Task-oriented dialogue (TOD) systems have been applied in a range of domains to support human users to achieve specific goals. Systems are typically constructed for a single domain or language and do not generalise well beyond this. Their extension to other languages in particular is restricted by the lack of available training data for many of the world's languages. To support work on Natural Language Understanding (NLU) in TOD across multiple languages and domains simultaneously, we constructed MULTI3NLU++, a multilingual, multi-intent, multi-domain dataset. MULTI3NLU++ extends the English-only NLU++ dataset to include manual translations into a range of high, medium and low resource languages (Spanish, Marathi, Turkish and Amharic), in two domains (banking and hotels). MULTI3NLU++ inherits the multi-intent property of NLU++, where an utterance may be labelled with multiple intents, providing a more realistic representation of a user's goals and aligning with the more complex tasks that commercial systems aim to model. We use MULTI3NLU++ to benchmark state-of-the-art multilingual language models as well as Machine Translation and Question Answering systems for the NLU task of intent detection for TOD systems in the multilingual setting. The results demonstrate the challenging nature of the dataset, particularly in the low-resource language setting.
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Much recent progress in applications of machine learning models to NLP has been driven by benchmarks that evaluate models across a wide variety of tasks. However, these broad-coverage benchmarks have been mostly limited to English, and despite an increasing interest in multilingual models, a benchmark that enables the comprehensive evaluation of such methods on a diverse range of languages and tasks is still missing. To this end, we introduce the Cross-lingual TRansfer Evaluation of Multilingual Encoders (XTREME) benchmark, a multi-task benchmark for evaluating the cross-lingual generalization capabilities of multilingual representations across 40 languages and 9 tasks. We demonstrate that while models tested on English reach human performance on many tasks, there is still a sizable gap in the performance of cross-lingually transferred models, particularly on syntactic and sentence retrieval tasks. There is also a wide spread of results across languages. We release the benchmark 1 to encourage research on cross-lingual learning methods that transfer linguistic knowledge across a diverse and representative set of languages and tasks.
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我们介绍了用于插槽,意图分类和虚拟助手评估的大规模数据集 - 数字亚马逊SLU资源包(SLURP)。大规模包含1M现实,平行,标记为虚拟助手的话语,涵盖51种语言,18个域,60个意图和55个插槽。通过任务专业翻译人员将仅英文slurp数据集定位为29属的50种类型多样性的语言来创建大规模。我们还介绍了XLM-R和MT5上的建模结果,包括精确的匹配精度,意图分类精度和插槽填充F1分数。我们已经公开发布了数据集,建模代码和模型。
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In this work, we introduce IndicXTREME, a benchmark consisting of nine diverse tasks covering 18 languages from the Indic sub-continent belonging to four different families. Across languages and tasks, IndicXTREME contains a total of 103 evaluation sets, of which 51 are new contributions to the literature. To maintain high quality, we only use human annotators to curate or translate\footnote{for IndicXParaphrase, where an automatic translation system is used, a second human verification and correction step is done.} our datasets. To the best of our knowledge, this is the first effort toward creating a standard benchmark for Indic languages that aims to test the zero-shot capabilities of pretrained language models. We also release IndicCorp v2, an updated and much larger version of IndicCorp that contains 20.9 billion tokens in 24 languages. We pretrain IndicBERT v2 on IndicCorp v2 and evaluate it on IndicXTREME to show that it outperforms existing multilingual language models such as XLM-R and MuRIL.
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Token free approaches have been successfully applied to a series of word and span level tasks. In this work, we compare a byte-level (ByT5) and a wordpiece based (mT5) sequence to sequence model on the 51 languages of the MASSIVE multilingual semantic parsing dataset. We examine multiple experimental settings: (i) zero-shot, (ii) full gold data and (iii) zero-shot with synthetic data. By leveraging a state-of-the-art label projection method for machine translated examples, we are able to reduce the gap in exact match accuracy to only 5 points with respect to a model trained on gold data from all the languages. We additionally provide insights on the cross-lingual transfer of ByT5 and show how the model compares with respect to mT5 across all parameter sizes.
