Showing 81 - 100 results of 2,359 for search 'improve answer', query time: 0.11s Refine Results
  1. 81

    An Evaluation of the Internship Learning Model to Improve the Competence of Higher Education Graduates by Tjitjik Rahaju, Eva Hany Fanida, Muhammad Farid Ma'ruf, Novi Marlena, Siti Atika Rahmi, I Made Yudhiantara, Abdul Rahman Abdul Latip

    Published 2024-12-01
    “…This problem can be answered by implementing an innovative internship program and collaborating with various partners. …”
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    Article
  2. 82

    The effect of pending feedback on the IELTS speaking test result: grammatical range and accuracy in focus by Zahra Zargaran

    Published 2025-05-01
    “…It was found experimental group demonstrated an improvement in IELTS speaking scores, indicating a strong correlation between pending feedback and better speaking performance. …”
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    Article
  3. 83

    Question-answering enhancement method for large educational models based on re-ranking and post-retrieval reflection by SUN Haoran, WANG Zhihao, WU Yifan, GAO Xiaoying, XIANG Yang

    Published 2025-01-01
    “…This approach significantly improves the accuracy of large language models in computer question-answering tasks. …”
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    Article
  4. 84

    Detecting changes in retinal function: Analysis with Non-Stationary Weibull Error Regression and Spatial enhancement (ANSWERS). by Haogang Zhu, Richard A Russell, Luke J Saunders, Stefano Ceccon, David F Garway-Heath, David P Crabb

    Published 2014-01-01
    “…Furthermore, the spatial correlation utilised in ANSWERS was shown to improve the ability to detect deterioration, compared to equivalent models without spatial correlation, especially in short follow-up series. …”
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    Article
  5. 85

    A lightweight knowledge graph-driven question answering system for field-based mineral resource survey by Mingguo Wang, Chengbin Wang, Jianguo Chen, Bo Wang, Wei Wang, Xiaogang Ma, Jiangtao Ren, Zichen Li, Yicai Ye, Jiakai Zhang, Yue Wang

    Published 2025-09-01
    “…The results also suggest that further studies on geoscience pre-trained models, an informative library of question templates, and multimodal knowledge graphs are necessary to improve the performance of the knowledge graph-driven question-answering system.…”
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    Article
  6. 86
  7. 87

    Evaluating the accuracy of CHATGPT models in answering multiple-choice questions on oral and maxillofacial pathologies and oral radiology by Doaa Felemban, Ahoud Jazzar, Yasmin Mair, Maha Alsharif, Alla Alsharif, Saba Kassim

    Published 2025-07-01
    “…Only 98 questions (72%) were correctly answered by the three models. Ten months later, the unpaid ChatGPT version showed a significant improvement in accuracy, while the paid versions maintained consistent performance over time with no significant differences. …”
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    Article
  8. 88
  9. 89

    Question Answering Enhancement Method for Large Educational Models Based on Re-ranking and Post-retrieval Reflection by SUN Haoran, WANG Zhihao, WU Yifan, XIANG Yang

    Published 2025-01-01
    “…This approach significantly improves the accuracy of large language models in computer question-answering tasks. …”
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    Article
  10. 90

    Is Self-Mark dependable in Very Short Answer Question formats among pre-clinical medical students? by Sethapong Lertsakulbunlue, Anupong Kantiwong

    Published 2025-04-01
    “…Introduction: Very Short Answer Questions (VSAQs) minimise cueing and simulate actual clinical practice more accurately than Single Best Answer Questions, as multiple-choice options might not be realistic. …”
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    Article
  11. 91

    A brain-inspired memory transformation based differentiable neural computer for reasoning-based question answering by Yao Liang, Yao Liang, Yuwei Wang, Yuwei Wang, Hongjian Fang, Hongjian Fang, Feifei Zhao, Yi Zeng, Yi Zeng, Yi Zeng, Yi Zeng, Yi Zeng

    Published 2025-08-01
    “…Reasoning and question answering, as fundamental cognitive functions in humans, remain significant hurdles for artificial intelligence. …”
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    Article
  12. 92

