我们如何在银行后台办公环境中使用文本分类作为“照常营业”的解决方案

Zsolt Krutilla, Attila Kovari
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引用次数: 0

摘要

如今,自然语言处理为科学家提供了许多研究领域和机会,但与大多数应用科学一样,我们在自然语言处理中的目标是改进基础科学和技术,直到它可以可靠地用于商业目的。像GPT或BERT这样的变形模型目前在自然语言处理领域显示出杰出的成果,但它们需要巨大的计算能力和数据来进行教学,但这些条件只能由更大的研究中心和大公司来满足,而且它们的不准确性使它们不适合作为“一切照旧”(BAU)解决方案使用。在本文中,我们提出了一种解决方案,能够通过关注准确性和可用性来克服这些问题,并且也可以为教授深度学习模型的过程带来新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How we can use text classification in the Back-Office environment of a bank as ‘business as usual’ solution
Natural Language Processing nowadays provides scientists with many research areas and opportunities, but as with most applied sciences, our goal in Natural Language Processing is to refine the underlying science and technology until it can be used reliably for business purposes. Transformer models, such as GPT or BERT, are currently showing outstanding results in the field of natural-language processing, but they require huge computational power and data to teach, but these conditions can only be met by larger research centers and large companies, and their inaccuracy makes them unsuitable for use as a ‘business as usual’ (BAU) solution. In this paper, we present a solution that is able to overcome these problems by focusing on accuracy and usability, and that can also bring a new perspective to the process of teaching deep learning models.
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