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A Feed-Forward Neural Network for Increasing the Hopfield-Network Storage Capacity 一种用于提高Hopfield网络存储容量的前馈神经网络
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-05-06 DOI: 10.1142/S0129065722500277
Shaokai Zhao, Bin Chen, Hui Wang, Zhiyuan Luo, Zhang Tao
In the hippocampal dentate gyrus (DG), pattern separation mainly depends on the concepts of 'expansion recoding', meaning random mixing of different DG input channels. However, recent advances in neurophysiology have challenged the theory of pattern separation based on these concepts. In this study, we propose a novel feed-forward neural network, inspired by the structure of the DG and neural oscillatory analysis, to increase the Hopfield-network storage capacity. Unlike the previously published feed-forward neural networks, our bio-inspired neural network is designed to take advantage of both biological structure and functions of the DG. To better understand the computational principles of pattern separation in the DG, we have established a mouse model of environmental enrichment. We obtained a possible computational model of the DG, associated with better pattern separation ability, by using neural oscillatory analysis. Furthermore, we have developed a new algorithm based on Hebbian learning and coupling direction of neural oscillation to train the proposed neural network. The simulation results show that our proposed network significantly expands the storage capacity of Hopfield network, and more effective pattern separation is achieved. The storage capacity rises from 0.13 for the standard Hopfield network to 0.32 using our model when the overlap in patterns is 10%.
在海马齿状回(DG),模式分离主要取决于“扩展-记录”的概念,即不同DG输入通道的随机混合。然而,神经生理学的最新进展对基于这些概念的模式分离理论提出了挑战。在本研究中,我们受到DG结构和神经振荡分析的启发,提出了一种新的前馈神经网络,以增加Hopfield网络的存储容量。与之前发表的前馈神经网络不同,我们的仿生神经网络旨在利用DG的生物结构和功能。为了更好地理解DG中模式分离的计算原理,我们建立了一个环境富集的小鼠模型。通过使用神经振荡分析,我们获得了一个可能的DG计算模型,该模型具有更好的模式分离能力。此外,我们还开发了一种基于Hebbian学习和神经振荡耦合方向的新算法来训练所提出的神经网络。仿真结果表明,我们提出的网络显著扩展了Hopfield网络的存储容量,并实现了更有效的模式分离。当模式重叠为10%时,使用我们的模型,存储容量从标准Hopfield网络的0.13上升到0.32。
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引用次数: 1
Human Silhouette and Skeleton Video Synthesis Through Wi-Fi Signals. 通过Wi-Fi信号合成人体剪影和骨骼视频。
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-05-01 Epub Date: 2022-02-24 DOI: 10.1142/S0129065722500150
Danilo Avola, Marco Cascio, Luigi Cinque, Alessio Fagioli, Gian Luca Foresti

The increasing availability of wireless access points (APs) is leading toward human sensing applications based on Wi-Fi signals as support or alternative tools to the widespread visual sensors, where the signals enable to address well-known vision-related problems such as illumination changes or occlusions. Indeed, using image synthesis techniques to translate radio frequencies to the visible spectrum can become essential to obtain otherwise unavailable visual data. This domain-to-domain translation is feasible because both objects and people affect electromagnetic waves, causing radio and optical frequencies variations. In the literature, models capable of inferring radio-to-visual features mappings have gained momentum in the last few years since frequency changes can be observed in the radio domain through the channel state information (CSI) of Wi-Fi APs, enabling signal-based feature extraction, e.g. amplitude. On this account, this paper presents a novel two-branch generative neural network that effectively maps radio data into visual features, following a teacher-student design that exploits a cross-modality supervision strategy. The latter conditions signal-based features in the visual domain to completely replace visual data. Once trained, the proposed method synthesizes human silhouette and skeleton videos using exclusively Wi-Fi signals. The approach is evaluated on publicly available data, where it obtains remarkable results for both silhouette and skeleton videos generation, demonstrating the effectiveness of the proposed cross-modality supervision strategy.

