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Making platform recommendations more responsive to the expectations of different types of consumers: a recommendation method based on online reviews 让平台推荐更符合不同类型消费者的期望:基于在线评论的推荐方法
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-24 DOI: 10.1007/s10489-024-05756-9
Xinyu Meng, Meng Zhao, Chenxi Zhang, Yimai Zhang

Optimizing hotel recommendation systems based on consumer preferences is crucial for online hotel booking platforms. The purpose of this study is to reveal differences in hotel recommendation results for different types of consumers by considering consumer expectations. Specifically, this study introduces an online hotel recommendation method that considers three preferences for five types of consumers (business, couples, families, friends, and solo): attribute importance, consumer expectations, and actual hotel attribute performance. Here, consumer expectations are expressed in the form of the 2-tuple. 2-tuple expectations mean that customers can not only express specific demands but also express the probability of meeting the demands. Further, using three different consumer preferences, a similarity measurement model is constructed to recommend hotels for different types of consumers. This study puts this innovative method to the test using a dataset covering 40 hotels in the Beijing area and analyzes the impact of three preferences for different types of consumers on their hotel recommendation results. The method introduced in this study has two management implications. On the one hand, the recommendation method based on consumer preferences can optimize hotel recommendation systems and help online hotel booking platforms improve the accuracy of recommendation results. On the other hand, the proposed method can offer valuable insights to hotel managers, helping them measure their competitiveness and providing guidance for developing service improvement strategies.

根据消费者偏好优化酒店推荐系统对在线酒店预订平台至关重要。本研究旨在通过考虑消费者的期望,揭示不同类型消费者在酒店推荐结果上的差异。具体来说,本研究介绍了一种在线酒店推荐方法,该方法考虑了五种类型消费者(商务、情侣、家庭、朋友和独行)的三种偏好:属性重要性、消费者期望和实际酒店属性表现。在这里,消费者期望以 2 元组的形式表示。2 元组期望意味着顾客不仅可以表达具体需求,还可以表达满足需求的概率。此外,利用三种不同的消费者偏好,构建了一个相似性测量模型,为不同类型的消费者推荐酒店。本研究利用北京地区 40 家酒店的数据集对这一创新方法进行了测试,并分析了不同类型消费者的三种偏好对其酒店推荐结果的影响。本研究引入的方法具有两方面的管理意义。一方面,基于消费者偏好的推荐方法可以优化酒店推荐系统,帮助在线酒店预订平台提高推荐结果的准确性。另一方面,所提出的方法可以为酒店管理者提供有价值的见解,帮助他们衡量自身的竞争力,为制定服务改进战略提供指导。
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引用次数: 0
MHA-DGCLN: multi-head attention-driven dynamic graph convolutional lightweight network for multi-label image classification of kitchen waste MHA-DGCLN:用于厨余垃圾多标签图像分类的多头注意力驱动动态图卷积轻量级网络
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-22 DOI: 10.1007/s10489-024-05819-x
Qiaokang Liang, Jintao Li, Hai Qin, Mingfeng Liu, Xiao Xiao, Dongbo Zhang, Yaonan Wang, Dan Zhang

Kitchen waste images encompass a wide range of garbage categories, posing a typical multi-label classification challenge. However, due to the complex background and significant variations in garbage morphology, there is currently limited research on kitchen waste classification. In this paper, we propose a multi-head attention-driven dynamic graph convolution lightweight network for multi-label classification of kitchen waste images. Firstly, we address the issue of large model parameterization in traditional GCN methods by optimizing the backbone network for lightweight model design. Secondly, to overcome performance losses resulting from reduced model parameters, we introduce a multi-head attention mechanism to mitigate feature information loss, enhancing the feature extraction capability of the backbone network in complex scenarios and improving the correlation between graph nodes. Finally, the dynamic graph convolution module is employed to adaptively capture semantic-aware regions, further boosting recognition capabilities. Experiments conducted on our self-constructed multi-label kitchen waste classification dataset MLKW demonstrate that our proposed algorithm achieves a 8.6% and 4.8% improvement in mAP compared to the benchmark GCN-based methods ML-GCN and ADD-GCN, respectively, establishing state-of-the-art performance. Additionally, extensive experiments on two public datasets, MS-COCO and VOC2007, showcase excellent classification results, highlighting the strong generalization ability of our algorithm.

