上下文感知的知识选择和可靠的模型推荐与ACCORDION。

IF 2.3
Frontiers in systems biology Pub Date : 2024-04-18 eCollection Date: 2024-01-01 DOI:10.3389/fsysb.2024.1308292
Yasmine Ahmed, Cheryl A Telmer, Gaoxiang Zhou, Natasa Miskov-Zivanov
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引用次数: 0

摘要

新发现和新知识每年在每个科学领域发表的数千篇论文中进行总结,这使得科学家无法解释所有与他们的研究相关的可用知识。在本文中,我们提出了ACCORDION(加速和优化模型推荐),这是一种新的方法和专家系统,它从文献和数据库中检索和选择相关知识,以推荐具有正确结构和准确行为的模型,从而实现机制解释和预测,并促进理解。ACCORDION引入了一种集成了知识检索、图算法、聚类、模拟和形式化分析的方法。在这里,我们专注于生物系统,尽管提出的方法适用于其他领域。我们在9个基准案例研究中使用了ACCORDION,并将其性能与其他先前发布的工具进行了比较。我们表明ACCORDION是:全面的,通过机器阅读引擎从一系列文献来源检索相关知识;非常有效,将初始基线模型的误差减少了80%以上,推荐的模型可以很好地概括期望的行为,并且优于先前发表的工具;选择性地,只推荐文献中最相关的、特定于上下文的和有用的子集(15%-20%);多样化,考虑几个不同的标准来推荐一个以上的解决方案,从而实现替代解释或干预方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-aware knowledge selection and reliable model recommendation with ACCORDION.

New discoveries and knowledge are summarized in thousands of published papers per year per scientific domain, making it incomprehensible for scientists to account for all available knowledge relevant for their studies. In this paper, we present ACCORDION (ACCelerating and Optimizing model RecommenDatIONs), a novel methodology and an expert system that retrieves and selects relevant knowledge from literature and databases to recommend models with correct structure and accurate behavior, enabling mechanistic explanations and predictions, and advancing understanding. ACCORDION introduces an approach that integrates knowledge retrieval, graph algorithms, clustering, simulation, and formal analysis. Here, we focus on biological systems, although the proposed methodology is applicable in other domains. We used ACCORDION in nine benchmark case studies and compared its performance with other previously published tools. We show that ACCORDION is: comprehensive, retrieving relevant knowledge from a range of literature sources through machine reading engines; very effective, reducing the error of the initial baseline model by more than 80%, recommending models that closely recapitulate desired behavior, and outperforming previously published tools; selective, recommending only the most relevant, context-specific, and useful subset (15%-20%) of candidate knowledge in literature; diverse, accounting for several distinct criteria to recommend more than one solution, thus enabling alternative explanations or intervention directions.

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