Large pretrained Transformer-based language models like BERT and GPT have changed the landscape of Natural Language Processing (NLP). However, fine tuning such models still requires a large number of training examples for each target task, thus annotating multiple datasets and training these models on various downstream tasks becomes time consuming and expensive. In this work, we propose a simple extension of the Prototypical Networks for few-shot text classification. Our main idea is to replace the class prototypes by Gaussians and introduce a regularization term that encourages the examples to be clustered near the appropriate class centroids. Experimental results show that our method outperforms various strong baselines on 13 public and 4 internal datasets. Furthermore, we use the class distributions as a tool for detecting potential out-of-distribution (OOD) data points during deployment.
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Metric-based meta-learning is one of the de facto standards in few-shot learning. It composes of representation learning and metrics calculation designs. Previous works construct class representations in different ways, varying from mean output embedding to covariance and distributions. However, using embeddings in space lacks expressivity and cannot capture class information robustly, while statistical complex modeling poses difficulty to metric designs. In this work, we use tensor fields (``areas'') to model classes from the geometrical perspective for few-shot learning. We present a simple and effective method, dubbed hypersphere prototypes (HyperProto), where class information is represented by hyperspheres with dynamic sizes with two sets of learnable parameters: the hypersphere's center and the radius. Extending from points to areas, hyperspheres are much more expressive than embeddings. Moreover, it is more convenient to perform metric-based classification with hypersphere prototypes than statistical modeling, as we only need to calculate the distance from a data point to the surface of the hypersphere. Following this idea, we also develop two variants of prototypes under other measurements. Extensive experiments and analysis on few-shot learning tasks across NLP and CV and comparison with 20+ competitive baselines demonstrate the effectiveness of our approach.
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Medical professionals frequently work in a data constrained setting to provide insights across a unique demographic. A few medical observations, for instance, informs the diagnosis and treatment of a patient. This suggests a unique setting for meta-learning, a method to learn models quickly on new tasks, to provide insights unattainable by other methods. We investigate the use of meta-learning and robustness techniques on a broad corpus of benchmark text and medical data. To do this, we developed new data pipelines, combined language models with meta-learning approaches, and extended existing meta-learning algorithms to minimize worst case loss. We find that meta-learning on text is a suitable framework for text-based data, providing better data efficiency and comparable performance to few-shot language models and can be successfully applied to medical note data. Furthermore, meta-learning models coupled with DRO can improve worst case loss across disease codes.
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放射学报告是非结构化的,并包含由放射科医生转录的成像发现和相应的诊断,包括临床事实和否定和/或不确定的陈述。从放射学报告中提取病理发现和诊断对于质量控制,人口健康和监测疾病进展至关重要。现有的作品,主要依赖于基于规则的系统或基于变压器的预训练模型微调,但不能考虑事实和不确定的信息,因此产生假阳性输出。在这项工作中,我们介绍了三种宗旨的增强技术,在产生了对比学习的增强时保留了事实和关键信息。我们介绍了Radbert-Cl,通过自我监督的对比损失将这些信息融入蓝莓。我们对MIMIC-CXR的实验显示了RADBERT-CL在多级多标签报告分类的微调上的卓越性能。我们说明,当有很少有标记的数据时,Radbert-Cl以常规的SOTA变压器(BERT / Bluebert)优于更大的边缘(6-11%)。我们还表明,Radbert-CL学习的表示可以在潜伏空间中捕获关键的医疗信息。
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生物医学中的多模式数据遍布,例如放射学图像和报告。大规模解释这些数据对于改善临床护理和加速临床研究至关重要。与一般领域相比,具有复杂语义的生物医学文本在视觉建模中提出了其他挑战,并且先前的工作使用了缺乏特定领域语言理解的适应性模型不足。在本文中,我们表明,有原则的文本语义建模可以大大改善自我监督的视力 - 语言处理中的对比度学习。我们发布了一种实现最先进的语言模型,从而通过改进的词汇和新颖的语言预测客观的客观利用语义和话语特征在放射学报告中获得了自然语言推断。此外,我们提出了一种自我监督的联合视觉 - 语言方法,重点是更好的文本建模。它在广泛的公开基准上建立了新的最新结果,部分是通过利用我们新的特定领域的语言模型。我们释放了一个新的数据集,该数据集具有放射科医生的局部对齐短语接地注释,以促进生物医学视觉处理中复杂语义建模的研究。广泛的评估,包括在此新数据集中,表明我们的对比学习方法在文本语义建模的帮助下,尽管仅使用了全球对准目标,但在细分任务中的表现都优于细分任务中的先验方法。
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It has been experimentally demonstrated that humans are able to learn in a manner that allows them to make predictions on categories for which they have not seen any examples (Malaviya et al., 2022). Sucholutsky and Schonlau (2020) have recently presented a machine learning approach that aims to do the same. They utilise synthetically generated data and demonstrate that it is possible to achieve sub-linear scaling and develop models that can learn to recognise N classes from M training samples where M is less than N - aka less-than-one shot learning. Their method was, however, defined for univariate or simple multivariate data (Sucholutsky et al., 2021). We extend it to work on large, high-dimensional and real-world datasets and empirically validate it in this new and challenging setting. We apply this method to learn previously unseen NLP tasks from very few examples (4, 8 or 16). We first generate compact, sophisticated less-than-one shot representations called soft-label prototypes which are fitted on training data, capturing the distribution of different classes across the input domain space. We then use a modified k-Nearest Neighbours classifier to demonstrate that soft-label prototypes can classify data competitively, even outperforming much more computationally complex few-shot learning methods.