厨房垃圾图像包含多种垃圾类别,是典型的多标签分类挑战。然而,由于背景复杂、垃圾形态差异大,目前关于厨房垃圾分类的研究还很有限。本文提出了一种多头注意力驱动的动态图卷积轻量级网络,用于厨房垃圾图像的多标签分类。首先,我们通过优化轻量级模型设计的骨干网络,解决了传统 GCN 方法中模型参数化过大的问题。其次,为了克服模型参数减少带来的性能损失,我们引入了多头关注机制来缓解特征信息损失,增强了骨干网络在复杂场景下的特征提取能力,提高了图节点之间的相关性。最后,我们利用动态图卷积模块自适应地捕捉语义感知区域,进一步提高识别能力。在自建的多标签厨房垃圾分类数据集 MLKW 上进行的实验表明,与基于 GCN 的基准方法 ML-GCN 和 ADD-GCN 相比,我们提出的算法的 mAP 分别提高了 8.6% 和 4.8%,达到了最先进的性能。此外,在 MS-COCO 和 VOC2007 这两个公共数据集上进行的大量实验也展示了出色的分类结果,凸显了我们算法强大的泛化能力。
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引用次数: 0
DGTAD: decomposition GAN-based transformer for anomaly detection in multivariate time series data DGTAD:基于分解 GAN 的转换器,用于多元时间序列数据的异常检测
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-18 DOI: 10.1007/s10489-024-05693-7
Zixin Chen, Jiong Yu, Qiyin Tan, Shu Li, XuSheng Du

The advancement of the computer and information industry has led to the emergence of new demands for multivariate time series anomaly detection (MTSAD) models, namely, the necessity for unsupervised anomaly detection that is both efficient and accurate. However, long-term time series data typically encompass a multitude of intricate temporal pattern variations and noise. Consequently, accurately capturing anomalous patterns within such data and establishing precise and rapid anomaly detection models pose challenging problems. In this paper, we propose a decomposition GAN-based transformer for anomaly detection (DGTAD) in multivariate time series data. Specifically, DGTAD integrates a time series decomposition structure into the original transformer model, further decomposing the extracted global features into deep trend information and seasonal information. On this basis, we improve the attention mechanism, which uses decomposed time-dependent features to change the traditional focus of the transformer, enabling the model to reconstruct anomalies of different types in a targeted manner. This makes it difficult for anomalous data to adapt to these changes, thereby amplifying the anomalous features. Finally, by combining the GAN structure and using multiple generators from different perspectives, we alleviate the mode collapse issue, thereby enhancing the model’s generalizability. DGTAD has been validated on nine benchmark datasets, demonstrating significant performance improvements and thus proving its effectiveness in unsupervised anomaly detection.

计算机和信息产业的发展对多变量时间序列异常检测(MTSAD)模型提出了新的要求,即需要高效、准确的无监督异常检测。然而,长期时间序列数据通常包含大量错综复杂的时间模式变化和噪声。因此,准确捕捉此类数据中的异常模式并建立精确、快速的异常检测模型是一个具有挑战性的问题。本文提出了一种基于分解 GAN 的异常检测转换器(DGTAD)。具体来说,DGTAD 将时间序列分解结构整合到原始变换器模型中,进一步将提取的全局特征分解为深度趋势信息和季节信息。在此基础上,我们改进了关注机制,利用分解后的随时间变化的特征来改变变换器的传统关注点,使模型能够有针对性地重建不同类型的异常现象。这使得异常数据难以适应这些变化,从而放大了异常特征。最后,通过结合 GAN 结构和使用来自不同角度的多个生成器,我们缓解了模式崩溃问题,从而增强了模型的普适性。DGTAD 已在九个基准数据集上进行了验证,显示出显著的性能改进,从而证明了它在无监督异常检测中的有效性。
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引用次数: 0
Automated classification of remote sensing satellite images using deep learning based vision transformer 使用基于深度学习的视觉变换器对遥感卫星图像进行自动分类
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-17 DOI: 10.1007/s10489-024-05818-y
Adekanmi Adegun, Serestina Viriri, Jules-Raymond Tapamo

