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Interactive reading patterns and metacognitive strategies from surface to deep levels of L2 learners in GenAI-assisted critical reading

Interactive reading patterns and metacognitive strategies from surface to deep levels of L2 learners in GenAI-assisted critical reading
Interactive reading patterns and metacognitive strategies from surface to deep levels of L2 learners in GenAI-assisted critical reading
Engaging critically with academic literature is challenging yet indispensable for research-oriented postgraduate students. Although GenAI-powered tools have been developed to summarize, evaluate, and revise academic texts, there remains a paucity of research on how these tools specifically support the reading processes of second language (L2) readers. To address this gap, this study recruited 53 postgraduate students who were tasked with drafting and revising a critical review of a published academic article using three resources: (1) critical reviews generated by a GenAI-powered tool developed on the Coze platform, (2) communications with an embedded GenAI chatbot, and (3) the original academic article. Lag Sequential Analysis (LSA) revealed three distinct patterns of learner interaction: (1) predominantly relying on GenAI-generated critical reviews with minimal rereading of the original academic article; (2) primarily engaging in careful reading of GenAI-generated critical reviews, supplemented by frequent rereading of the original academic article; and (3) extensively integrating both GenAI-generated critical reviews and direct chatbot interactions. Qualitative interviews further indicated that these interaction patterns were influenced by learners’ deployment of metacognitive strategies adapted to task complexity and cognitive demands. Specifically, Pattern 1 was characterized by surface-level strategies for less challenging tasks, whereas Patterns 2 and 3 involved deeper, more extensive strategies: exploring, evaluating, and synthesizing ideas across GenAI-generated critical reviews, chatbot interactions, and the original academic article. These findings suggest that instructors should scaffold students away from sole reliance on GenAI-generated content toward multi-source evaluation to foster deeper metacognitive strategies and enhance reading depth.
Lin, Haoming
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Wei, Wei
e44fc15d-767a-4e0c-a3d0-1febd7a14551
Zou, Bin
6380a483-3ee8-41bd-a1b2-3d9bdac731bb
Zheng, Ying
abc38a5e-a4ba-460e-92e2-b766d11d2b29
Lin, Haoming
74852985-fbd3-473c-8213-1da91b7a5611
Wei, Wei
e44fc15d-767a-4e0c-a3d0-1febd7a14551
Zou, Bin
6380a483-3ee8-41bd-a1b2-3d9bdac731bb
Zheng, Ying
abc38a5e-a4ba-460e-92e2-b766d11d2b29

Lin, Haoming, Wei, Wei, Zou, Bin and Zheng, Ying (2026) Interactive reading patterns and metacognitive strategies from surface to deep levels of L2 learners in GenAI-assisted critical reading. Discover Computing, 29, [187]. (doi:10.1007/s10791-026-10069-1).

Record type: Article

Abstract

Engaging critically with academic literature is challenging yet indispensable for research-oriented postgraduate students. Although GenAI-powered tools have been developed to summarize, evaluate, and revise academic texts, there remains a paucity of research on how these tools specifically support the reading processes of second language (L2) readers. To address this gap, this study recruited 53 postgraduate students who were tasked with drafting and revising a critical review of a published academic article using three resources: (1) critical reviews generated by a GenAI-powered tool developed on the Coze platform, (2) communications with an embedded GenAI chatbot, and (3) the original academic article. Lag Sequential Analysis (LSA) revealed three distinct patterns of learner interaction: (1) predominantly relying on GenAI-generated critical reviews with minimal rereading of the original academic article; (2) primarily engaging in careful reading of GenAI-generated critical reviews, supplemented by frequent rereading of the original academic article; and (3) extensively integrating both GenAI-generated critical reviews and direct chatbot interactions. Qualitative interviews further indicated that these interaction patterns were influenced by learners’ deployment of metacognitive strategies adapted to task complexity and cognitive demands. Specifically, Pattern 1 was characterized by surface-level strategies for less challenging tasks, whereas Patterns 2 and 3 involved deeper, more extensive strategies: exploring, evaluating, and synthesizing ideas across GenAI-generated critical reviews, chatbot interactions, and the original academic article. These findings suggest that instructors should scaffold students away from sole reliance on GenAI-generated content toward multi-source evaluation to foster deeper metacognitive strategies and enhance reading depth.

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s10791-026-10069-1 - Version of Record
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More information

Accepted/In Press date: 16 March 2026
e-pub ahead of print date: 31 March 2026
Published date: 31 March 2026

Identifiers

Local EPrints ID: 510516
URI: http://eprints.soton.ac.uk/id/eprint/510516
PURE UUID: dbb5430e-6bd5-494d-b261-f29a226f8759
ORCID for Ying Zheng: ORCID iD orcid.org/0000-0003-2574-0358

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Date deposited: 13 Apr 2026 14:38
Last modified: 14 Apr 2026 01:49

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Contributors

Author: Haoming Lin
Author: Wei Wei
Author: Bin Zou
Author: Ying Zheng ORCID iD

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