Large pre-trained language models have recently enabled open-ended generation frameworks (e.g., prompt-to-text NLG) to tackle a variety of tasks going beyond the traditional data-to-text generation. While this framework is more general, it is under-specified and often leads to a lack of controllability restricting their real-world usage. We propose a new grounded keys-to-text generation task: the task is to generate a factual description about an entity given a set of guiding keys, and grounding passages. To address this task, we introduce a new dataset, called EntDeGen. Inspired by recent QA-based evaluation measures, we propose an automatic metric, MAFE, for factual correctness of generated descriptions. Our EntDescriptor model is equipped with strong rankers to fetch helpful passages and generate entity descriptions. Experimental result shows a good correlation (60.14) between our proposed metric and human judgments of factuality. Our rankers significantly improved the factual correctness of generated descriptions (15.95% and 34.51% relative gains in recall and precision). Finally, our ablation study highlights the benefit of combining keys and groundings.
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Natural Language Generation (NLG) has improved exponentially in recent years thanks to the development of sequence-to-sequence deep learning technologies such as Transformer-based language models. This advancement has led to more fluent and coherent NLG, leading to improved development in downstream tasks such as abstractive summarization, dialogue generation and data-to-text generation. However, it is also apparent that deep learning based generation is prone to hallucinate unintended text, which degrades the system performance and fails to meet user expectations in many real-world scenarios. To address this issue, many studies have been presented in measuring and mitigating hallucinated texts, but these have never been reviewed in a comprehensive manner before. In this survey, we thus provide a broad overview of the research progress and challenges in the hallucination problem in NLG. The survey is organized into two parts: (1) a general overview of metrics, mitigation methods, and future directions; and (2) an overview of task-specific research progress on hallucinations in the following downstream tasks, namely abstractive summarization, dialogue generation, generative question answering, data-to-text generation, machine translation, and visual-language generation. This survey serves to facilitate collaborative efforts among researchers in tackling the challenge of hallucinated texts in NLG.
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Entities, as important carriers of real-world knowledge, play a key role in many NLP tasks. We focus on incorporating entity knowledge into an encoder-decoder framework for informative text generation. Existing approaches tried to index, retrieve, and read external documents as evidence, but they suffered from a large computational overhead. In this work, we propose an encoder-decoder framework with an entity memory, namely EDMem. The entity knowledge is stored in the memory as latent representations, and the memory is pre-trained on Wikipedia along with encoder-decoder parameters. To precisely generate entity names, we design three decoding methods to constrain entity generation by linking entities in the memory. EDMem is a unified framework that can be used on various entity-intensive question answering and generation tasks. Extensive experimental results show that EDMem outperforms both memory-based auto-encoder models and non-memory encoder-decoder models.
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以查询为中心的摘要(QFS)旨在产生应答感兴趣的特定问题的摘要,从而实现更大的用户控制和个性化。虽然最近发布的数据集如QMSUM或Aquamuse,促进QFS中的研究工作,但该领域缺乏对适用建模方法的广泛空间的全面研究。在本文中,考虑到两种普遍的方法,我们对QFS进行了系统探索,探讨了QFS:两阶段的采掘解决方案和端到端模型。在这些类别中,我们调查现有方法,并呈现了在QMSUM数据集上实现最先进的性能的两个模型扩展,其边缘高达3.38 Rouge-1,3.72 Rouge-2和3.28 Rouge-L。通过定量实验,我们突出了不同模型配置之间的权衡,并探讨了摘要任务之间的转移能力。代码和检查点公开可用:https://github.com/salesforce/query-focused-sum。
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传达相关和忠实信息的能力对于有条件生成的许多任务至关重要,但对于神经SEQ-seq seq模型仍然难以捉摸,这些模型的输出通常显示出幻觉,并且无法正确涵盖重要细节。在这项工作中,我们主张规划作为有用的中间表示,以使有条件的一代减少不透明和扎根。我们的作品提出了将文本计划作为一系列提问(QA)对的新概念化。我们用QA蓝图作为内容选择(即〜说什么)和计划(即〜按什么顺序)来增强现有数据集(例如,用于摘要)。我们通过利用最先进的问题生成技术并将输入输出对自动获取蓝图,并将其转换为输入 - 蓝图输出输出元组。我们开发了基于变压器的模型,每个模型都在它们如何将蓝图合并到生成的输出中(例如,作为全局计划或迭代)。跨指标和数据集的评估表明,蓝图模型比不采取计划并允许对生成输出进行更严格控制的替代方案更为事实。
