Department of Data Science, Universiti Malaysia Kelantan, 16100 Pengkalan Chepa, Kelantan, Malaysia.
Department of Data Science, Universiti Malaysia Kelantan, 16100 Pengkalan Chepa, Kelantan, Malaysia.
Artif Intell Med. 2022 Oct;132:102394. doi: 10.1016/j.artmed.2022.102394. Epub 2022 Sep 5.
Outbreaks of the COVID-19 pandemic caused by the SARS-CoV-2 infection that started in Wuhan, China, have quickly spread worldwide. The current situation has contributed to a dynamic rate of hospital admissions. Global efforts by Artificial Intelligence (AI) and Machine Learning (ML) communities to develop solutions to assist COVID-19-related research have escalated ever since. However, despite overwhelming efforts from the AI and ML community, many machine learning-based AI systems have been designed as black boxes. This paper proposes a model that utilizes Formal Concept Analysis (FCA) to explain a machine learning technique called Long-short Term Memory (LSTM) on a dataset of hospital admissions due to COVID-19 in the United Kingdom. This paper intends to increase the transparency of decision-making in the era of ML by using the proposed LSTM-FCA explainable model. Both LSTM and FCA are able to evaluate the data and explain the model to make the results more understandable and interpretable. The results and discussions are helpful and may lead to new research to optimize the use of ML in various real-world applications and to contain the disease.
由 SARS-CoV-2 感染引起的 COVID-19 疫情在中国武汉爆发后,迅速在全球范围内蔓延。目前的情况导致医院入院率呈动态变化。自那以后,人工智能 (AI) 和机器学习 (ML) 社区全球范围内共同努力,开发出有助于 COVID-19 相关研究的解决方案。然而,尽管人工智能和机器学习社区做出了巨大努力,但许多基于机器学习的 AI 系统都被设计成了黑箱。本文提出了一种模型,该模型利用形式概念分析 (FCA) 来解释一种名为长短期记忆 (LSTM) 的机器学习技术,该技术用于分析英国因 COVID-19 而住院的数据集。本文旨在通过使用所提出的 LSTM-FCA 可解释模型来提高机器学习时代的决策透明度。LSTM 和 FCA 都能够评估数据并解释模型,从而使结果更易于理解和解释。结果和讨论是有帮助的,并可能导致新的研究,以优化 ML 在各种现实世界应用中的使用,并控制疾病。