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人工智能的最新趋势是将验证的模型用于语言和视觉任务,这些模型已经实现了非凡的表现,但也令人困惑。因此,以各种方式探索这些模型的能力对该领域至关重要。在本文中,我们探讨了模型的可靠性,在其中我们将可靠的模型定义为一个不仅可以实现强大的预测性能,而且在许多涉及不确定性(例如选择性预测,开放式设置识别)的决策任务上,在许多决策任务上表现出色,而且表现良好。强大的概括(例如,准确性和适当的评分规则,例如在分布数据集中和分发数据集上的对数可能性)和适应性(例如,主动学习,几乎没有射击不确定性)。我们设计了40个数据集的10种任务类型,以评估视觉和语言域上可靠性的不同方面。为了提高可靠性,我们分别开发了VIT-PLEX和T5-PLEX,分别针对视觉和语言方式扩展了大型模型。 PLEX极大地改善了跨可靠性任务的最先进,并简化了传统协议,因为它可以改善开箱即用的性能,并且不需要设计分数或为每个任务调整模型。我们演示了高达1B参数的模型尺寸的缩放效果,并预处理数据集大小最多4B示例。我们还展示了PLEX在具有挑战性的任务上的功能,包括零射门的开放式识别,主动学习和对话语言理解中的不确定性。
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We propose prototypical networks for the problem of few-shot classification, where a classifier must generalize to new classes not seen in the training set, given only a small number of examples of each new class. Prototypical networks learn a metric space in which classification can be performed by computing distances to prototype representations of each class. Compared to recent approaches for few-shot learning, they reflect a simpler inductive bias that is beneficial in this limited-data regime, and achieve excellent results. We provide an analysis showing that some simple design decisions can yield substantial improvements over recent approaches involving complicated architectural choices and meta-learning. We further extend prototypical networks to zero-shot learning and achieve state-of-theart results on the CU-Birds dataset.
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每年医生对患者的基于形象的诊断需求越来越大,是最近的人工智能方法可以解决的问题。在这种情况下,我们在医学图像的自动报告领域进行了调查,重点是使用深神经网络的方法,了解:(1)数据集,(2)架构设计,(3)解释性和(4)评估指标。我们的调查确定了有趣的发展,也是留下挑战。其中,目前对生成的报告的评估尤为薄弱,因为它主要依赖于传统的自然语言处理(NLP)指标,这不准确地捕获医疗正确性。
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机器学习模型通常会遇到与训练分布不同的样本。无法识别分布(OOD)样本,因此将该样本分配给课堂标签会显着损害模​​型的可靠性。由于其对在开放世界中的安全部署模型的重要性,该问题引起了重大关注。由于对所有可能的未知分布进行建模的棘手性,检测OOD样品是具有挑战性的。迄今为止,一些研究领域解决了检测陌生样本的问题,包括异常检测,新颖性检测,一级学习,开放式识别识别和分布外检测。尽管有相似和共同的概念,但分别分布,开放式检测和异常检测已被独立研究。因此,这些研究途径尚未交叉授粉,创造了研究障碍。尽管某些调查打算概述这些方法,但它们似乎仅关注特定领域,而无需检查不同领域之间的关系。这项调查旨在在确定其共同点的同时,对各个领域的众多著名作品进行跨域和全面的审查。研究人员可以从不同领域的研究进展概述中受益,并协同发展未来的方法。此外,据我们所知,虽然进行异常检测或单级学习进行了调查,但没有关于分布外检测的全面或最新的调查,我们的调查可广泛涵盖。最后,有了统一的跨域视角,我们讨论并阐明了未来的研究线,打算将这些领域更加紧密地融为一体。
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很少有图像分类是一个具有挑战性的问题,旨在仅基于少量培训图像来达到人类的识别水平。少数图像分类的一种主要解决方案是深度度量学习。这些方法是,通过将看不见的样本根据距离的距离进行分类,可在强大的深神经网络中学到的嵌入空间中看到的样品,可以避免以少数图像分类的少数训练图像过度拟合,并实现了最新的图像表现。在本文中,我们提供了对深度度量学习方法的最新审查,以进行2018年至2022年的少量图像分类,并根据度量学习的三个阶段将它们分为三组,即学习功能嵌入,学习课堂表示和学习距离措施。通过这种分类法,我们确定了他们面临的不同方法和问题的新颖性。我们通过讨论当前的挑战和未来趋势进行了少量图像分类的讨论。