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Large pre-trained language models have been shown to store factual knowledge in their parameters, and achieve state-of-the-art results when fine-tuned on downstream NLP tasks. However, their ability to access and precisely manipulate knowledge is still limited, and hence on knowledge-intensive tasks, their performance lags behind task-specific architectures. Additionally, providing provenance for their decisions and updating their world knowledge remain open research problems. Pre-trained models with a differentiable access mechanism to explicit nonparametric memory can overcome this issue, but have so far been only investigated for extractive downstream tasks. We explore a general-purpose fine-tuning recipe for retrieval-augmented generation (RAG) -models which combine pre-trained parametric and non-parametric memory for language generation. We introduce RAG models where the parametric memory is a pre-trained seq2seq model and the non-parametric memory is a dense vector index of Wikipedia, accessed with a pre-trained neural retriever. We compare two RAG formulations, one which conditions on the same retrieved passages across the whole generated sequence, and another which can use different passages per token. We fine-tune and evaluate our models on a wide range of knowledge-intensive NLP tasks and set the state of the art on three open domain QA tasks, outperforming parametric seq2seq models and task-specific retrieve-and-extract architectures. For language generation tasks, we find that RAG models generate more specific, diverse and factual language than a state-of-the-art parametric-only seq2seq baseline.
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查询聚焦的文本摘要(QFTS)任务旨在构建基于给定查询的文本文档摘要的构建系统。解决此任务的关键挑战是缺乏培训摘要模型的大量标记数据。在本文中,我们通过探索一系列域适应技术来解决这一挑战。鉴于最近在广泛的自然语言处理任务中进行预先接受的变压器模型的成功,我们利用此类模型为单文档和多文件方案的QFTS任务产生抽象摘要。对于域适应,我们使用预先训练的变压器的摘要模型应用了各种技术,包括转移学习,弱监督学习和远程监督。六个数据集的广泛实验表明,我们所提出的方法非常有效地为QFTS任务产生抽象摘要,同时在一组自动和人类评估指标上设置新的最先进的结果。
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Powerful generative models have led to recent progress in question generation (QG). However, it is difficult to measure advances in QG research since there are no standardized resources that allow a uniform comparison among approaches. In this paper, we introduce QG-Bench, a multilingual and multidomain benchmark for QG that unifies existing question answering datasets by converting them to a standard QG setting. It includes general-purpose datasets such as SQuAD for English, datasets from ten domains and two styles, as well as datasets in eight different languages. Using QG-Bench as a reference, we perform an extensive analysis of the capabilities of language models for the task. First, we propose robust QG baselines based on fine-tuning generative language models. Then, we complement automatic evaluation based on standard metrics with an extensive manual evaluation, which in turn sheds light on the difficulty of evaluating QG models. Finally, we analyse both the domain adaptability of these models as well as the effectiveness of multilingual models in languages other than English. QG-Bench is released along with the fine-tuned models presented in the paper https://github.com/asahi417/lm-question-generation, which are also available as a demo https://autoqg.net/.
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寻求健康信息的寻求使网络与消费者的健康相关问题淹没了。通常,消费者使用过度描述性和外围信息来表达其医疗状况或其他医疗保健需求,从而有助于自然语言理解的挑战。解决这一挑战的一种方法是总结问题并提取原始问题的关键信息。为了解决此问题,我们介绍了一个新的数据集CHQ-SUMM,其中包含1507个域 - 专家注释的消费者健康问题和相应的摘要。该数据集源自社区提问论坛,因此为了解社交媒体上与消费者健康相关的帖子提供了宝贵的资源。我们在多个最先进的摘要模型上基准测试数据集,以显示数据集的有效性。
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长表质疑应答(LFQA)任务要求将相关的文件检索到查询,使用它们形成段落长度答案。尽管LFQA建模相当大,但基本问题妨碍了其进度:i)火车/验证/测试数据集重叠,ii)缺少自动度量标准和III)在检索的文档中产生的答案不会“接地”。这项工作解决了这些关键瓶颈的每一个,有助于自然语言推理/生成(NLI / NLG)方法和指标,使其减轻重大进展。
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Existing metrics for evaluating the quality of automatically generated questions such as BLEU, ROUGE, BERTScore, and BLEURT compare the reference and predicted questions, providing a high score when there is a considerable lexical overlap or semantic similarity between the candidate and the reference questions. This approach has two major shortcomings. First, we need expensive human-provided reference questions. Second, it penalises valid questions that may not have high lexical or semantic similarity to the reference questions. In this paper, we propose a new metric, RQUGE, based on the answerability of the candidate question given the context. The metric consists of a question-answering and a span scorer module, in which we use pre-trained models from the existing literature, and therefore, our metric can be used without further training. We show that RQUGE has a higher correlation with human judgment without relying on the reference question. RQUGE is shown to be significantly more robust to several adversarial corruptions. Additionally, we illustrate that we can significantly improve the performance of QA models on out-of-domain datasets by fine-tuning on the synthetic data generated by a question generation model and re-ranked by RQUGE.
