通过对相关数据进行一轮额外的微调,提高UNIX命令短查询的BERT分类性能

Grady McPeak
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引用次数: 0

摘要

机器学习作为一个整体的巨大优势之一是它能够帮助人类消化大量数据,并帮助他们学习有用的信息,否则这些信息将更加难以拼凑在一起,而ML模型的改进通常会导致这种能力的提高。为此,本文对来自变形金刚的双向编码器表示(BERT)的不同版本的相对性能进行了评估,该任务是根据每个帖子最有可能的命令将两个unix相关问答论坛网站上抓取的帖子标题数据集分类为类。不同版本的BERT首先对来自帖子标题的不同数据集进行微调,以便通过引入相关的更长、更详细、更丰富的信息来提高模型分类能力的准确性和精度。此外,将这些模型的性能与异构图注意网络(HGAT)的性能进行了比较。本文的新贡献是HGAT和BERT之间的实际使用比较,新数据集的产生,以及在短文本分类预训练中文本的相关性和长度的价值的支持证据的呈现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving BERT Classification Performance on Short Queries About UNIX Commands Using an Additional Round of Fine-Tuning on Related Data
One of the great advantages of machine learning as a whole is its ability to assist a human with digesting extremely large sets of data, and helping them to learn useful information that otherwise would have been significantly more difficult to piece together, and improvements to ML models often can result in improvements in this ability. To that end, this paper presents an evaluation of the relative performances of differing versions of Bidirectional Encoder Representations from Transformers (BERT) on the task of classifying a dataset of titles from posts scraped from two UNIX-related Q&A forum websites into classes based on what command each post is most likely about. The differing versions of BERT were each first fine-tuned on a different dataset from the post titles in order to try to improve the accuracy and precision of the model’s classification abilities through the introduction of relevant yet longer, more detailed, and more information-rich information. Additionally, the performances of these models are compared to that of the Heterogeneous Graph Attention Network (HGAT). The novel contributions of this paper are a real-world-use comparison between HGAT and BERT, the production of a novel dataset, and the presentation of supporting evidence for the value of relevance and length of text in pretraining for short-text classification.
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