    Assessing the accuracy and readability of ChatGPT-4 and Gemini in answering oral cancer queries—an exploratory study by Márcio Diniz-Freitas, Rosa María López-Pintor, Alan Roger Santos-Silva, Saman Warnakulasuriya, Pedro Diz-Dios

    Published 2024-11-01
    “…Conclusions: Gemini provides more complete and accurate responses to questions about oral cancer that lay people may seek answers to compared to ChatGPT-4, although its responses were less readable. …”
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    Article
  13. 93

    Answering real-world clinical questions using large language model, retrieval-augmented generation, and agentic systems by Yen Sia Low, Michael L Jackson, Rebecca J Hyde, Robert E Brown, Neil M Sanghavi, Julian D Baldwin, C William Pike, Jananee Muralidharan, Gavin Hui, Natasha Alexander, Hadeel Hassan, Rahul V Nene, Morgan Pike, Courtney J Pokrzywa, Shivam Vedak, Adam Paul Yan, Dong-han Yao, Amy R Zipursky, Christina Dinh, Philip Ballentine, Dan C Derieg, Vladimir Polony, Rehan N Chawdry, Jordan Davies, Brigham B Hyde, Nigam H Shah, Saurabh Gombar

    Published 2025-06-01
    “…Results General-purpose LLMs rarely produced relevant, evidence-based answers (2–10% of questions). In contrast, RAG-based and agentic LLM systems, respectively, produced relevant, evidence-based answers for 24% (OpenEvidence) to 58% (ChatRWD) of questions. …”
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    Article
  14. 94

    DRKG: Faithful and Interpretable Multi-Hop Knowledge Graph Question Answering via LLM-Guided Reasoning Plans by Yan Chen, Shuai Sun, Xiaochun Hu

    Published 2025-06-01
    “…Traditional embedding-based methods map natural language questions and knowledge graphs into vector spaces for answer matching through vector operations. While these approaches have improved model performance, they face two critical challenges: the lack of clear interpretability caused by implicit reasoning mechanisms, and the semantic gap between natural language queries and structured knowledge representations. …”
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    Article
  15. 95

    Intelligent question answering for water conservancy project inspection driven by knowledge graph and large language model collaboration by Yangrui Yang, Sisi Chen, Yaping Zhu, Xuemei Liu, Shifeng Pan, Xin Wang

    Published 2024-12-01
    “…The results affirm the method’s effectiveness in improving the accuracy of intelligent question-answering in hydroengineering inspection, with potential implications for similar applications in other domains of hydraulic engineering.…”
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    Article
  16. 96
  17. 97

    Accuracy of Large Language Models When Answering Clinical Research Questions: Systematic Review and Network Meta-Analysis by Ling Wang, Jinglin Li, Boyang Zhuang, Shasha Huang, Meilin Fang, Cunze Wang, Wen Li, Mohan Zhang, Shurong Gong

    Published 2025-04-01
    “…Studies on the accuracy of LLMs when answering clinical research questions were included and screened by reading published reports. …”
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    Article
  18. 98

    Evaluating large language models as graders of medical short answer questions: a comparative analysis with expert human graders by Olena Bolgova, Paul Ganguly, Muhammad Faisal Ikram, Volodymyr Mavrych

    Published 2025-12-01
    “…The assessment of short-answer questions (SAQs) in medical education is resource-intensive, requiring significant expert time. …”
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    Article
  19. 99

    TCMLCM: an intelligent question-answering model for traditional Chinese medicine lung cancer based on the KG2TRAG method by Zhou Chunfang, Gong Qingyue, Zhan Wendong, Zhu Jinyang, Luan Huidan

    Published 2025-03-01
    “…Objective: To improve the accuracy and professionalism of question-answering (QA) model in traditional Chinese medicine (TCM) lung cancer by integrating large language models with structured knowledge graphs using the knowledge graph (KG) to text-enhanced retrieval-augmented generation (KG2TRAG) method. …”
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    Article
  20. 100