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> 上述数据集为ABSA(Aspect-Based Sentiment Analysis)领域数据集,基本形式为从句子中抽取:方面术语、方面类别(术语类别)、术语在上下文中情感极性以及针对该术语的观点词,不同数据集抽取不同的信息,这点在jsonl文件的“instruction”键中有分别提到,在此我将其改造为了生成任务,需要模型按照一定格式生成抽取结果。 |
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#### 以acos数据集中抽取的jsonl文件一条数据举例: |
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``` |
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{ |
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"task_type": "generation", |
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"dataset": "acos", |
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"input": ["the computer has difficulty switching between tablet and computer ."], |
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"output": "[['computer', 'laptop usability', 'negative', 'difficulty']]", |
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"situation": "none", |
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"label": "", |
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"extra": "", |
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"instruction": " |
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Task: Extracting aspect terms and their corresponding aspect categories, sentiment polarities, and opinion words. |
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Input: A sentence |
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Output: A list of 4-tuples, where each tuple contains the extracted aspect term, its aspect category, sentiment polarity, and opinion words (if any). Supplement: \"Null\" means that there is no occurrence in the sentence. |
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Example: |
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Sentence: \"Also it's not a true SSD drive in there but eMMC, which makes a difference.\" |
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Output: [['SSD drive', 'hard_disc operation_performance', 'negative', 'NULL']]' |
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" |
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} |
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``` |
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> 此处未设置label和extra,在instruction中以如上所示的字符串模板,并给出一个例子进行one-shot,ABSA领域数据集(absa-quad,acos,arts,aste-data-v2,mams,semeval-2014,semeval-2015,semeval-2016,towe)每个数据集对应instruction模板相同,内容有细微不同,且部分数据集存在同一数据集不同数据instruction内容不同的情况。 |
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#### 原始数据集 |
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- 数据[链接](https://github.com/zhijing-jin/ARTS_TestSet) |
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- Paper: [Tasty Burgers, Soggy Fries: Probing Aspect Robustness in Aspect-Based Sentiment Analysis](https://arxiv.org/pdf/2009.07964.pdf) |
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- 说明:原始数据集由laptop和restaurant两个领域的的json数据组成,本次改造我将两个数据集的数据合并并区分为train、validation与test,该数据的提出目的是测试模型鲁棒性,因此在引用该数据集的文章中多是通过在一个领域的数据上训练,在该数据集的另一个领域上测试。 |
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#### 当前SOTA |
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*数据来自[论文](https://arxiv.org/abs/2303.02846)* |
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- 评价指标:macro-averaged F1 |
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- SOTA模型:CVIB |
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- 其他领域数据训练后在restaurant数据集上macro-averaged F1:**70.29** |
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- restaurant数据集上训练并测评的macro-averaged F1:**82.03** |
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- 其他领域训练后在laptop上测评的macro-averaged F1:**69.39** |
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- laptop数据集上训练并测评的macro-averaged F1:**77.53** ) |
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- Paper:[Reducing Spurious Correlations for Aspect-Based Sentiment Analysis with Variational Information Bottleneck and Contrastive Learning](https://arxiv.org/pdf/2303.02846.pdf) |
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- 说明:该论文来自[Google Scholar](https://scholar.google.com/scholar?as_ylo=2023&q=ABSA+ARTS&hl=zh-CN&as_sdt=0,5)检索到的引用ARTS原论文的论文之一,我比较了2023年的一些论文工作后筛选了一个最优指标以及模型。 |
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