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诸如学术文章和商业报告之类的长期文件一直是详细说明重要问题和需要额外关注的复杂主题的标准格式。自动汇总系统可以有效地将长文档置于简短而简洁的文本中,以封装最重要的信息,从而在帮助读者的理解中很重要。最近,随着神经体系结构的出现,已经做出了重大的研究工作,以推动自动文本摘要系统,以及有关将这些系统扩展到长期文档领域的挑战的大量研究。在这项调查中,我们提供了有关长期文档摘要的研究的全面概述,以及其研究环境的三个主要组成部分的系统评估:基准数据集,汇总模型和评估指标。对于每个组成部分,我们在长期汇总的背景下组织文献,并进行经验分析,以扩大有关当前研究进度的观点。实证分析包括一项研究基准数据集的内在特征,摘要模型的多维分析以及摘要评估指标的综述。根据总体发现,我们通过提出可能在这个快速增长的领域中提出未来探索的方向来得出结论。
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知识密集型语言任务(苏格兰信)通常需要大量信息来提供正确的答案。解决此问题的一种流行范式是将搜索系统与机器读取器相结合,前者检索支持证据,后者检查它们以产生答案。最近,读者组成部分在大规模预培养的生成模型的帮助下见证了重大进展。同时,搜索组件中的大多数现有解决方案都依赖于传统的``索引 - retrieve-then-Rank''管道,该管道遭受了巨大的内存足迹和端到端优化的困难。受到最新构建基于模型的IR模型的努力的启发,我们建议用新颖的单步生成模型替换传统的多步搜索管道,该模型可以极大地简化搜索过程并以端到端的方式进行优化。我们表明,可以通过一组经过适当设计的预训练任务来学习强大的生成检索模型,并被采用以通过进一步的微调来改善各种下游苏格兰短裙任务。我们将预训练的生成检索模型命名为Copusbrain,因为有关该语料库的所有信息均以其参数进行编码,而无需构造其他索引。经验结果表明,在苏格兰语基准上的检索任务并建立了新的最新性能,Copusbrain可以极大地超过强大的基准。我们还表明,在零农源和低资源设置下,科体班运行良好。
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大型语言模型可以产生流畅的对话,但往往是幻觉的事实不准确。虽然检索式增强的模型有助于缓解这个问题,但他们仍然面临着推理的艰难挑战,以便同时提供正确的知识和产生对话。在这项工作中,我们提出了一种模块化模型,知识响应(K2R),将知识纳入会话代理商,这将这个问题分解为两个更简单的步骤。 K2R首先生成一个知识序列,给定对话背景作为中间步骤。在此“推理步骤”之后,该模型随后参加自己生成的知识序列,以及对话背景,以产生最终的响应。在详细的实验中,我们发现这种模型在知识接地的对话任务中少幻觉,并且在可解释性和模块化方面具有优势。特别地,它可以用来将QA和对话系统一起融合在一起,以使对话代理能够提供知识渊博的答案,或者QA模型,以在零拍摄设置中给出对话响应。
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自动问题应答(QA)系统的目的是以时间有效的方式向用户查询提供答案。通常在数据库(或知识库)或通常被称为语料库的文件集合中找到答案。在过去的几十年里,收购知识的扩散,因此生物医学领域的新科学文章一直是指数增长。因此,即使对于领域专家,也难以跟踪域中的所有信息。随着商业搜索引擎的改进,用户可以在某些情况下键入其查询并获得最相关的一小组文档,以及在某些情况下从文档中的相关片段。但是,手动查找所需信息或答案可能仍然令人疑惑和耗时。这需要开发高效的QA系统,该系统旨在为用户提供精确和精确的答案提供了生物医学领域的自然语言问题。在本文中,我们介绍了用于开发普通域QA系统的基本方法,然后彻底调查生物医学QA系统的不同方面,包括使用结构化数据库和文本集合的基准数据集和几种提出的方​​法。我们还探讨了当前系统的局限性,并探索潜在的途径以获得进一步的进步。
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最近的大规模预训练的进步,例如GPT-3允许从给定提示生成看似高质量的文本。然而,这种一代系统经常遭受幻觉的事实问题,并且本身并不是旨在包含有用的外部信息。接地的代表似乎提供了补救措施,但他们的培训通常依赖于提供信息相关文件的很少可用的并行数据。我们提出了一个框架,通过在语言模型信号上共同训练接地的发生器和文档检索来缓解这种数据约束。该模型学会奖励具有生成中最高效用的文档的检索,并用专家混合(MOE)合并来术语术,以产生后续文本。我们证明,发电机和猎犬都可以利用这种联合培训,协同作用,以生产散文和对话一代中的更多信息和相关文本。
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检索增强的代表在许多知识密集型的NLP任务中表现出最先进的表现,例如打开问题应答和事实验证。考虑到检索到的段落,这些模型训练以产生最终输出,这可能与原始查询无关,导致学习虚假线索或回答记忆。这项工作介绍了一种融入通道的证据性的方法 - 是否段落包含正确的证据来支持输出 - 培训发电机。我们介绍了一个多任务学习框架,共同生成最终输出并预测每个段落的证据性,利用新的任务不可行方法来获得{\ IT Silver}分证分性标签进行监督。我们在三个知识密集型任务中的五个数据集的实验表明,我们的新的证据引导发电机具有相同尺寸模型的直接对应的直接对应,并使Faviq-Ambig的最先进。我们将这些改进归因于辅助多任务学习和银证处分性挖掘技术。
