在人类和其他动物中分类的众所周知的感知后果称为分类感知,是由类别内部压缩和类别分离之间的特别特征:两个项目,在输入空间内,如果它们属于与属于不同类别的类别相同。在这里阐述认知科学的实验和理论结果,我们在这里研究人工神经网络中的分类效果。我们结合了利用互联网信息量的理论分析,以及关于增加复杂性的网络的一系列数值模拟。这些形式和数值分析提供了深层层内神经表示的几何形状的见解,随着类别边界附近的空间膨胀,远离类别边界。我们通过使用两个互补方法调查分类表示:通过不同类别的刺激之间的变形连续进行动态物理学和认知神经科学的一种模仿实验,而另一个介绍网络中的每层的分类指数,量化的分类指数量化了神经人口水平的类别。我们展示了类别学习的浅层和深度神经网络,自动诱导分类感知。我们进一步表明层更深,分类效果越强。作为我们研究的结果,我们提出了辍学正规化技术不同启发式实践的效果的相干观点。更一般地,我们的观点在神经科学文献中发现回声,坚持根据所学习的神经表示的几何形状的任何给定层中的噪声对噪声的差异影响,即该几何形状如何反映类别的结构。
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悠久的作品历史表明,神经网络在训练场上很难推断。 Balesteriero等人最近的一项研究。 (2021)挑战这种观点:将插值定义为训练集凸壳的属性状态,他们表明,在输入或神经空间中,测试集在此凸面上都不能躺在大部分中数据的高维度,引用了众所周知的维度诅咒。然后,假定神经网络必须在外推性模式下起作用。我们在这里研究典型神经网络最后一层隐藏层的神经活动。使用自动编码器来揭示神经活动的固有空间,我们表明该空间实际上是低维的,并且模型越好,该内在空间的维度越低。在这个空间中,测试集的大多数样本实际上位于训练集的凸壳上:在凸船体的定义下,模型因此在插值方面起作用。此外,我们表明属于凸船体似乎不是相关标准。实际上,与训练集的近端近距离措施实际上更好地与性能准确性有关。因此,典型的神经网络似乎确实在插值方面起作用。良好的概括性能与神经网络在这种制度中运作良好的能力有关。
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这是一门专门针对STEM学生开发的介绍性机器学习课程。我们的目标是为有兴趣的读者提供基础知识,以在自己的项目中使用机器学习,并将自己熟悉术语作为进一步阅读相关文献的基础。在这些讲义中,我们讨论受监督,无监督和强化学习。注释从没有神经网络的机器学习方法的说明开始,例如原理分析,T-SNE,聚类以及线性回归和线性分类器。我们继续介绍基本和先进的神经网络结构,例如密集的进料和常规神经网络,经常性的神经网络,受限的玻尔兹曼机器,(变性)自动编码器,生成的对抗性网络。讨论了潜在空间表示的解释性问题,并使用梦和对抗性攻击的例子。最后一部分致力于加强学习,我们在其中介绍了价值功能和政策学习的基本概念。
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The success of machine learning algorithms generally depends on data representation, and we hypothesize that this is because different representations can entangle and hide more or less the different explanatory factors of variation behind the data. Although specific domain knowledge can be used to help design representations, learning with generic priors can also be used, and the quest for AI is motivating the design of more powerful representation-learning algorithms implementing such priors. This paper reviews recent work in the area of unsupervised feature learning and deep learning, covering advances in probabilistic models, auto-encoders, manifold learning, and deep networks. This motivates longer-term unanswered questions about the appropriate objectives for learning good representations, for computing representations (i.e., inference), and the geometrical connections between representation learning, density estimation and manifold learning.
