Improving Automated Prediction of English Lexical Blends Through the Use of Observable Linguistic Features

Jarem Saunders
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Abstract

The process of lexical blending is difficult to reliably predict. This difficulty has been shown by machine learning approaches in blend modeling, including attempts using then state-of-the-art LSTM deep neural networks trained on character embeddings, which were able to predict lexical blends given the ordered constituent words in less than half of cases, at maximum. This project introduces a novel model architecture which dramatically increases the correct prediction rates for lexical blends, using only Polynomial regression and Random Forest models. This is achieved by generating multiple possible blend candidates for each input word pairing and evaluating them based on observable linguistic features. The success of this model architecture illustrates the potential usefulness of observable linguistic features for problems that elude more advanced models which utilize only features discovered in the latent space.
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利用可观察的语言特征改进英语词汇混合的自动预测
词汇混合的过程很难可靠地预测。混合建模中的机器学习方法已经证明了这一困难,包括尝试使用当时最先进的LSTM深度神经网络进行字符嵌入训练,在给定有序组成词的情况下,最多只能在不到一半的情况下预测词汇混合。该项目引入了一种新颖的模型架构,该架构仅使用多项式回归和随机森林模型,即可显著提高词汇混合的正确预测率。这是通过为每个输入词配对生成多个可能的混合候选词,并基于可观察到的语言特征对它们进行评估来实现的。这种模型架构的成功说明了可观察语言特征对于那些只利用在潜在空间中发现的特征的更高级模型无法解决的问题的潜在有用性。
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Colexifications for Bootstrapping Cross-lingual Datasets: The Case of Phonology, Concreteness, and Affectiveness KU-CST at the SIGMORPHON 2020 Task 2 on Unsupervised Morphological Paradigm Completion Linguist vs. Machine: Rapid Development of Finite-State Morphological Grammars Exploring Neural Architectures And Techniques For Typologically Diverse Morphological Inflection SIGMORPHON 2020 Task 0 System Description: ETH Zürich Team
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