DiNeR: A Large Realistic Dataset for Evaluating Compositional Generalization

ChenGang Hu, Xiao Liu, Yansong Feng
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Abstract

Most of the existing compositional generalization datasets are synthetically-generated, resulting in a lack of natural language variation. While there have been recent attempts to introduce non-synthetic datasets for compositional generalization, they suffer from either limited data scale or a lack of diversity in the forms of combinations. To better investigate compositional generalization with more linguistic phenomena and compositional diversity, we propose the DIsh NamE Recognition (DiNeR) task and create a large realistic Chinese dataset. Given a recipe instruction, models are required to recognize the dish name composed of diverse combinations of food, actions, and flavors. Our dataset consists of 3,811 dishes and 228,114 recipes, and involves plenty of linguistic phenomena such as anaphora, omission and ambiguity. We provide two strong baselines based on T5 and large language models (LLMs). This work contributes a challenging task, baseline methods to tackle the task, and insights into compositional generalization in the context of dish name recognition. Code and data are available at https://github.com/Jumpy-pku/DiNeR.
DiNeR:用于评估合成泛化的大型真实数据集
现有的合成泛化数据集大多是合成生成的,因此缺乏自然语言变化。虽然最近有人尝试引入非合成数据集来进行构词概括,但这些数据集要么数据规模有限,要么组合形式缺乏多样性。为了更好地研究具有更多语言现象和组合多样性的组合泛化,我们提出了 "DIsh NamE Recognition"(DiNeR)任务,并创建了一个大型真实中文数据集。在给定菜谱指令的情况下,模型需要识别由食物、动作和味道的不同组合构成的菜名。我们的数据集包括 3,811 道菜和 228,114 份食谱,涉及大量语言现象,如拟人、省略和歧义。我们提供了两个基于 T5 和大型语言模型 (LLM) 的强大基线。这项工作提供了一项具有挑战性的任务、解决该任务的基线方法,以及在菜名识别背景下对组合泛化的见解。代码和数据见 https://github.com/Jumpy-pku/DiNeR。
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