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尽管深度强化学习(RL)最近取得了许多成功,但其方法仍然效率低下,这使得在数据方面解决了昂贵的许多问题。我们的目标是通过利用未标记的数据中的丰富监督信号来进行学习状态表示,以解决这一问题。本文介绍了三种不同的表示算法,可以访问传统RL算法使用的数据源的不同子集使用:(i)GRICA受到独立组件分析(ICA)的启发,并训练深层神经网络以输出统计独立的独立特征。输入。 Grica通过最大程度地减少每个功能与其他功能之间的相互信息来做到这一点。此外,格里卡仅需要未分类的环境状态。 (ii)潜在表示预测(LARP)还需要更多的上下文:除了要求状态作为输入外,它还需要先前的状态和连接它们的动作。该方法通过预测当前状态和行动的环境的下一个状态来学习状态表示。预测器与图形搜索算法一起使用。 (iii)重新培训通过训练深层神经网络来学习国家表示,以学习奖励功能的平滑版本。该表示形式用于预处理输入到深度RL,而奖励预测指标用于奖励成型。此方法仅需要环境中的状态奖励对学习表示表示。我们发现,每种方法都有其优势和缺点,并从我们的实验中得出结论,包括无监督的代表性学习在RL解决问题的管道中可以加快学习的速度。
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可解释的人工智能(XAI)的新兴领域旨在为当今强大但不透明的深度学习模型带来透明度。尽管本地XAI方法以归因图的形式解释了个体预测,从而确定了重要特征的发生位置(但没有提供有关其代表的信息),但全局解释技术可视化模型通常学会的编码的概念。因此,两种方法仅提供部分见解,并留下将模型推理解释的负担。只有少数当代技术旨在将本地和全球XAI背后的原则结合起来,以获取更多信息的解释。但是,这些方法通常仅限于特定的模型体系结构,或对培训制度或数据和标签可用性施加其他要求,这实际上使事后应用程序成为任意预训练的模型。在这项工作中,我们介绍了概念相关性传播方法(CRP)方法,该方法结合了XAI的本地和全球观点,因此允许回答“何处”和“ where”和“什么”问题,而没有其他约束。我们进一步介绍了相关性最大化的原则,以根据模型对模型的有用性找到代表性的示例。因此,我们提高了对激活最大化及其局限性的共同实践的依赖。我们证明了我们方法在各种环境中的能力,展示了概念相关性传播和相关性最大化导致了更加可解释的解释,并通过概念图表,概念组成分析和概念集合和概念子区和概念子区和概念子集和定量研究对模型的表示和推理提供了深刻的见解。它们在细粒度决策中的作用。
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We explore an original strategy for building deep networks, based on stacking layers of denoising autoencoders which are trained locally to denoise corrupted versions of their inputs. The resulting algorithm is a straightforward variation on the stacking of ordinary autoencoders. It is however shown on a benchmark of classification problems to yield significantly lower classification error, thus bridging the performance gap with deep belief networks (DBN), and in several cases surpassing it. Higher level representations learnt in this purely unsupervised fashion also help boost the performance of subsequent SVM classifiers. Qualitative experiments show that, contrary to ordinary autoencoders, denoising autoencoders are able to learn Gabor-like edge detectors from natural image patches and larger stroke detectors from digit images. This work clearly establishes the value of using a denoising criterion as a tractable unsupervised objective to guide the learning of useful higher level representations.
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Deep neural nets with a large number of parameters are very powerful machine learning systems. However, overfitting is a serious problem in such networks. Large networks are also slow to use, making it difficult to deal with overfitting by combining the predictions of many different large neural nets at test time. Dropout is a technique for addressing this problem. The key idea is to randomly drop units (along with their connections) from the neural network during training. This prevents units from co-adapting too much. During training, dropout samples from an exponential number of different "thinned" networks. At test time, it is easy to approximate the effect of averaging the predictions of all these thinned networks by simply using a single unthinned network that has smaller weights. This significantly reduces overfitting and gives major improvements over other regularization methods. We show that dropout improves the performance of neural networks on supervised learning tasks in vision, speech recognition, document classification and computational biology, obtaining state-of-the-art results on many benchmark data sets.
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Current learning machines have successfully solved hard application problems, reaching high accuracy and displaying seemingly "intelligent" behavior. Here we apply recent techniques for explaining decisions of state-of-the-art learning machines and analyze various tasks from computer vision and arcade games. This showcases a spectrum of problem-solving behaviors ranging from naive and short-sighted, to wellinformed and strategic. We observe that standard performance evaluation metrics can be oblivious to distinguishing these diverse problem solving behaviors. Furthermore, we propose our semi-automated Spectral Relevance Analysis that provides a practically effective way of characterizing and validating the behavior of nonlinear learning machines. This helps to assess whether a learned model indeed delivers reliably for the problem that it was conceived for. Furthermore, our work intends to add a voice of caution to the ongoing excitement about machine intelligence and pledges to evaluate and judge some of these recent successes in a more nuanced manner.
