云AI服务推荐系统

Atsushi Hoshino, T. Saito, Mizuki Oka
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引用次数: 0

摘要

许多学习的推理引擎已经作为基于云的人工智能服务发布。然而,习得的人工智能服务是黑匣子,用户很难决定选择哪种服务。我们提出了一种比较服务,通过学习它们不同的输出结果作为训练数据来推断最佳的人工智能服务。我们的模型“选择最佳人工智能的人工智能”涉及元学习;它学习基于云的AI服务的输出作为元数据。我们比较并评估了两个提出的模型的准确性和成本,这两个模型推荐了几种商业人工智能服务和集成方法中最好的。我们在维基百科上抓取的人脸图像数据集上推断人脸属性(即年龄和性别)的实验结果表明,我们的系统的准确性高于基于云的单一人脸分类人工智能服务。值得注意的是,与现有的基于云的人工智能相比,推断年龄和性别的结果的准确率高出6.2%,其中每个服务的训练数据在准确性趋势上存在显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Recommendation System for Cloud AI Services
Many learned inference engines have been released as cloud-based AI services. However, learned AI services are black boxes, and it is difficult for users to decide which service to choose. We propose a comparison service to infer the best AI service by learning their different output results as training data. Our model, “AI for selecting the best AI,” involves meta-learning; it learns the output of the cloud-based AI service as metadata. We compared and evaluated the accuracy and cost of two proposed models that recommend the best among several commercial AI services and an ensemble method. The results of our experiments to infer face attributes (i.e., age and gender) on a face image dataset crawled from Wikipedia showed that the accuracy of our system was higher than that of single face classification cloud-based AI service. Notably, results on inferring age and gender, where training data for each service showed a significant difference in the tendency for accuracy, had 6.2% higher accuracy compared to existing cloud-based AIs.
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来源期刊
Transactions of The Japanese Society for Artificial Intelligence
Transactions of The Japanese Society for Artificial Intelligence Computer Science-Artificial Intelligence
CiteScore
0.40
自引率
0.00%
发文量
36
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