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Development of a Web-Enabled SVR-Based Machine Learning Platform and its Application on Modeling Transgene Expression Activity of Aminoglycoside-Derived Polycations

机译:开发支持网络的基于SVR的机器学习平台及其在氨基糖苷类衍生的聚丙烯型转基因表达活性的应用中的应用

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Objective: Support Vector Regression (SVR) has become increasingly popular in cheminformatics modeling. As a result, SVR-based machine learning algorithms, including Fuzzy-SVR and Least Square-SVR (LS-SVR) have been developed and applied in various research areas. However, at present, few downloadable packages or public-domain software are available for these algorithms. To address this need, we developed the Support vector regression-based Online Learning Equipment (SOLE) web tool (available at http://reccr.chem.rpi.edu/SOLE/index.html) as an online learning system to support predictive cheminformatics and materials informatics studies.
机译:目的:支持向量回归(SVR)在化学信息型建模中越来越受欢迎。 结果,已经开发了基于SVR的机器学习算法,包括模糊SVR和最小二乘SVR(LS-SVR),并应用于各种研究领域。 但是,目前,很少有可下载的包或公共域软件可用于这些算法。 为了解决这一需求,我们开发了基于支持向量的基于回归的在线学习设备(唯一)Web工具(可在http://reccr.chem.rpi.edu/sole/index.html中作为一个在线学习系统,以支持预测性 化工学和材料信息学研究。

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