无线接入点(ap)的日益普及正在引领基于Wi-Fi信号的人类传感应用,作为广泛使用的视觉传感器的支持或替代工具,其中信号能够解决众所周知的视觉相关问题,如照明变化或遮挡。事实上,使用图像合成技术将无线电频率转换为可见光谱对于获得否则无法获得的视觉数据至关重要。这种域到域的转换是可行的,因为物体和人都会影响电磁波,导致无线电和光学频率的变化。在文献中,能够推断无线电到视觉特征映射的模型在过去几年中获得了发展势头,因为可以通过Wi-Fi ap的信道状态信息(CSI)在无线电域中观察到频率变化,从而实现基于信号的特征提取,例如振幅。鉴于此,本文提出了一种新型的双分支生成神经网络,该网络可以有效地将无线电数据映射到视觉特征中,遵循利用跨模态监督策略的师生设计。后者的条件是基于信号的特征在视觉领域完全取代视觉数据。一旦训练,所提出的方法合成人体轮廓和骨骼视频只使用Wi-Fi信号。该方法在公开可用的数据上进行了评估,在剪影和骨架视频生成方面获得了显着的结果,证明了所提出的跨模态监督策略的有效性。
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引用次数: 4
Evaluation of Brain Functional Connectivity from Electroencephalographic Signals Under Different Emotional States 不同情绪状态下脑电图信号对脑功能连通性的评价
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-23 DOI: 10.1142/S0129065722500265
B. García-Martínez, A. Fernández-Caballero, A. Martínez-Rodrigo, R. Alcaraz, P. Novais
The identification of the emotional states corresponding to the four quadrants of the valence/arousal space has been widely analyzed in the scientific literature by means of multiple techniques. Nevertheless, most of these methods were based on the assessment of each brain region separately, without considering the possible interactions among different areas. In order to study these interconnections, this study computes for the first time the functional connectivity metric called cross-sample entropy for the analysis of the brain synchronization in four groups of emotions from electroencephalographic signals. Outcomes reported a strong synchronization in the interconnections among central, parietal and occipital areas, while the interactions between left frontal and temporal structures with the rest of brain regions presented the lowest coordination. These differences were statistically significant for the four groups of emotions. All emotions were simultaneously classified with a 95.43% of accuracy, overcoming the results reported in previous studies. Moreover, the differences between high and low levels of valence and arousal, taking into account the state of the counterpart dimension, also provided notable findings about the degree of synchronization in the brain within different emotional conditions and the possible implications of these outcomes from a psychophysiological point of view.
在科学文献中,通过多种技术对与价/唤醒空间的四个象限相对应的情绪状态的识别进行了广泛的分析。然而,这些方法大多是基于对每个大脑区域的单独评估,而没有考虑不同区域之间可能的相互作用。为了研究这些相互联系,本研究首次计算了称为跨样本熵的功能连接度量,用于分析脑电图信号中四组情绪的大脑同步。结果显示,中央、顶叶和枕叶区域之间的相互联系具有很强的同步性,而左额和颞叶结构与大脑其他区域之间的互动表现出最低的协调性。这些差异在四组情绪中具有统计学意义。所有情绪都被同时分类,准确率为95.43%,超过了之前研究中报道的结果。此外,考虑到对应维度的状态,高水平和低水平的效价和唤醒之间的差异也提供了关于不同情绪条件下大脑同步程度的显著发现,以及从心理生理学的角度来看这些结果的可能含义。
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引用次数: 1
Quantitative Assessment of Electroencephalogram Reactivity in Comatose Patients on Extracorporeal Membrane Oxygenation 昏迷患者体外膜肺氧合脑电图反应性的定量评价
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-20 DOI: 10.1142/S0129065722500253
Autumn Williams, Yinuo Zeng, Ziwei Li, N. Thakor, R. Geocadin, Jay Bronder, Nirma Carballido Martinez, E. Ritzl, Sung-Min Cho
Objective assessment of the brain's responsiveness in comatose patients on Extracorporeal Membrane Oxygenation (ECMO) support is essential to clinical care, but current approaches are limited by subjective methodology and inter-rater disagreement. Quantitative electroencephalogram (EEG) algorithms could potentially assist clinicians, improving diagnostic accuracy. We developed a quantitative, stimulus-based algorithm to assess EEG reactivity features in comatose patients on ECMO support. Patients underwent a stimulation protocol of increasing intensity (auditory, peripheral, and nostril stimulation). A total of 129 20-s EEG epochs were collected from 24 patients (age [Formula: see text], 10 females, 14 males) on ECMO support with a Glasgow Coma Scale[Formula: see text]8. EEG reactivity scores ([Formula: see text]-scores) were calculated using aggregated spectral power and permutation entropy for each of five frequency bands ([Formula: see text], [Formula: see text], [Formula: see text], [Formula: see text], [Formula: see text]. Parameter estimation techniques were applied to [Formula: see text]-scores to identify properties that replicate the decision process of experienced clinicians performing visual analysis. Spectral power changes from audio stimulation were concentrated in the [Formula: see text] band, whereas peripheral stimulation elicited an increase in spectral power across multiple bands, and nostril stimulation changed the entropy of the [Formula: see text] band. The findings of this pilot study on [Formula: see text]-score lay a foundation for a future prediction tool with clinical applications.
