written text, provide feedback, and support writing skill development.



References

2025

2024a

2024b

2023a

2023b

2023c