Automatic classification of remote sensing images using machine learning techniques is challenging due to the complex features of the images. The images are characterized by features such as multi-resolution, heterogeneous appearance and multi-spectral channels. Deep learning methods have achieved promising results in the analysis of remote sensing satellite images in the recent past. However, deep learning methods based on convolutional neural networks (CNN) experience difficulties in the analysis of intrinsic objects from satellite images. These techniques have not achieved optimum performance in the analysis of remote sensing satellite images due to their complex features, such as coarse resolution, cloud masking, varied sizes of embedded objects and appearance. The receptive fields in convolutional operations are not able to establish long-range dependencies and lack global contextual connectivity for effective feature extraction. To address this problem, we propose an improved deep learning-based vision transformer model for the efficient analysis of remote sensing images. The proposed model incorporates a multi-head local self-attention mechanism with patch shifting procedure to provide both local and global context for effective extraction of multi-scale and multi-resolution spatial features of remote sensing images. The proposed model is also enhanced by fine-tuning the hyper-parameters by introducing dropout modules and a decay linear learning rate scheduler. This approach leverages local self-attention for learning and extraction of the complex features in satellite images. Four distinct remote sensing image datasets, namely RSSCN, EuroSat, UC Merced (UCM) and SIRI-WHU, were subjected to experiments and analysis. The results show some improvement in the proposed vision transformer on the CNN-based methods.

由于遥感图像具有复杂的特征,因此使用机器学习技术对其进行自动分类具有挑战性。图像具有多分辨率、异质外观和多光谱通道等特征。近年来,深度学习方法在遥感卫星图像分析方面取得了可喜的成果。然而,基于卷积神经网络(CNN)的深度学习方法在分析卫星图像中的固有物体时遇到了困难。由于遥感卫星图像的复杂特征,如分辨率较低、云层遮挡、嵌入物体的大小和外观各不相同,这些技术在分析遥感卫星图像时并未达到最佳性能。卷积操作中的感受野无法建立长程依赖关系,缺乏有效特征提取的全局上下文连接。为解决这一问题,我们提出了一种基于深度学习的改进型视觉变换器模型,用于有效分析遥感图像。所提出的模型结合了多头局部自注意机制和补丁移动程序,为有效提取遥感图像的多尺度和多分辨率空间特征提供了局部和全局上下文。此外,还通过引入辍学模块和衰减线性学习率调度器,对超参数进行微调,从而增强了所提出的模型。这种方法利用局部自我注意来学习和提取卫星图像中的复杂特征。实验和分析了四个不同的遥感图像数据集,即 RSSCN、EuroSat、UC Merced(UCM)和 SIRI-WHU。结果表明,与基于 CNN 的方法相比,所提出的视觉变换器有了一些改进。
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引用次数: 0
Interpretable fracturing optimization of shale oil reservoir production based on causal inference 基于因果推理的页岩油藏生产可解释压裂优化
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-15 DOI: 10.1007/s10489-024-05829-9
Huohai Yang, Yi Li, Chao Min, Jie Yue, Fuwei Li, Renze Li, Xiangshu Chu

The micro- and nanopore throats in shale oil reservoirs are finer than those in conventional oil reservoirs and have a larger specific surface area, potentially resulting in a more pronounced crude oil boundary effect. The prediction of recoverable reserves in shale oil reservoirs is influenced by factors such as geological complexity, fracture characteristics, and multiphase flow characteristics. The application of conventional reservoir seepage theories and engineering methods is challenging because of the unique characteristics of shale formations. A novel computational framework is proposed for the prediction of recoverable reserves and optimization of fracturing parameters by combining machine learning algorithms with causal discovery. Based on the theory of causal inference, the framework discovers the underlying causal relationships of the data, mines the internal laws of the data, and evaluates the causal effects, aiming to build an interpretable machine learning model to better understand the properties of shale oil reservoirs. Compared to traditional methods, the interpretable machine learning model has an outstanding prediction ability, with R2 of 0.94 and average error as low as 8.57%, which is 5.22% lower than that of traditional methods. Moreover, the maximum prediction error is only 21.84%, which is 25.2% smaller than the maximum error of traditional methods. The prediction robustness is good. An accurate prediction of recoverable reserves can be achieved. Furthermore, by integrating particle swarm optimization and TabNet, a fracturing parameter optimization model for shale oil reservoirs is developed. According to an on-site validation, this optimization results in an average increase of 13.45% in recoverable reserves. This study provides an accurate reference for reserve assessment and production design in the exploration and development of shale oil reservoirs.