客观评估昏迷患者在体外膜肺氧合(ECMO)支持下的大脑反应性对临床护理至关重要,但目前的方法受到主观方法和专家间分歧的限制。定量脑电图(EEG)算法可能有助于临床医生提高诊断准确性。我们开发了一种基于刺激的定量算法来评估ECMO支持下昏迷患者的脑电图反应特征。患者接受了强度增加的刺激方案(听觉、外周和鼻孔刺激)。使用格拉斯哥昏迷量表[公式:见正文]8,从24名接受ECMO支持的患者(年龄[公式:参见正文],10名女性,14名男性)中总共收集了129个20秒EEG时期。EEG反应性评分([公式:见正文]-评分)使用五个频带([公式(见正文)]、[公式(参见正文)]和[公式(见图)]中的每一个频带的聚合频谱功率和排列熵进行计算-分数,以确定复制有经验的临床医生进行视觉分析的决策过程的特性。音频刺激的频谱功率变化集中在[公式:见正文]波段,而外周刺激引起多个波段的频谱功率增加,鼻孔刺激改变了[公式:参见正文]波段的熵。这项关于[公式:见正文]-分数的试点研究结果为未来的临床应用预测工具奠定了基础。
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引用次数: 1
Dynamics of the "Cognitive" Brain Wave P3b at Rest for Alzheimer Dementia Prediction in Mild Cognitive Impairment 轻度认知障碍患者休息时“认知”脑波P3b动态预测阿尔茨海默病
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-18 DOI: 10.1142/S0129065722500228
C. Porcaro, F. Vecchio, F. Miraglia, G. Zito, P. Rossini
Alzheimer's disease (AD) is the most common cause of dementia that involves a progressive and irrevocable decline in cognitive abilities and social behavior, thus annihilating the patient's autonomy. The theoretical assumption that disease-modifying drugs are most effective in the early stages hopefully in the prodromal stage called mild cognitive impairment (MCI) urgently pushes toward the identification of robust and individualized markers of cognitive decline to establish an early pharmacological intervention. This requires the combination of well-established neural mechanisms and the development of increasingly sensitive methodologies. Among the neurophysiological markers of attention and cognition, one of the sub-components of the 'cognitive brain wave' P300 recordable in an odd-ball paradigm -namely the P3b- is extensively regarded as a sensitive indicator of cognitive performance. Several studies have reliably shown that changes in the amplitude and latency of the P3b are strongly related to cognitive decline and aging both healthy and pathological. Here, we used a P3b spatial filter to enhance the electroencephalographic (EEG) characteristics underlying 175 subjects divided into 135 MCI subjects, 20 elderly controls (EC), and 20 young volunteers (Y). The Y group served to extract the P3b spatial filter from EEG data, which was later applied to the other groups during resting conditions with eyes open and without being asked to perform any task. The group of 135 MCI subjects could be divided into two subgroups at the end of a month follow-up: 75 with stable MCI (MCI-S, not converted to AD), 60 converted to AD (MCI-C). The P3b spatial filter was built by means of a signal processing method called Functional Source Separation (FSS), which increases signal-to-noise ratio by using a weighted sum of all EEG recording channels rather than relying on a single, or a small sub-set, of channels. A clear difference was observed for the P3b dynamics at rest between groups. Moreover, a machine learning approach showed that P3b at rest could correctly distinguish MCI from EC (80.6% accuracy) and MCI-S from MCI-C (74.1% accuracy), with an accuracy as high as 93.8% in discriminating between MCI-C and EC. Finally, a comparison of the Bayes factor revealed that the group differences among MCI-S and MCI-C were 138 times more likely to be detected using the P3b dynamics compared with the best performing single electrode (Pz) approach. In conclusion, we propose that P3b as measured through spatial filters can be safely regarded as a simple and sensitive marker to predict the conversion from an MCI to AD status eventually combined with other non-neurophysiological biomarkers for a more precise definition of dementia having neuropathological Alzheimer characteristics.
