Multilingual models are often particularly dependent on scaling to generalize to a growing number of languages. Compression techniques are widely relied upon to reconcile the growth in model size with real world resource constraints, but compression can have a disparate effect on model performance for low-resource languages. It is thus crucial to understand the trade-offs between scale, multilingualism, and compression. In this work, we propose an experimental framework to characterize the impact of sparsifying multilingual pre-trained language models during fine-tuning. Applying this framework to mBERT named entity recognition models across 40 languages, we find that compression confers several intriguing and previously unknown generalization properties. In contrast to prior findings, we find that compression may improve model robustness over dense models. We additionally observe that under certain sparsification regimes compression may aid, rather than disproportionately impact the performance of low-resource languages.
translated by 谷歌翻译
在本文中,我们分享了我们努力建立能够翻译一千多种语言的实用机器翻译(MT)系统的发现。我们在三个研究领域中描述了结果:(i)通过利用半监督预训练的语言识别和开发数据驱动的过滤技术来构建1500多种语言的清洁,网挖数据集; (ii)通过利用大规模的多语言模型来开发用于服务不足的语言的实用MT模型,该模型训练了有监督的并行数据,以使用100多种高资源语言和单语言数据集,以增加1000多种语言; (iii)研究这些语言的评估指标的局限性,并对我们MT模型的输出进行定性分析,突出显示了这些类型模型的几种频繁误差模式。我们希望我们的工作为旨在为当前研究的语言构建MT系统的从业者提供有用的见解,并突出显示可以补充Data-Sparse设置中大量多语言模型的弱点的研究方向。
translated by 谷歌翻译
语言模型预训练的最新进展利用大规模数据集创建多语言模型。但是,这些数据集中大多遗漏了低资源语言。这主要是因为网络上没有很好地表示口语,因此被排除在用于创建数据集的大规模爬网中。此外,这些模型的下游用户仅限于最初选择用于预训练的语言的选择。这项工作调查了如何最佳利用现有的预培训模型来为16种非洲语言创建低资源翻译系统。我们关注两个问题:1)如何将预训练的模型用于初始预培训中未包含的语言? 2)生成的翻译模型如何有效地转移到新域?为了回答这些问题,我们创建了一个新的非洲新闻语料库,涵盖16种语言,其中8种语言不属于任何现有评估数据集的一部分。我们证明,将两种语言转移到其他语言和其他领域的最有效策略是,以少量的高质量翻译数据微调大型预训练模型。
translated by 谷歌翻译
最近非自动增加(NAR)机器翻译最近取得了显着的改进,现在优于一些基准测试的自动增加(AR)模型,为AR推断提供有效的替代方案。然而,虽然AR转换通常使用多语言模型来实现,但是从语言之间的转移和改善的服务效率,多语言NAR模型仍然相对未开发。作为一个示例NAR模型和变压器作为半NAR模型,采用连接员时间分类(CTC),我们展示了多语种NAR的全面实证研究。我们在容量限制下对相关语言与负转移之间的积极转移来测试其能力。随着NAR模型需要蒸馏培训套,我们仔细研究双语与多语种教师的影响。最后,我们适合多语言NAR的缩放法,这使得其相对于AR模型的性能随着模型量表的增加而定量。
translated by 谷歌翻译
Many modern research fields increasingly rely on collecting and analysing massive, often unstructured, and unwieldy datasets. Consequently, there is growing interest in machine learning and artificial intelligence applications that can harness this `data deluge'. This broad nontechnical overview provides a gentle introduction to machine learning with a specific focus on medical and biological applications. We explain the common types of machine learning algorithms and typical tasks that can be solved, illustrating the basics with concrete examples from healthcare. Lastly, we provide an outlook on open challenges, limitations, and potential impacts of machine-learning-powered medicine.
