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Understanding the Influence of Hyperparameters on Text Embeddings for Text Classification Tasks

机译:了解HyperParameters对文本分类任务的文本嵌入的影响

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Many applications in the natural language processing domain require the tuning of machine learning algorithms, which involves adaptation of hyperparameters. We perform experiments by systematically varying hyperparameter settings of text embedding algorithms to obtain insights about the influence and interrelation of hyperparameters on the model performance on a text classification task using text embedding features. For some parameters (e.g., size of the context window) we could not find an influence on the accuracy while others (e.g., dimensionality of the embeddings) strongly influence the results, but have a range where the results are nearly optimal. These insights are beneficial to researchers and practitioners in order to find sensible hyperparameter configurations for research projects based on text embeddings. This reduces the parameter search space and the amount of (manual and automatic) optimization time.
机译:自然语言处理域中的许多应用需要调整机器学习算法,这涉及适应超参数。我们通过系统地改变文本嵌入算法的超级参数设置来执行实验,以获取使用文本嵌入功能在文本分类任务上的模型性能的影响和相互关系的见解。对于某些参数(例如,上下文窗口的大小),我们无法对准确度产生影响,而其他参数(例如,嵌入的维度)强烈影响结果,但具有结果几乎最佳的范围。这些见解对研究人员和从业者有利于找到基于文本嵌入的研究项目的明智的超级参数配置。这减少了参数搜索空间和(手动和自动)优化时间的量。

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