Graphical Abstract

页岩油藏中的微孔和纳米孔道比常规油藏中的孔道更细,比表面积更大,可能会产生更明显的原油边界效应。页岩油藏可采储量的预测受到地质复杂性、断裂特征和多相流特征等因素的影响。由于页岩地层的独特性,应用常规储层渗流理论和工程方法具有挑战性。通过将机器学习算法与因果发现相结合,提出了一种预测可采储量和优化压裂参数的新型计算框架。该框架以因果推理理论为基础,发现数据的内在因果关系,挖掘数据的内在规律,评估因果效应,旨在建立一个可解释的机器学习模型,从而更好地理解页岩油藏的特性。与传统方法相比,可解释机器学习模型预测能力突出,R2 为 0.94,平均误差低至 8.57%,比传统方法低 5.22%。此外,最大预测误差仅为 21.84%,比传统方法的最大误差小 25.2%。预测鲁棒性良好。可以实现对可采储量的准确预测。此外,通过整合粒子群优化和 TabNet,建立了页岩油藏压裂参数优化模型。根据现场验证,该优化结果使可采储量平均增加了 13.45%。该研究为页岩油藏勘探开发中的储量评估和生产设计提供了准确的参考。
{"title":"Interpretable fracturing optimization of shale oil reservoir production based on causal inference","authors":"Huohai Yang,&nbsp;Yi Li,&nbsp;Chao Min,&nbsp;Jie Yue,&nbsp;Fuwei Li,&nbsp;Renze Li,&nbsp;Xiangshu Chu","doi":"10.1007/s10489-024-05829-9","DOIUrl":"10.1007/s10489-024-05829-9","url":null,"abstract":"<div><p>The micro- and nanopore throats in shale oil reservoirs are finer than those in conventional oil reservoirs and have a larger specific surface area, potentially resulting in a more pronounced crude oil boundary effect. The prediction of recoverable reserves in shale oil reservoirs is influenced by factors such as geological complexity, fracture characteristics, and multiphase flow characteristics. The application of conventional reservoir seepage theories and engineering methods is challenging because of the unique characteristics of shale formations. A novel computational framework is proposed for the prediction of recoverable reserves and optimization of fracturing parameters by combining machine learning algorithms with causal discovery. Based on the theory of causal inference, the framework discovers the underlying causal relationships of the data, mines the internal laws of the data, and evaluates the causal effects, aiming to build an interpretable machine learning model to better understand the properties of shale oil reservoirs. Compared to traditional methods, the interpretable machine learning model has an outstanding prediction ability, with R<sup>2</sup> of 0.94 and average error as low as 8.57%, which is 5.22% lower than that of traditional methods. Moreover, the maximum prediction error is only 21.84%, which is 25.2% smaller than the maximum error of traditional methods. The prediction robustness is good. An accurate prediction of recoverable reserves can be achieved. Furthermore, by integrating particle swarm optimization and TabNet, a fracturing parameter optimization model for shale oil reservoirs is developed. According to an on-site validation, this optimization results in an average increase of 13.45% in recoverable reserves. This study provides an accurate reference for reserve assessment and production design in the exploration and development of shale oil reservoirs.</p><h3>Graphical Abstract</h3><div><figure><div><div><picture><source><img></source></picture></div></div></figure></div></div>","PeriodicalId":8041,"journal":{"name":"Applied Intelligence","volume":"54 24","pages":"13001 - 13017"},"PeriodicalIF":3.4,"publicationDate":"2024-10-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"142600564","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":2,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Long short-term temporal fusion transformer for short-term forecasting of limit order book in China markets 用于中国市场限价订单量短期预测的长短期时间融合变换器
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-15 DOI: 10.1007/s10489-024-05789-0
Yucheng Wu, Shuxin Wang, Xianghua Fu