translated by 谷歌翻译
The detection of anomalies in time series data is crucial in a wide range of applications, such as system monitoring, health care or cyber security. While the vast number of available methods makes selecting the right method for a certain application hard enough, different methods have different strengths, e.g. regarding the type of anomalies they are able to find. In this work, we compare six unsupervised anomaly detection methods with different complexities to answer the questions: Are the more complex methods usually performing better? And are there specific anomaly types that those method are tailored to? The comparison is done on the UCR anomaly archive, a recent benchmark dataset for anomaly detection. We compare the six methods by analyzing the experimental results on a dataset- and anomaly type level after tuning the necessary hyperparameter for each method. Additionally we examine the ability of individual methods to incorporate prior knowledge about the anomalies and analyse the differences of point-wise and sequence wise features. We show with broad experiments, that the classical machine learning methods show a superior performance compared to the deep learning methods across a wide range of anomaly types.
translated by 谷歌翻译
Dialogue models are able to generate coherent and fluent responses, but they can still be challenging to control and may produce non-engaging, unsafe results. This unpredictability diminishes user trust and can hinder the use of the models in the real world. To address this, we introduce DialGuide, a novel framework for controlling dialogue model behavior using natural language rules, or guidelines. These guidelines provide information about the context they are applicable to and what should be included in the response, allowing the models to generate responses that are more closely aligned with the developer's expectations and intent. We evaluate DialGuide on three tasks in open-domain dialogue response generation: guideline selection, response generation, and response entailment verification. Our dataset contains 10,737 positive and 15,467 negative dialogue context-response-guideline triplets across two domains - chit-chat and safety. We provide baseline models for the tasks and benchmark their performance. We also demonstrate that DialGuide is effective in the dialogue safety domain, producing safe and engaging responses that follow developer guidelines.
translated by 谷歌翻译
To train deep learning models, which often outperform traditional approaches, large datasets of a specified medium, e.g., images, are used in numerous areas. However, for light field-specific machine learning tasks, there is a lack of such available datasets. Therefore, we create our own light field datasets, which have great potential for a variety of applications due to the abundance of information in light fields compared to singular images. Using the Unity and C# frameworks, we develop a novel approach for generating large, scalable, and reproducible light field datasets based on customizable hardware configurations to accelerate light field deep learning research.
translated by 谷歌翻译
We consider a sequential decision making task where we are not allowed to evaluate parameters that violate an a priori unknown (safety) constraint. A common approach is to place a Gaussian process prior on the unknown constraint and allow evaluations only in regions that are safe with high probability. Most current methods rely on a discretization of the domain and cannot be directly extended to the continuous case. Moreover, the way in which they exploit regularity assumptions about the constraint introduces an additional critical hyperparameter. In this paper, we propose an information-theoretic safe exploration criterion that directly exploits the GP posterior to identify the most informative safe parameters to evaluate. Our approach is naturally applicable to continuous domains and does not require additional hyperparameters. We theoretically analyze the method and show that we do not violate the safety constraint with high probability and that we explore by learning about the constraint up to arbitrary precision. Empirical evaluations demonstrate improved data-efficiency and scalability.
translated by 谷歌翻译
Counterfactuals are often described as 'retrospective,' focusing on hypothetical alternatives to a realized past. This description relates to an often implicit assumption about the structure and stability of exogenous variables in the system being modeled -- an assumption that is reasonable in many settings where counterfactuals are used. In this work, we consider cases where we might reasonably make a different assumption about exogenous variables, namely, that the exogenous noise terms of each unit do exhibit some unit-specific structure and/or stability. This leads us to a different use of counterfactuals -- a 'forward-looking' rather than 'retrospective' counterfactual. We introduce "counterfactual treatment choice," a type of treatment choice problem that motivates using forward-looking counterfactuals. We then explore how mismatches between interventional versus forward-looking counterfactual approaches to treatment choice, consistent with different assumptions about exogenous noise, can lead to counterintuitive results.
translated by 谷歌翻译