阿尔茨海默病(AD)是痴呆症最常见的病因,涉及认知能力和社会行为的进行性和不可逆转的下降,从而消灭患者的自主性。理论假设疾病改善药物在早期阶段最有效,希望在称为轻度认知障碍(MCI)的前驱阶段迫切地推动了对认知衰退的强大和个性化标记物的识别,以建立早期药物干预。这需要将完善的神经机制和日益敏感的方法结合起来。在注意力和认知的神经生理标记中,“认知脑电波”的一个子成分P300在一个古怪的范式中可记录-即P3b-被广泛认为是认知表现的敏感指标。一些研究可靠地表明,P3b的振幅和潜伏期的变化与健康和病理的认知能力下降和衰老密切相关。在这里,我们使用P3b空间滤波器来增强175名受试者的脑电图(EEG)特征,这些受试者分为135名MCI受试者、20名老年对照组(EC)和20名年轻志愿者(Y)。Y组负责从脑电图数据中提取P3b空间滤波器,随后将其应用于其他组,这些组在睁开眼睛的休息条件下,没有被要求执行任何任务。在一个月的随访结束时,135名MCI受试者可分为两组:75名稳定MCI (MCI- s,未转化为AD), 60名转化为AD (MCI- c)。P3b空间滤波器是通过功能性源分离(FSS)的信号处理方法构建的,该方法通过使用所有EEG记录通道的加权和来提高信噪比,而不是依赖于单个或一小部分通道。在两组间观察到P3b在休息时的动态有明显的差异。此外,机器学习方法表明,P3b在静止状态下可以正确区分MCI和EC(准确率为80.6%),MCI- s和MCI- c(准确率为74.1%),区分MCI- c和EC的准确率高达93.8%。最后,贝叶斯因子的比较显示,与性能最佳的单电极(Pz)方法相比,P3b动力学方法检测MCI-S和MCI-C之间的组差异的可能性高出138倍。综上所述,我们建议通过空间滤波器测量的P3b可以安全地视为一种简单而敏感的标志物,用于预测从MCI到AD状态的转换,最终与其他非神经生理生物标志物结合,以更精确地定义具有神经病理性阿尔茨海默病特征的痴呆。
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引用次数: 3
A Layered Spiking Neural System for Classification Problems 分类问题的分层尖峰神经系统
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-12 DOI: 10.1142/S012906572250023X
Gexiang Zhang, Xihai Zhang, Haina Rong, Prithwineel Paul, Ming Zhu, Ferrante Neri, Y. Ong
Biological brains have a natural capacity for resolving certain classification tasks. Studies on biologically plausible spiking neurons, architectures and mechanisms of artificial neural systems that closely match biological observations while giving high classification performance are gaining momentum. Spiking neural P systems (SN P systems) are a class of membrane computing models and third-generation neural networks that are based on the behavior of biological neural cells and have been used in various engineering applications. Furthermore, SN P systems are characterized by a highly flexible structure that enables the design of a machine learning algorithm by mimicking the structure and behavior of biological cells without the over-simplification present in neural networks. Based on this aspect, this paper proposes a novel type of SN P system, namely, layered SN P system (LSN P system), to solve classification problems by supervised learning. The proposed LSN P system consists of a multi-layer network containing multiple weighted fuzzy SN P systems with adaptive weight adjustment rules. The proposed system employs specific ascending dimension techniques and a selection method of output neurons for classification problems. The experimental results obtained using benchmark datasets from the UCI machine learning repository and MNIST dataset demonstrated the feasibility and effectiveness of the proposed LSN P system. More importantly, the proposed LSN P system presents the first SN P system that demonstrates sufficient performance for use in addressing real-world classification problems.