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epiSodic学习是对几枪学习感兴趣的研究人员和从业者的流行练习。它包括在一系列学习问题(或剧集)中组织培训,每个人分为小型训练和验证子集,以模仿评估期间遇到的情况。但这总是必要吗?在本文中,我们调查了在集发作的级别使用非参数方法,例如最近邻居等方法的焦点学习的有用性。对于这些方法,我们不仅展示了广州学习的限制是如何不必要的,而是他们实际上导致利用培训批次的数据低效方式。我们通过匹配和原型网络进行广泛的消融实验,其中两个最流行的方法在集中的级别使用非参数方法。他们的“非焦化”对应物具有很大的更简单,具有较少的近似参数,并在多个镜头分类数据集中提高它们的性能。
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预训练在机器学习的不同领域表现出成功,例如计算机视觉,自然语言处理(NLP)和医学成像。但是,尚未完全探索用于临床数据分析。记录了大量的临床记录,但是对于在小型医院收集的数据或处理罕见疾病的数据仍可能稀缺数据和标签。在这种情况下,对较大的未标记临床数据进行预训练可以提高性能。在本文中,我们提出了专为异质的多模式临床数据设计的新型无监督的预训练技术,用于通过蒙版语言建模(MLM)启发的患者预测,通过利用对人群图的深度学习来启发。为此,我们进一步提出了一个基于图形转换器的网络,该网络旨在处理异质临床数据。通过将基于掩盖的预训练与基于变压器的网络相结合,我们将基于掩盖的其他域中训练的成功转化为异质临床数据。我们使用三个医学数据集Tadpole,Mimic-III和一个败血症预测数据集,在自我监督和转移学习设置中展示了我们的预训练方法的好处。我们发现,我们提出的培训方法有助于对患者和人群水平的数据进行建模,并提高所有数据集中不同微调任务的性能。
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对分布(OOD)数据的概括是人类自然的能力,但对于机器而言挑战。这是因为大多数学习算法强烈依赖于i.i.d.〜对源/目标数据的假设,这在域转移导致的实践中通常会违反。域的概括(DG)旨在通过仅使用源数据进行模型学习来实现OOD的概括。在过去的十年中,DG的研究取得了长足的进步,导致了广泛的方法论,例如,基于域的一致性,元学习,数据增强或合奏学习的方法,仅举几例;还在各个应用领域进行了研究,包括计算机视觉,语音识别,自然语言处理,医学成像和强化学习。在本文中,首次提供了DG中的全面文献综述,以总结过去十年来的发展。具体而言,我们首先通过正式定义DG并将其与其他相关领域(如域适应和转移学习)联系起来来涵盖背景。然后,我们对现有方法和理论进行了彻底的审查。最后,我们通过有关未来研究方向的见解和讨论来总结这项调查。
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As an important data selection schema, active learning emerges as the essential component when iterating an Artificial Intelligence (AI) model. It becomes even more critical given the dominance of deep neural network based models, which are composed of a large number of parameters and data hungry, in application. Despite its indispensable role for developing AI models, research on active learning is not as intensive as other research directions. In this paper, we present a review of active learning through deep active learning approaches from the following perspectives: 1) technical advancements in active learning, 2) applications of active learning in computer vision, 3) industrial systems leveraging or with potential to leverage active learning for data iteration, 4) current limitations and future research directions. We expect this paper to clarify the significance of active learning in a modern AI model manufacturing process and to bring additional research attention to active learning. By addressing data automation challenges and coping with automated machine learning systems, active learning will facilitate democratization of AI technologies by boosting model production at scale.
