MLP4ML:使用MLP的机器学习服务推荐系统

Bayan I. Alghofaily, Chen Ding
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引用次数: 2

摘要

在这项工作中,我们提出了一种使用多层感知器架构的机器学习(ML)服务推荐的独特方法。根据服务在输入数据集上的预测性能推荐服务。我们将服务质量(QoS)作为性能指标。根据应用程序领域和用户需求,不同QoS属性的重要性级别可能不同。对于ML服务,其QoS值受到输入数据集和服务的影响。如果我们能将他们的特征包含到推荐模型中,那将会很有帮助。在这项工作中,我们考虑了两种类型的侧信息:服务的特征和用户的特征(在我们的例子中是用户给出的数据集)。在实验中,我们以OpenML为数据源,提取运行在390个数据集上的多个分类服务的QoS值。结果表明,数据集-服务交互可以用来预测给定数据集上服务的性能。当我们整合所有的侧信息时,在预测和推荐精度方面都优于单独使用交互数据。
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MLP4ML: Machine Learning Service Recommendation System using MLP
In this work, we propose a unique approach for Machine Learning (ML) service recommendation using multilayer perceptron architecture. A service is recommended based on its predicted performance on the input dataset. We take Quality of Services (QoS) as the performance indicator. Depending on the application domain and user requirements, the importance level of different QoS attributes could be different. For ML services, their QoS values are affected by both the input dataset and the service. It would be helpful if we can include their features into the recommendation model. In this work, we consider two types of side information: features of the services and of the user (in our case the dataset given by the user). In the experiment, we take OpenML as our data source and extract QoS values of multiple classification services running on 390 datasets. The result shows that dataset-service interactions can be used to predict the performance of a service on a given dataset. When we integrate all the side information, the performance is better than using the interaction data alone in terms of both prediction and recommendation accuracy.
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