生物大脑具有解决某些分类任务的天然能力。生物学上似是而非的尖峰神经元、人工神经系统的结构和机制的研究正在蓬勃发展,这些系统与生物学观察结果密切匹配,同时具有较高的分类性能。脉冲神经P系统(snp系统)是一类基于生物神经细胞行为的膜计算模型和第三代神经网络,已在各种工程应用中得到应用。此外,SN - P系统的特点是具有高度灵活的结构,可以通过模仿生物细胞的结构和行为来设计机器学习算法,而不会像神经网络那样过度简化。基于这方面,本文提出了一种新型的SN P系统,即分层SN P系统(LSN P系统),通过监督学习解决分类问题。提出的LSN - P系统由一个多层网络组成,该网络包含多个加权模糊SN - P系统,这些系统具有自适应权值调整规则。该系统采用特定的升维技术和输出神经元的选择方法来解决分类问题。使用UCI机器学习库和MNIST数据集的基准数据集进行的实验结果证明了所提出的LSN P系统的可行性和有效性。更重要的是,提出的LSN P系统是第一个表现出足够性能的SN P系统,可以用于解决现实世界的分类问题。
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引用次数: 26
Deep Learning Methods for Multi-Channel EEG-Based Emotion Recognition 基于多通道脑电的情绪识别的深度学习方法
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-02 DOI: 10.1142/S0129065722500216
A. Olamat, Pinar Özel, Sema Atasever
Currently, Fourier-based, wavelet-based, and Hilbert-based time-frequency techniques have generated considerable interest in classification studies for emotion recognition in human-computer interface investigations. Empirical mode decomposition (EMD), one of the Hilbert-based time-frequency techniques, has been developed as a tool for adaptive signal processing. Additionally, the multi-variate version strongly influences designing the common oscillation structure of a multi-channel signal by utilizing the common instantaneous concepts of frequency and bandwidth. Additionally, electroencephalographic (EEG) signals are strongly preferred for comprehending emotion recognition perspectives in human-machine interactions. This study aims to herald an emotion detection design via EEG signal decomposition using multi-variate empirical mode decomposition (MEMD). For emotion recognition, the SJTU emotion EEG dataset (SEED) is classified using deep learning methods. Convolutional neural networks (AlexNet, DenseNet-201, ResNet-101, and ResNet50) and AutoKeras architectures are selected for image classification. The proposed framework reaches 99% and 100% classification accuracy when transfer learning methods and the AutoKeras method are used, respectively.
