使用POINTER模型的commonen任务的系统描述

Anna Shvets
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引用次数: 1

摘要

在当前的实验中,我们使用基于约束的POINTER模型测试GEM活基准的commonen数据集的结构到文本任务。POINTER代表了一种混合架构,结合了基于插入的范式和转换范式,同时预测令牌和插入位置。因此,给定一组关键字,文本以并行非自回归的方式逐渐生成。在CommonGen数据集的训练分裂上对预训练模型进行微调,并将生成结果与验证分裂和挑战分裂进行比较。在本系统描述中详细讨论了接收到的度量输出,这些度量输出测量词汇等效性、语义相似性和多样性。
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System Description for the CommonGen task with the POINTER model
In a current experiment we were testing CommonGen dataset for structure-to-text task from GEM living benchmark with the constraint based POINTER model. POINTER represents a hybrid architecture, combining insertion-based and transformer paradigms, predicting the token and the insertion position at the same time. The text is therefore generated gradually in a parallel non-autoregressive manner, given the set of keywords. The pretrained model was fine-tuned on a training split of the CommonGen dataset and the generation result was compared to the validation and challenge splits. The received metrics outputs, which measure lexical equivalence, semantic similarity and diversity, are discussed in details in a present system description.
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NUIG-DSI’s submission to The GEM Benchmark 2021 Human Perception in Natural Language Generation SimpleNER Sentence Simplification System for GEM 2021 System Description for the CommonGen task with the POINTER model Semantic Similarity Based Evaluation for Abstractive News Summarization
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