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尽管与专家标签相比,众包平台通常用于收集用于培训机器学习模型的数据集,尽管标签不正确。有两种常见的策略来管理这种噪音的影响。第一个涉及汇总冗余注释,但以较少的例子为代价。其次,先前的作品还考虑使用整个注释预算来标记尽可能多的示例,然后应用Denoising算法来隐式清洁数据集。我们找到了一个中间立场,并提出了一种方法,该方法保留了一小部分注释,以明确清理高度可能的错误样本以优化注释过程。特别是,我们分配了标签预算的很大一部分,以形成用于训练模型的初始数据集。然后,该模型用于确定最有可能是不正确的特定示例,我们将剩余预算用于重新标记。在三个模型变化和四个自然语言处理任务上进行的实验表明,当分配相同的有限注释预算时,旨在处理嘈杂标签的标签聚合和高级denoising方法均优于标签聚合或匹配。
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State-of-the-art computer vision systems are trained to predict a fixed set of predetermined object categories. This restricted form of supervision limits their generality and usability since additional labeled data is needed to specify any other visual concept. Learning directly from raw text about images is a promising alternative which leverages a much broader source of supervision. We demonstrate that the simple pre-training task of predicting which caption goes with which image is an efficient and scalable way to learn SOTA image representations from scratch on a dataset of 400 million (image, text) pairs collected from the internet. After pre-training, natural language is used to reference learned visual concepts (or describe new ones) enabling zero-shot transfer of the model to downstream tasks. We study the performance of this approach by benchmarking on over 30 different existing computer vision datasets, spanning tasks such as OCR, action recognition in videos, geo-localization, and many types of fine-grained object classification. The model transfers non-trivially to most tasks and is often competitive with a fully supervised baseline without the need for any dataset specific training. For instance, we match the accuracy of the original ResNet-50 on ImageNet zero-shot without needing to use any of the 1.28 million training examples it was trained on. We release our code and pre-trained model weights at https://github.com/OpenAI/CLIP.
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深度学习的显着成功引起了人们对医学成像诊断的应用的兴趣。尽管最新的深度学习模型在分类不同类型的医学数据方面已经达到了人类水平的准确性,但这些模型在临床工作流程中几乎不采用,这主要是由于缺乏解释性。深度学习模型的黑盒子性提出了制定策略来解释这些模型的决策过程的必要性,从而导致了可解释的人工智能(XAI)主题的创建。在这种情况下,我们对应用于医学成像诊断的XAI进行了详尽的调查,包括视觉,基于示例和基于概念的解释方法。此外,这项工作回顾了现有的医学成像数据集和现有的指标,以评估解释的质量。此外,我们还包括一组基于报告生成的方法的性能比较。最后,还讨论了将XAI应用于医学成像以及有关该主题的未来研究指示的主要挑战。
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由于筛选乳房X线照片的假阴性评估,通常在晚期检测到与其他癌症更差的间隔和大型侵入性乳腺癌。错过的筛选时间检测通常由其周围乳腺组织模糊的肿瘤引起的,这是一种称为掩蔽的现象。为了研究和基准爆发癌症的乳房Xmmpare掩蔽,在这项工作中,我们引入CSAW-M,最大的公共乳房数据集,从10,000多个人收集并用潜在的掩蔽注释。与以前的方法对比测量乳房图像密度作为代理的方法,我们的数据集直接提供了五个专家屏蔽潜在评估的注释。我们还培训了CSAW-M的深入学习模型来估计掩蔽水平,并显示估计的掩蔽更加预测筛查患有间隔和大型侵入性癌症的参与者 - 而不是明确培训这些任务 - 而不是其乳房密度同行。
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机器学习系统通常假设训练和测试分布是相同的。为此,关键要求是开发可以概括到未经看不见的分布的模型。领域泛化(DG),即分销概括,近年来引起了越来越令人利益。域概括处理了一个具有挑战性的设置,其中给出了一个或几个不同但相关域,并且目标是学习可以概括到看不见的测试域的模型。多年来,域概括地区已经取得了巨大进展。本文提出了对该地区最近进步的首次审查。首先,我们提供了域泛化的正式定义,并讨论了几个相关领域。然后,我们彻底审查了与域泛化相关的理论,并仔细分析了泛化背后的理论。我们将最近的算法分为三个类:数据操作,表示学习和学习策略,并为每个类别详细介绍几种流行的算法。第三,我们介绍常用的数据集,应用程序和我们的开放源代码库进行公平评估。最后,我们总结了现有文学,并为未来提供了一些潜在的研究主题。
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