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通常观察到的最先进的自然语言技术问题,例如亚马逊alexa和苹果公司,是他们的服务不会因语言障碍而扩展到大多数发展中国家的公民。这种种群因其语言缺乏可用资源来构建NLP产品。本文介绍了allwoz,一个多语言多域面向任务的客户服务对话框数据集覆盖八种语言:英语,普通话,韩语,越南语,印地语,法国,葡萄牙语和泰国。此外,我们通过使用mt5与元学习来创建多语言数据集的基准。
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可靠的评估基准是为了可复制性和全面性而设计的,在机器学习方面取得了进步。但是,由于缺乏多语言基准,视觉和语言研究主要集中在英语任务上。为了填补这一空白,我们介绍了图像的语言理解评估基准。 Iglue通过汇总已有的数据集并创建新的数据来汇集 - 视觉问题回答,跨模式检索,扎根的推理以及跨20种不同语言的扎根成本。我们的基准测试能够评估多语言多模型用于转移学习的模型,不仅在零弹位设置中,而且还以新定义的少数图学习设置。根据对可用最新模型的评估,我们发现翻译测试转移优于零弹性转移,并且对于许多任务而言,很难利用射击的学习。此外,下游性能部分用可用的未标记文本数据进行预处理来解释,并且仅通过目标源语言的类型学距离而微弱。我们希望通过向社区释放基准来鼓励该领域的未来研究工作。
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我们提出语言学家,这是一种通过微调Alexatm 5B生成带注释数据的方法,用于生成意图分类和插槽标记(IC+ST),这是一种5亿参数的多语言序列到序列(SEQ2SEQ)模型,在灵活的指令上迅速的。在SNIP数据集的10次新颖意图设置中,语言学家超过了最新的方法(反向翻译和示例外推),可以通过宽阔的边距,显示出IC回忆中+1.9点的目标意图的绝对改善ST F1分数和+2.5分。在MATIS ++数据集的零击跨语言设置中,语言学家表现出强大的机器翻译基线,插槽对齐的基线是+4.14的+4.14点在6个语言上绝对在ST F1分数上,同时在IC上匹配IC的性能。最后,我们在用于对话代理IC+ST的内部大规模多语言数据集上验证了我们的结果,并显示了使用背面翻译,释义和插槽目录重新采样采样的基线的显着改进。据我们所知,我们是第一个展示大规模SEQ2SEQ模型的指导微调的人,以控制多语言意图和插槽标记的数据生成的输出。
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Translating training data into many languages has emerged as a practical solution for improving cross-lingual transfer. For tasks that involve span-level annotations, such as information extraction or question answering, an additional label projection step is required to map annotated spans onto the translated texts. Recently, a few efforts have utilized a simple mark-then-translate method to jointly perform translation and projection by inserting special markers around the labeled spans in the original sentence. However, as far as we are aware, no empirical analysis has been conducted on how this approach compares to traditional annotation projection based on word alignment. In this paper, we present an extensive empirical study across 42 languages and three tasks (QA, NER, and Event Extraction) to evaluate the effectiveness and limitations of both methods, filling an important gap in the literature. Experimental results show that our optimized version of mark-then-translate, which we call EasyProject, is easily applied to many languages and works surprisingly well, outperforming the more complex word alignment-based methods. We analyze several key factors that affect end-task performance, and show EasyProject works well because it can accurately preserve label span boundaries after translation. We will publicly release all our code and data.