目前,基于傅立叶、小波和希尔伯特的时频技术在人机界面研究中对情绪识别的分类研究产生了相当大的兴趣。经验模式分解(EMD)是一种基于希尔伯特的时频技术,已被开发为自适应信号处理的工具。此外,多变量版本通过利用频率和带宽的通用瞬时概念,强烈影响多通道信号的通用振荡结构的设计。此外,脑电图(EEG)信号对于理解人机交互中的情绪识别观点是非常优选的。本研究旨在通过使用多变量经验模式分解(MEMD)的EEG信号分解来预测情绪检测设计。对于情绪识别,使用深度学习方法对SJTU情绪EEG数据集(SEED)进行分类。选择卷积神经网络(AlexNet、DenseNet-201、ResNet-101和ResNet50)和AutoKeras架构进行图像分类。当使用迁移学习方法和AutoKeras方法时,所提出的框架分别达到99%和100%的分类准确率。
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引用次数: 11
Analysis of fMRI Signals from Working Memory Tasks and Resting-State of Brain: Neutrosophic-Entropy-Based Clustering Algorithm. 工作记忆任务和大脑静息状态的fMRI信号分析:基于中性粒细胞熵的聚类算法。
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-01 Epub Date: 2022-02-17 DOI: 10.1142/S0129065722500125
Pritpal Singh, Marcin Wa Torek, Anna Ceglarek, Magdalena Fąfrowicz, Koryna Lewandowska, Tadeusz Marek, Barbara Sikora-Wachowicz, Paweł Oświȩcimka

This study applies a neutrosophic-entropy-based clustering algorithm (NEBCA) to analyze the fMRI signals. We consider the data obtained from four different working memory tasks and the brain's resting state for the experimental purpose. Three non-overlapping clusters of data related to temporal brain activity are determined and statistically analyzed. Moreover, we used the Uniform Manifold Approximation and Projection (UMAP) method to reduce system dimensionality and present the effectiveness of NEBCA. The results show that using NEBCA, we are able to distinguish between different working memory tasks and resting-state and identify subtle differences in the related activity of brain regions. By analyzing the statistical properties of the entropy inside the clusters, the various regions of interest (ROIs), according to Automated Anatomical Labeling (AAL) atlas crucial for clustering procedure, are determined. The inferior occipital gyrus is established as an important brain region in distinguishing the resting state from the tasks. Moreover, the inferior occipital gyrus and superior parietal lobule are identified as necessary to correct the data discrimination related to the different memory tasks. We verified the statistical significance of the results through the two-sample t-test and analysis of surrogates performed by randomization of the cluster elements. The presented methodology is also appropriate to determine the influence of time of day on brain activity patterns. The differences between working memory tasks and resting-state in the morning are related to a lower index of small-worldness and sleep inertia in the first hours after waking. We also compared the performance of NEBCA to two existing algorithms, KMCA and FKMCA. We showed the advantage of the NEBCA over these algorithms that could not effectively accumulate fMRI signals with higher variability.

本研究采用基于中性粒细胞熵的聚类算法(NEBCA)对fMRI信号进行分析。我们考虑了从四种不同的工作记忆任务和大脑静息状态中获得的数据作为实验目的。确定并统计分析了与颞脑活动相关的三个不重叠的数据簇。此外,我们还利用均匀流形逼近和投影(UMAP)方法降低了系统维数,证明了NEBCA的有效性。结果表明,使用NEBCA能够区分不同的工作记忆任务和静息状态,并识别出脑区相关活动的细微差异。通过分析聚类内部熵的统计性质,根据自动解剖标记(AAL)图谱确定对聚类过程至关重要的各个感兴趣区域(roi)。枕下回是区分静息状态和任务的重要脑区。此外,我们还发现枕下回和顶叶上小叶是纠正不同记忆任务相关的数据辨别所必需的。我们通过双样本t检验和随机化聚类元素的代理分析来验证结果的统计学显著性。所提出的方法也适用于确定一天中的时间对大脑活动模式的影响。工作记忆任务和早晨静息状态之间的差异与醒来后最初几个小时的小世界指数和睡眠惯性较低有关。我们还将NEBCA与两种现有算法KMCA和FKMCA的性能进行了比较。我们展示了NEBCA优于这些算法的优势,这些算法不能有效地积累具有较高可变性的fMRI信号。
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引用次数: 5
An Experimental Study of Neural Approaches to Multi-Hop Inference in Question Answering. 问答中多跳推理的神经方法实验研究。
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-01 Epub Date: 2022-02-16 DOI: 10.1142/S0129065722500113
Patricia Jiménez, Rafael Corchuelo

Question answering aims at computing the answer to a question given a context with facts. Many proposals focus on questions whose answer is explicit in the context; lately, there has been an increasing interest in questions whose answer is not explicit and requires multi-hop inference to be computed. Our analysis of the literature reveals that there is a seminal proposal with increasingly complex follow-ups. Unfortunately, they were presented without an extensive study of their hyper-parameters, the experimental studies focused exclusively on English, and no statistical analysis to sustain the conclusions was ever performed. In this paper, we report on our experience devising a very simple neural approach to address the problem, on our extensive grid search over the space of hyper-parameters, on the results attained with English, Spanish, Hindi, and Portuguese, and sustain our conclusions with statistically sound analyses. Our findings prove that it is possible to beat many of the proposals in the literature with a very simple approach that was likely overlooked due to the difficulty to perform an extensive grid search, that the language does not have a statistically significant impact on the results, and that the empirical differences found among some existing proposals are not statistically significant.

