ALT:一个长尾情景建模的自动系统

Ya-Lin Zhang, Jun Zhou, Yankun Ren, Yue Zhang, Xinxing Yang, Meng Li, Qitao Shi, Longfei Li
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引用次数: 0

摘要

本文考虑了预算有限的长尾场景建模问题,即模型训练阶段的人力资源不足,模型推理阶段的时间和计算资源有限。这个问题在各种应用中都遇到过,但迄今为止还没有得到足够的重视。我们提出了一个名为ALT的自动系统来处理这个问题。本文对系统中使用的算法进行了改进,例如采用各种与自动机器学习相关的技术,采用元学习理念,提出一种基本的预算有限的神经结构搜索方法等。在构建系统时,从系统的角度进行了许多优化,并武装了必要的模块,使系统更具可行性和高效性。我们进行了大量的实验来验证系统的有效性,并展示了系统中关键模块的实用性。并给出了在线结果,充分验证了系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ALT: An Automatic System for Long Tail Scenario Modeling
In this paper, we consider the problem of long tail scenario modeling with budget limitation, i.e., insufficient human resources for model training stage and limited time and computing resources for model inference stage. This problem is widely encountered in various applications, yet has received deficient attention so far. We present an automatic system named ALT to deal with this problem. Several efforts are taken to improve the algorithms used in our system, such as employing various automatic machine learning related techniques, adopting the meta learning philosophy, and proposing an essential budget-limited neural architecture search method, etc. Moreover, to build the system, many optimizations are performed from a systematic perspective, and essential modules are armed, making the system more feasible and efficient. We perform abundant experiments to validate the effectiveness of our system and demonstrate the usefulness of the critical modules in our system. Moreover, online results are provided, which fully verified the efficacy of our system.
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