Work-in-Progress: Maximizing Model Accuracy in Real-time and Iterative Machine Learning

Rui Han, Fan Zhang, L. Chen, Jianfeng Zhan
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引用次数: 4

Abstract

As iterative machine learning (ML) (e.g. neural network based supervised learning and k-means clustering) becomes more ubiquitous in our daily life, it is becoming increasingly important to complete model training quickly to support real-time decision making, while still achieving high model accuracy (e.g. low prediction errors) that is critical for profits of ML tasks. Motivated by the observation that the small proportions of accuracy-critical input data can contribute to large parts of model accuracy in many iterative ML applications, this paper introduces a system middleware to maximize model accuracy by spending the limited time budget on the most accuracy-related input data. To achieve this, our approach employs a fast method to divide the input data into multiple parts of similar points and represents each part with an aggregated data point. Using these points, it quickly estimates the correlations between different parts and model accuracy, thus allowing ML tasks to process the most accuracy-related parts first. We incorporate our approach with two popular supervised and unsupervised ML algorithms on Spark and demonstrate its benefits in providing high model accuracy under short deadlines.
正在进行的工作:在实时和迭代机器学习中最大化模型准确性
随着迭代机器学习(ML)(例如基于神经网络的监督学习和k-means聚类)在我们的日常生活中变得越来越普遍,快速完成模型训练以支持实时决策变得越来越重要,同时仍然实现高模型精度(例如低预测误差),这对ML任务的利润至关重要。在许多迭代机器学习应用中,一小部分对准确性至关重要的输入数据可以贡献很大一部分的模型准确性,因此本文引入了一个系统中间件,通过将有限的时间预算花在与准确性最相关的输入数据上,从而最大化模型准确性。为了实现这一点,我们的方法采用了一种快速的方法,将输入数据分成多个相似点的部分,并用一个聚合的数据点表示每个部分。使用这些点,它可以快速估计不同部件和模型精度之间的相关性,从而允许ML任务首先处理与精度最相关的部件。我们将我们的方法与Spark上两种流行的监督和无监督ML算法结合起来,并展示了它在短时间内提供高模型准确性的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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