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The International Workshop on Reading Music Systems (WoRMS) is a workshop that tries to connect researchers who develop systems for reading music, such as in the field of Optical Music Recognition, with other researchers and practitioners that could benefit from such systems, like librarians or musicologists. The relevant topics of interest for the workshop include, but are not limited to: Music reading systems; Optical music recognition; Datasets and performance evaluation; Image processing on music scores; Writer identification; Authoring, editing, storing and presentation systems for music scores; Multi-modal systems; Novel input-methods for music to produce written music; Web-based Music Information Retrieval services; Applications and projects; Use-cases related to written music. These are the proceedings of the 3rd International Workshop on Reading Music Systems, held in Alicante on the 23rd of July 2021.
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现代深度学习方法构成了令人难以置信的强大工具,以解决无数的挑战问题。然而,由于深度学习方法作为黑匣子运作,因此与其预测相关的不确定性往往是挑战量化。贝叶斯统计数据提供了一种形式主义来理解和量化与深度神经网络预测相关的不确定性。本教程概述了相关文献和完整的工具集,用于设计,实施,列车,使用和评估贝叶斯神经网络,即使用贝叶斯方法培训的随机人工神经网络。
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预测性编码提供了对皮质功能的潜在统一说明 - 假设大脑的核心功能是最小化有关世界生成模型的预测错误。该理论与贝叶斯大脑框架密切相关,在过去的二十年中,在理论和认知神经科学领域都产生了重大影响。基于经验测试的预测编码的改进和扩展的理论和数学模型,以及评估其在大脑中实施的潜在生物学合理性以及该理论所做的具体神经生理学和心理学预测。尽管存在这种持久的知名度,但仍未对预测编码理论,尤其是该领域的最新发展进行全面回顾。在这里,我们提供了核心数学结构和预测编码的逻辑的全面综述,从而补充了文献中最新的教程。我们还回顾了该框架中的各种经典和最新工作,从可以实施预测性编码的神经生物学现实的微电路到预测性编码和广泛使用的错误算法的重新传播之间的紧密关系,以及对近距离的调查。预测性编码和现代机器学习技术之间的关系。
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神经网络经常将许多无关的概念包装到一个神经元中 - 一种令人困惑的现象被称为“多疾病”,这使解释性更具挑战性。本文提供了一个玩具模型,可以完全理解多义,这是由于模型在“叠加”中存储其他稀疏特征的结果。我们证明了相变的存在,与均匀多型的几何形状的令人惊讶的联系以及与对抗性例子联系的证据。我们还讨论了对机械解释性的潜在影响。
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贝叶斯脑假设假设大脑根据贝叶斯定理进行准确地运行统计分布。突触前囊泡释放神经递质的随机性失效可以让大脑从网络参数的后部分布中样本,被解释为认知不确定性。尚未显示出先前随机故障可能允许网络从观察到的分布中采样,也称为炼肠或残留不确定性。两个分布的采样使概率推断,高效搜索和创造性或生成问题解决。我们证明,在基于人口码的神经活动的解释下,可以用单独的突触衰竭来表示和对两种类型的分布进行分布。我们首先通过突触故障和横向抑制来定义生物学限制的神经网络和采样方案。在该框架内,我们派生基于辍学的认知不确定性,然后从突触功效证明了允许网络从任意,由接收层表示的分布来释放概率的分析映射。其次,我们的结果导致了本地学习规则,突触将适应其发布概率。我们的结果表明,在生物学限制的网络中,仅使用本地学习的突触失败率,与变分的贝叶斯推断相关的完整贝叶斯推断。
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在2015年和2019年之间,地平线的成员2020年资助的创新培训网络名为“Amva4newphysics”,研究了高能量物理问题的先进多变量分析方法和统计学习工具的定制和应用,并开发了完全新的。其中许多方法已成功地用于提高Cern大型Hadron撞机的地图集和CMS实验所执行的数据分析的敏感性;其他几个人,仍然在测试阶段,承诺进一步提高基本物理参数测量的精确度以及新现象的搜索范围。在本文中,在研究和开发的那些中,最相关的新工具以及对其性能的评估。
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我们通过将其基于实现功能空间而不是参数空间的几何形状来系统地研究深度神经网络景观的方法。将分类器分组到等效类中,我们开发了一个标准化的参数化,其中所有对称性都被删除,从而导致环形拓扑。在这个空间上,我们探讨了误差景观而不是损失。这使我们能够得出有意义的概念,即最小化器的平坦度和连接它们的地球通道的概念。使用不同的优化算法,这些算法采样具有不同平坦度的最小化器,我们研究模式连接性和相对距离。测试各种最先进的体系结构和基准数据集,我们确认了平面度和泛化性能之间的相关性;我们进一步表明,在功能空间中,minima彼此更近,并且连接它们的大地测量学的屏障很小。我们还发现,通过梯度下降的变体发现的最小化器可以通过由参数空间中的两个直线组成的零误差路径连接,即带有单个弯曲的多边形链。我们观察到具有二进制权重和激活的神经网络中相似的定性结果,这为在这种情况下的连通性提供了第一个结果之一。我们的结果取决于对称性的去除,并且与对简单浅层模型进行的一些分析研究所描述的丰富现象学非常吻合。
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We trained a large, deep convolutional neural network to classify the 1.2 million high-resolution images in the ImageNet LSVRC-2010 contest into the 1000 different classes. On the test data, we achieved top-1 and top-5 error rates of 37.5% and 17.0% which is considerably better than the previous state-of-the-art. The neural network, which has 60 million parameters and 650,000 neurons, consists of five convolutional layers, some of which are followed by max-pooling layers, and three fully-connected layers with a final 1000-way softmax. To make training faster, we used non-saturating neurons and a very efficient GPU implementation of the convolution operation. To reduce overfitting in the fully-connected layers we employed a recently-developed regularization method called "dropout" that proved to be very effective. We also entered a variant of this model in the ILSVRC-2012 competition and achieved a winning top-5 test error rate of 15.3%, compared to 26.2% achieved by the second-best entry.