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一种有效的横向传输方法是在一种语言中微调在监督数据集上的双语或多语言模型,并以零拍方式在另一种语言上进行评估。在培训时间或推理时间翻译例子也是可行的替代方案。然而,存在与文献中很少有关的这些方法相关的成本。在这项工作中,我们在其有效性(例如,准确性),开发和部署成本方面分析交叉语言方法,以及推理时间的延迟。我们的三个任务的实验表明最好的交叉方法是高度任务依赖性的。最后,通过结合零射和翻译方法,我们在这项工作中使用的三个数据集中实现了最先进的。基于这些结果,我们对目标语言手动标记的培训数据有所了解。代码和翻译的数据集可在https://github.com/unicamp-dl/cross-lingsual-analysis上获得
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有监督的基于深度学习的方法已应用于以任务为导向的对话框,并在有足够数量的培训示例可用时对有限的域和语言应用有效。在实践中,这些方法遭受了域驱动设计和资源不足的语言的缺点。域和语言模型应该随着问题空间的发展而增长和变化。一方面,对转移学习的研究证明了基于多语言变压器模型学习语义丰富的表示的跨语性能力。另一方面,除了上述方法之外,元学习还能够开发任务和语言学习算法,能够实现泛滥。在这种情况下,本文提出了使用典型的神经网络和基于多语言变压器的模型来研究使用协同进行几次学习的跨语性可传递性。自然语言的实验理解多亚提斯++语料库的任务表明,我们的方法基本上改善了低资源和高资源语言之间观察到的转移学习表现。更普遍地说,我们的方法证实,可以将具有特定语言的有意义的潜在空间推广到使用元学习的情况下看不见和资源不足的潜在空间。
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Open-Domain Generative Question Answering has achieved impressive performance in English by combining document-level retrieval with answer generation. These approaches, which we refer to as GenQA, can generate complete sentences, effectively answering both factoid and non-factoid questions. In this paper, we extend GenQA to the multilingual and cross-lingual settings. For this purpose, we first introduce GenTyDiQA, an extension of the TyDiQA dataset with well-formed and complete answers for Arabic, Bengali, English, Japanese, and Russian. Based on GenTyDiQA, we design a cross-lingual generative model that produces full-sentence answers by exploiting passages written in multiple languages, including languages different from the question. Our cross-lingual generative system outperforms answer sentence selection baselines for all 5 languages and monolingual generative pipelines for three out of five languages studied.
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发展任务导向的对话助理的实用需求需要了解许多语言。多语言自然语言理解(NLU)的新型基准包括多种语言中的单声道句,用意图和插槽注释。在这种设置模型中,用于交叉传输在联合意图识别和槽填充方面表现出显着性能。然而,现有的基准缺乏代码切换话语,这难以收集和标签由于语法结构的复杂性。对于NLU模型的评估似乎偏见和有限,因为代码切换被遗漏了范围。我们的工作采用认可的方法来生成合理的和自然探测的代码切换话语,并使用它们来创建合成代码交换测试集。基于实验,我们报告说,最先进的NLU模型无法处理代码切换。在最糟糕的是,性能,通过语义精度评估,从横跨80 \%的8 \%的低至15 \%。此外,我们展示了,对合成码混合数据进行预训练有助于在具有单晶体数据的可比水平上保持所提出的测试中的性能。最后,我们分析了不同的语言对并表明语言越近,NLU模型越好地处理了交替。这符合对多语种模型在语言之间进行转移的共同理解
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与辅助语言的元学习已经表明了对交叉语言自然语言处理的有希望的改进。然而,以前的研究采样使用相同语言的元培训和元测试数据,这限制了模型交叉传输的能力。在本文中,我们提出了XLA-MAML,在元学习阶段执行直接交叉调整。我们对自然语言推理和问题进行零射击和几次拍摄实验。实验结果表明了我们在不同语言,任务和预磨料模型中的方法的有效性。我们还对元学习的各种交叉特定设置进行了分析,包括采样策略和并行性。
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As machine translation (MT) metrics improve their correlation with human judgement every year, it is crucial to understand the limitations of such metrics at the segment level. Specifically, it is important to investigate metric behaviour when facing accuracy errors in MT because these can have dangerous consequences in certain contexts (e.g., legal, medical). We curate ACES, a translation accuracy challenge set, consisting of 68 phenomena ranging from simple perturbations at the word/character level to more complex errors based on discourse and real-world knowledge. We use ACES to evaluate a wide range of MT metrics including the submissions to the WMT 2022 metrics shared task and perform several analyses leading to general recommendations for metric developers. We recommend: a) combining metrics with different strengths, b) developing metrics that give more weight to the source and less to surface-level overlap with the reference and c) explicitly modelling additional language-specific information beyond what is available via multilingual embeddings.
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Automatic machine translation (MT) metrics are widely used to distinguish the translation qualities of machine translation systems across relatively large test sets (system-level evaluation). However, it is unclear if automatic metrics are reliable at distinguishing good translations from bad translations at the sentence level (segment-level evaluation). In this paper, we investigate how useful MT metrics are at detecting the success of a machine translation component when placed in a larger platform with a downstream task. We evaluate the segment-level performance of the most widely used MT metrics (chrF, COMET, BERTScore, etc.) on three downstream cross-lingual tasks (dialogue state tracking, question answering, and semantic parsing). For each task, we only have access to a monolingual task-specific model. We calculate the correlation between the metric's ability to predict a good/bad translation with the success/failure on the final task for the Translate-Test setup. Our experiments demonstrate that all metrics exhibit negligible correlation with the extrinsic evaluation of the downstream outcomes. We also find that the scores provided by neural metrics are not interpretable mostly because of undefined ranges. Our analysis suggests that future MT metrics be designed to produce error labels rather than scores to facilitate extrinsic evaluation.
