金融部门中区块链和分布式分类帐技术(DLT)的兴起产生了社会经济转变,引发了法律关注和监管计划。尽管DLT的匿名性可以保护隐私权,数据保护和其他公民自由的权利,但缺乏身份证明阻碍了问责制,调查和执法。最终的挑战范围扩展到打击洗钱以及恐怖主义和扩散的融资(AML/CFT)的规则。由于执法机构和分析公司已经开始成功地应用取证来跟踪区块链生态系统的货币,因此在本文中,我们着重于这些技术的不断增长的相关性。特别是,我们提供了有关机器学习,网络和交易图分析的货币互联网(IOM)应用程序的见解。在提供了IOM中匿名的概念以及AML/CFT和区块链取证之间的相互作用的一些背景之后,我们着重于导致实验的异常检测方法。也就是说,我们通过各种机器学习技术分析了一个现实世界中的比特币交易数据集。我们的说法是,AML/CFT域可以从机器学习中的新图形分析方法中受益。确实,我们的发现表明,图形卷积网络(GCN)和图形注意网络(GAT)神经网络类型代表了AML/CFT合规性的有希望的解决方案。
translated by 谷歌翻译
深度强化学习(DRL)使用多样化的非结构化数据,并使RL能够在高维环境中学习复杂的策略。基于自动驾驶汽车(AVS)的智能运输系统(ITS)为基于政策的DRL提供了绝佳的操场。深度学习体系结构解决了传统算法的计算挑战,同时帮助实现了AV的现实采用和部署。 AVS实施的主要挑战之一是,即使不是可靠和有效地管理的道路上的交通拥堵可能会加剧交通拥堵。考虑到每辆车的整体效果并使用高效和可靠的技术可以真正帮助优化交通流量管理和减少拥堵。为此,我们提出了一个智能的交通管制系统,该系统处理在交叉路口和交叉点后面的复杂交通拥堵场景。我们提出了一个基于DRL的信号控制系统,该系统根据当前交叉点的当前拥塞状况动态调整交通信号。为了应对交叉路口后面的道路上的拥堵,我们使用重新穿线技术来加载道路网络上的车辆。为了实现拟议方法的实际好处,我们分解了数据筒仓,并将所有来自传感器,探测器,车辆和道路结合使用的数据结合起来,以实现可持续的结果。我们使用Sumo微型模拟器进行模拟。我们提出的方法的重要性从结果中体现出来。
translated by 谷歌翻译
在线行为广告和相关的跟踪疗法,构成了真正的隐私威胁。不幸的是,现有的隐私增强工具并不总是对在线广告和跟踪有效的。我们提出了基于基于学习的基于学习的方法来通过混淆来颠覆在线行为广告。 Harpo使用强化学习来自适应地交织使用虚假页面的真实页面访问,以扭曲跟踪器的用户浏览配置文件的视图。我们评估Harpo反对用于在线行为广告的现实世界用户分析和广告目标模型。结果表明,Harpo通过触发超过40%的不正确的兴趣和6倍的出价值来提高隐私。 Harpo优于现有的混淆工具,在相同的开销中多达16倍。 Harpo还能够实现比现有的混淆工具更好地对抗对抗性检测。 Harpo有意义地推进利用混淆来颠覆在线行为广告
translated by 谷歌翻译
Diabetic Retinopathy (DR) is considered one of the primary concerns due to its effect on vision loss among most people with diabetes globally. The severity of DR is mostly comprehended manually by ophthalmologists from fundus photography-based retina images. This paper deals with an automated understanding of the severity stages of DR. In the literature, researchers have focused on this automation using traditional machine learning-based algorithms and convolutional architectures. However, the past works hardly focused on essential parts of the retinal image to improve the model performance. In this paper, we adopt transformer-based learning models to capture the crucial features of retinal images to understand DR severity better. We work with ensembling image transformers, where we adopt four models, namely ViT (Vision Transformer), BEiT (Bidirectional Encoder representation for image Transformer), CaiT (Class-Attention in Image Transformers), and DeiT (Data efficient image Transformers), to infer the degree of DR severity from fundus photographs. For experiments, we used the publicly available APTOS-2019 blindness detection dataset, where the performances of the transformer-based models were quite encouraging.
translated by 谷歌翻译
This paper presents our solutions for the MediaEval 2022 task on DisasterMM. The task is composed of two subtasks, namely (i) Relevance Classification of Twitter Posts (RCTP), and (ii) Location Extraction from Twitter Texts (LETT). The RCTP subtask aims at differentiating flood-related and non-relevant social posts while LETT is a Named Entity Recognition (NER) task and aims at the extraction of location information from the text. For RCTP, we proposed four different solutions based on BERT, RoBERTa, Distil BERT, and ALBERT obtaining an F1-score of 0.7934, 0.7970, 0.7613, and 0.7924, respectively. For LETT, we used three models namely BERT, RoBERTa, and Distil BERTA obtaining an F1-score of 0.6256, 0.6744, and 0.6723, respectively.