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Multilayer Neural Networks trained with the backpropagation algorithm constitute the best example of a successful Gradient-Based Learning technique. Given an appropriate network architecture, Gradient-Based Learning algorithms can be used to synthesize a complex decision surface that can classify high-dimensional patterns such as handwritten characters, with minimal preprocessing. This paper reviews various methods applied to handwritten character recognition and compares them on a standard handwritten digit recognition task. Convolutional Neural Networks, that are specifically designed to deal with the variability of 2D shapes, are shown to outperform all other techniques.Real-life document recognition systems are composed of multiple modules including eld extraction, segmentation, recognition, and language modeling. A new learning paradigm, called Graph Transformer Networks (GTN), allows such multi-module systems to be trained globally using Gradient-Based methods so as to minimize an overall performance measure.Two systems for on-line handwriting recognition are described. Experiments demonstrate the advantage of global training, and the exibility of Graph Transformer Networks.A Graph Transformer Network for reading bank check is also described. It uses Convolutional Neural Network character recognizers combined with global training techniques to provides record accuracy on business and personal checks. It is deployed commercially and reads several million checks per day.
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投影技术经常用于可视化高维数据,使用户能够更好地理解在2D屏幕上的多维空间的总体结构。尽管存在着许多这样的方法,相当小的工作已经逆投影的普及方法来完成 - 绘制投影点,或者更一般的过程中,投影空间回到原来的高维空间。在本文中我们提出NNInv,用近似的任何突起或映射的逆的能力的深学习技术。 NNInv学会重建上的二维投影空间从任意点高维数据,给用户在视觉分析系统所学习的高维表示的能力进行交互。我们提供NNInv的参数空间的分析,并在选择这些参数提供指导。我们通过一系列定量和定性分析的延长NNInv的有效性验证。交互式实例中插值,分级协议,梯度可视化:然后,我们把它应用到三个可视化任务,验证了该方法的效用。
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Continual Learning (CL) is a field dedicated to devise algorithms able to achieve lifelong learning. Overcoming the knowledge disruption of previously acquired concepts, a drawback affecting deep learning models and that goes by the name of catastrophic forgetting, is a hard challenge. Currently, deep learning methods can attain impressive results when the data modeled does not undergo a considerable distributional shift in subsequent learning sessions, but whenever we expose such systems to this incremental setting, performance drop very quickly. Overcoming this limitation is fundamental as it would allow us to build truly intelligent systems showing stability and plasticity. Secondly, it would allow us to overcome the onerous limitation of retraining these architectures from scratch with the new updated data. In this thesis, we tackle the problem from multiple directions. In a first study, we show that in rehearsal-based techniques (systems that use memory buffer), the quantity of data stored in the rehearsal buffer is a more important factor over the quality of the data. Secondly, we propose one of the early works of incremental learning on ViTs architectures, comparing functional, weight and attention regularization approaches and propose effective novel a novel asymmetric loss. At the end we conclude with a study on pretraining and how it affects the performance in Continual Learning, raising some questions about the effective progression of the field. We then conclude with some future directions and closing remarks.
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