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State-of-the-art natural language processing systems rely on supervision in the form of annotated data to learn competent models. These models are generally trained on data in a single language (usually English), and cannot be directly used beyond that language. Since collecting data in every language is not realistic, there has been a growing interest in crosslingual language understanding (XLU) and low-resource cross-language transfer. In this work, we construct an evaluation set for XLU by extending the development and test sets of the Multi-Genre Natural Language Inference Corpus (MultiNLI) to 15 languages, including low-resource languages such as Swahili and Urdu. We hope that our dataset, dubbed XNLI, will catalyze research in cross-lingual sentence understanding by providing an informative standard evaluation task. In addition, we provide several baselines for multilingual sentence understanding, including two based on machine translation systems, and two that use parallel data to train aligned multilingual bag-of-words and LSTM encoders. We find that XNLI represents a practical and challenging evaluation suite, and that directly translating the test data yields the best performance among available baselines.
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JamPatoisNLI provides the first dataset for natural language inference in a creole language, Jamaican Patois. Many of the most-spoken low-resource languages are creoles. These languages commonly have a lexicon derived from a major world language and a distinctive grammar reflecting the languages of the original speakers and the process of language birth by creolization. This gives them a distinctive place in exploring the effectiveness of transfer from large monolingual or multilingual pretrained models. While our work, along with previous work, shows that transfer from these models to low-resource languages that are unrelated to languages in their training set is not very effective, we would expect stronger results from transfer to creoles. Indeed, our experiments show considerably better results from few-shot learning of JamPatoisNLI than for such unrelated languages, and help us begin to understand how the unique relationship between creoles and their high-resource base languages affect cross-lingual transfer. JamPatoisNLI, which consists of naturally-occurring premises and expert-written hypotheses, is a step towards steering research into a traditionally underserved language and a useful benchmark for understanding cross-lingual NLP.
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多语言语言模型(\ mllms),如mbert,xlm,xlm-r,\ textit {etc。}已成为一种可行的选择,使预先估计到大量语言的力量。鉴于他们的成功在零射击转移学习中,在(i)建立更大的\ mllms〜覆盖了大量语言(ii)创建覆盖更广泛的任务和语言来评估的详尽工作基准mllms〜(iii)分析单音零点,零拍摄交叉和双语任务(iv)对Monolingual的性能,了解\ mllms〜(v)增强(通常)学习的通用语言模式(如果有的话)有限的容量\ mllms〜以提高他们在已见甚至看不见语言的表现。在这项调查中,我们审查了现有的文学,涵盖了上述与\ MLLMS有关的广泛研究领域。根据我们的调查,我们建议您有一些未来的研究方向。
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GPT-3等大型自回归语言模型是几秒钟的学习者,可以在没有微调的情况下执行各种语言任务。虽然已知这些模型能够共同代表许多不同的语言,但他们的培训数据由英语主导,可能限制了它们的交叉概括。在这项工作中,我们在覆盖多种语言的平衡语料库上培训多语言自回归语言模型,并在广泛的任务中研究他们几乎没有零点的学习能力。我们最大的模型,具有75亿参数,在20多种代表语言中,在几种代表语言中,在几种代表性语言中,在几种代表性语言中,在多语言型号推理中表现出可比大小的GPT-3(在0次设置和0次拍摄设置中的绝对精度改善+ 7.4% 4-拍摄设置中的9.4%)和自然语言推理(每次拍摄和4次设置中的每一个+ 5.4%)。在Flores-101机器翻译基准测试中,我们的模型优于GPT-3在182个翻译方向上有32个培训例子,同时超过45个方向的官方监督基线。我们介绍了模型成功和失败的位置的详细分析,特别是它尤其显示在某些任务中实现交叉语境的内容学习,而仍然存在改善表面的鲁棒性和适应没有a的任务的余地自然冻结形式。最后,我们评估我们在仇恨语音检测中以五种语言的仇恨语音检测的模型,并发现它具有与可比大小的GPT-3模型类似的限制。
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