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Dialogue systems can leverage large pre-trained language models and knowledge to generate fluent and informative responses. However, these models are still prone to produce hallucinated responses not supported by the input source, which greatly hinders their application. The heterogeneity between external knowledge and dialogue context challenges representation learning and source integration, and further contributes to unfaithfulness. To handle this challenge and generate more faithful responses, this paper presents RHO ($\rho$) utilizing the representations of linked entities and relation predicates from a knowledge graph (KG). We propose (1) local knowledge grounding to combine textual embeddings with the corresponding KG embeddings; and (2) global knowledge grounding to equip RHO with multi-hop reasoning abilities via the attention mechanism. In addition, we devise a response re-ranking technique based on walks over KG sub-graphs for better conversational reasoning. Experimental results on OpenDialKG show that our approach significantly outperforms state-of-the-art methods on both automatic and human evaluation by a large margin, especially in hallucination reduction (17.54% in FeQA).
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Open-domain question answering relies on efficient passage retrieval to select candidate contexts, where traditional sparse vector space models, such as TF-IDF or BM25, are the de facto method. In this work, we show that retrieval can be practically implemented using dense representations alone, where embeddings are learned from a small number of questions and passages by a simple dualencoder framework. When evaluated on a wide range of open-domain QA datasets, our dense retriever outperforms a strong Lucene-BM25 system greatly by 9%-19% absolute in terms of top-20 passage retrieval accuracy, and helps our end-to-end QA system establish new state-of-the-art on multiple open-domain QA benchmarks. 1 * Equal contribution 1 The code and trained models have been released at https://github.com/facebookresearch/DPR.
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使用来自表格(TableQA)的信息回答自然语言问题是最近的兴趣。在许多应用程序中,表未孤立,但嵌入到非结构化文本中。通常,通过将其部分与表格单元格内容或非结构化文本跨度匹配,并从任一源中提取答案来最佳地回答问题。这导致了HybridQA数据集引入的TextableQA问题的新空间。现有的表格表示对基于变换器的阅读理解(RC)架构的适应性未通过单个系统解决两个表示的不同模式。培训此类系统因对遥远监督的需求而进一步挑战。为了降低认知负担,培训实例通常包括问题和答案,后者匹配多个表行和文本段。这导致嘈杂的多实例培训制度不仅涉及表的行,而且涵盖了链接文本的跨度。我们通过提出Mitqa来回应这些挑战,这是一个新的TextableQA系统,明确地模拟了表行选择和文本跨度选择的不同但密切相关的概率空间。与最近的基线相比,我们的实验表明了我们的方法的优越性。该方法目前在HybridQA排行榜的顶部,并进行了一个试验集,在以前公布的结果上实现了对em和f1的21%的绝对改善。
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