translated by 谷歌翻译
Objective: Despite numerous studies proposed for audio restoration in the literature, most of them focus on an isolated restoration problem such as denoising or dereverberation, ignoring other artifacts. Moreover, assuming a noisy or reverberant environment with limited number of fixed signal-to-distortion ratio (SDR) levels is a common practice. However, real-world audio is often corrupted by a blend of artifacts such as reverberation, sensor noise, and background audio mixture with varying types, severities, and duration. In this study, we propose a novel approach for blind restoration of real-world audio signals by Operational Generative Adversarial Networks (Op-GANs) with temporal and spectral objective metrics to enhance the quality of restored audio signal regardless of the type and severity of each artifact corrupting it. Methods: 1D Operational-GANs are used with generative neuron model optimized for blind restoration of any corrupted audio signal. Results: The proposed approach has been evaluated extensively over the benchmark TIMIT-RAR (speech) and GTZAN-RAR (non-speech) datasets corrupted with a random blend of artifacts each with a random severity to mimic real-world audio signals. Average SDR improvements of over 7.2 dB and 4.9 dB are achieved, respectively, which are substantial when compared with the baseline methods. Significance: This is a pioneer study in blind audio restoration with the unique capability of direct (time-domain) restoration of real-world audio whilst achieving an unprecedented level of performance for a wide SDR range and artifact types. Conclusion: 1D Op-GANs can achieve robust and computationally effective real-world audio restoration with significantly improved performance. The source codes and the generated real-world audio datasets are shared publicly with the research community in a dedicated GitHub repository1.
translated by 谷歌翻译
Uncertainty quantification is crucial to inverse problems, as it could provide decision-makers with valuable information about the inversion results. For example, seismic inversion is a notoriously ill-posed inverse problem due to the band-limited and noisy nature of seismic data. It is therefore of paramount importance to quantify the uncertainties associated to the inversion process to ease the subsequent interpretation and decision making processes. Within this framework of reference, sampling from a target posterior provides a fundamental approach to quantifying the uncertainty in seismic inversion. However, selecting appropriate prior information in a probabilistic inversion is crucial, yet non-trivial, as it influences the ability of a sampling-based inference in providing geological realism in the posterior samples. To overcome such limitations, we present a regularized variational inference framework that performs posterior inference by implicitly regularizing the Kullback-Leibler divergence loss with a CNN-based denoiser by means of the Plug-and-Play methods. We call this new algorithm Plug-and-Play Stein Variational Gradient Descent (PnP-SVGD) and demonstrate its ability in producing high-resolution, trustworthy samples representative of the subsurface structures, which we argue could be used for post-inference tasks such as reservoir modelling and history matching. To validate the proposed method, numerical tests are performed on both synthetic and field post-stack seismic data.
translated by 谷歌翻译
In recent years distributional reinforcement learning has produced many state of the art results. Increasingly sample efficient Distributional algorithms for the discrete action domain have been developed over time that vary primarily in the way they parameterize their approximations of value distributions, and how they quantify the differences between those distributions. In this work we transfer three of the most well-known and successful of those algorithms (QR-DQN, IQN and FQF) to the continuous action domain by extending two powerful actor-critic algorithms (TD3 and SAC) with distributional critics. We investigate whether the relative performance of the methods for the discrete action space translates to the continuous case. To that end we compare them empirically on the pybullet implementations of a set of continuous control tasks. Our results indicate qualitative invariance regarding the number and placement of distributional atoms in the deterministic, continuous action setting.
translated by 谷歌翻译
Automated synthesis of histology images has several potential applications in computational pathology. However, no existing method can generate realistic tissue images with a bespoke cellular layout or user-defined histology parameters. In this work, we propose a novel framework called SynCLay (Synthesis from Cellular Layouts) that can construct realistic and high-quality histology images from user-defined cellular layouts along with annotated cellular boundaries. Tissue image generation based on bespoke cellular layouts through the proposed framework allows users to generate different histological patterns from arbitrary topological arrangement of different types of cells. SynCLay generated synthetic images can be helpful in studying the role of different types of cells present in the tumor microenvironmet. Additionally, they can assist in balancing the distribution of cellular counts in tissue images for designing accurate cellular composition predictors by minimizing the effects of data imbalance. We train SynCLay in an adversarial manner and integrate a nuclear segmentation and classification model in its training to refine nuclear structures and generate nuclear masks in conjunction with synthetic images. During inference, we combine the model with another parametric model for generating colon images and associated cellular counts as annotations given the grade of differentiation and cell densities of different cells. We assess the generated images quantitatively and report on feedback from trained pathologists who assigned realism scores to a set of images generated by the framework. The average realism score across all pathologists for synthetic images was as high as that for the real images. We also show that augmenting limited real data with the synthetic data generated by our framework can significantly boost prediction performance of the cellular composition prediction task.
translated by 谷歌翻译
Autonomous mobile agents such as unmanned aerial vehicles (UAVs) and mobile robots have shown huge potential for improving human productivity. These mobile agents require low power/energy consumption to have a long lifespan since they are usually powered by batteries. These agents also need to adapt to changing/dynamic environments, especially when deployed in far or dangerous locations, thus requiring efficient online learning capabilities. These requirements can be fulfilled by employing Spiking Neural Networks (SNNs) since SNNs offer low power/energy consumption due to sparse computations and efficient online learning due to bio-inspired learning mechanisms. However, a methodology is still required to employ appropriate SNN models on autonomous mobile agents. Towards this, we propose a Mantis methodology to systematically employ SNNs on autonomous mobile agents to enable energy-efficient processing and adaptive capabilities in dynamic environments. The key ideas of our Mantis include the optimization of SNN operations, the employment of a bio-plausible online learning mechanism, and the SNN model selection. The experimental results demonstrate that our methodology maintains high accuracy with a significantly smaller memory footprint and energy consumption (i.e., 3.32x memory reduction and 2.9x energy saving for an SNN model with 8-bit weights) compared to the baseline network with 32-bit weights. In this manner, our Mantis enables the employment of SNNs for resource- and energy-constrained mobile agents.
translated by 谷歌翻译