问题回答的目的是在给定事实的背景下计算问题的答案。许多提案关注的问题,其答案在上下文中是明确的;最近,人们对那些答案不明确且需要计算多跳推理的问题越来越感兴趣。我们对文献的分析表明,有一个开创性的建议,越来越复杂的后续行动。不幸的是,他们没有对他们的超参数进行广泛的研究,实验研究只关注英语,也没有进行任何统计分析来支持这些结论。在本文中,我们报告了我们设计一个非常简单的神经方法来解决这个问题的经验,关于我们在超参数空间上的广泛网格搜索,关于用英语、西班牙语、印地语和葡萄牙语获得的结果,并通过统计上合理的分析来支持我们的结论。我们的研究结果证明,有可能用一种非常简单的方法击败文献中的许多提案,这种方法可能由于难以执行广泛的网格搜索而被忽视,语言对结果没有统计上的显著影响,并且在一些现有提案中发现的经验差异在统计上并不显著。
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引用次数: 0
Brain Network Organization Following Post-Stroke Neurorehabilitation. 脑卒中后神经康复的脑网络组织。
IF 8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2022-04-01 Epub Date: 2022-02-09 DOI: 10.1142/S0129065722500095
Antonino Naro, Loris Pignolo, Rocco Salvatore Calabrò

Brain network analysis can offer useful information to guide the rehabilitation of post-stroke patients. We applied functional network connection models based on multiplex-multilayer network analysis (MMN) to explore functional network connectivity changes induced by robot-aided gait training (RAGT) using the Ekso, a wearable exoskeleton, and compared it to conventional overground gait training (COGT) in chronic stroke patients. We extracted the coreness of individual nodes at multiple locations in the brain from EEG recordings obtained before and after gait training in a resting state. We found that patients provided with RAGT achieved a greater motor function recovery than those receiving COGT. This difference in clinical outcome was paralleled by greater changes in connectivity patterns among different brain areas central to motor programming and execution, as well as a recruitment of other areas beyond the sensorimotor cortices and at multiple frequency ranges, contemporarily. The magnitude of these changes correlated with motor function recovery chances. Our data suggest that the use of RAGT as an add-on treatment to COGT may provide post-stroke patients with a greater modification of the functional brain network impairment following a stroke. This might have potential clinical implications if confirmed in large clinical trials.

脑网络分析可以为脑卒中后患者的康复提供有用的信息。我们应用基于多层网络分析(MMN)的功能网络连接模型,探讨了使用可穿戴外骨骼Ekso进行机器人辅助步态训练(RAGT)所引起的功能网络连接变化,并将其与传统的地上步态训练(COGT)进行了比较。我们从静息状态下步态训练前后获得的脑电图记录中提取了大脑多个位置的单个节点的核密度。我们发现,与接受COGT的患者相比,接受RAGT的患者获得了更大的运动功能恢复。这种临床结果的差异与运动编程和执行的不同大脑区域之间的连接模式的更大变化,以及感觉运动皮层以外的其他区域和多个频率范围的补充,是同步的。这些变化的大小与运动功能恢复的机会相关。我们的数据表明,使用RAGT作为COGT的附加治疗可能为卒中后患者提供卒中后功能性脑网络损伤的更大改善。如果在大型临床试验中得到证实,这可能具有潜在的临床意义。
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引用次数: 0
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International Journal of Neural Systems
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