Short-term forecasting of the Limit Order Book (LOB) is challenging due to market noise. Traditionally, technical analysis using candlestick charts has been effective for market analysis and predictions. Inspired by this, we introduce a novel methodology. First, we preprocess the LOB data into long-term frame data resembling candlestick patterns to reduce noise interference. We then present the Long Short-Term Temporal Fusion Transformer (LSTFT), skillfully integrating both short-term and long-term information to capture complex dependencies and enhance prediction accuracy. Additionally, we propose a Temporal Attention Mechanism (TAM) that effectively distinguishes between long-term and short-term temporal relationships in LOB data. Our experimental results demonstrate the effectiveness of our approach in accurately forecasting the Limit Order Book in the short term.

由于市场噪音,限价订单簿(LOB)的短期预测具有挑战性。传统上,使用蜡烛图进行技术分析对市场分析和预测非常有效。受此启发,我们引入了一种新颖的方法。首先,我们将 LOB 数据预处理成类似蜡烛图形态的长期框架数据,以减少噪音干扰。然后,我们提出了长短期时态融合变换器(LSTFT),巧妙地整合了短期和长期信息,以捕捉复杂的依赖关系,提高预测准确性。此外,我们还提出了一种时态关注机制(TAM),可有效区分 LOB 数据中的长期和短期时态关系。我们的实验结果证明了我们的方法在短期内准确预测限价订单簿方面的有效性。
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引用次数: 0
Attention-based causal representation learning for out-of-distribution recommendation 基于注意力的因果表征学习,用于分布外推荐
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-12 DOI: 10.1007/s10489-024-05835-x
Yuehua Gan, Qianqian Wang, Zhejun Huang, Lili Yang

Out-of-distribution (OOD) recommendations have emerged as a popular field in recommendation systems. Traditional causal OOD recommendation frameworks often overlook shifts in latent user features and the interrelations between different user preferences. To address these issues, this paper proposes an innovative framework called Attention-based Causal OOD Recommendation (ABCOR), which applies the attention mechanism in two distinct ways. For shifts in latent user features, variational attention is employed to analyze shift information and refine the interaction-generation process. Besides, ABCOR integrates a multi-head self-attention layer to infer the complex user preference relationship and enhance recommendation accuracy before calculating post-intervention interaction probabilities. The proposed method has been validated on two public real-world datasets, and the results demonstrate that the proposal significantly outperforms the current state-of-the-art COR methods. Codes are available at https://github.com/YaffaGan/ABCOR.

分布外推荐(OOD)已成为推荐系统中的一个热门领域。传统的因果 OOD 推荐框架往往会忽略潜在用户特征的变化以及不同用户偏好之间的相互关系。为了解决这些问题,本文提出了一种创新框架,称为基于注意力的因果 OOD 推荐(ABCOR),它以两种不同的方式应用注意力机制。对于潜在用户特征的变化,采用变异注意力来分析变化信息并完善交互生成过程。此外,ABCOR 还集成了多头自我注意层,以推断复杂的用户偏好关系,并在计算干预后交互概率之前提高推荐准确性。我们在两个公开的真实数据集上对所提出的方法进行了验证,结果表明该方法明显优于目前最先进的 COR 方法。代码见 https://github.com/YaffaGan/ABCOR。
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引用次数: 0
EU-Net: a segmentation network based on semantic fusion and edge guidance for road crack images EU-Net:基于语义融合和边缘引导的道路裂缝图像分割网络
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-10 DOI: 10.1007/s10489-024-05788-1
Jing Gao, Yiting Gui, Wen Ji, Jun Wen, Yueyu Zhou, Xiaoxiao Huang, Qiang Wang, Chenlong Wei, Zhong Huang, Chuanlong Wang, Zhu Zhu

An enhanced U-shaped network (EU-Net) based on deep semantic information fusion and edge information guidance is studied to improve the segmentation accuracy of road cracks under hazy conditions. The EU-Net comprises multimode feature fusion, side information fusion and edge extraction modules. The feature and side information fusion modules are applied to fuse deep semantic information with multiscale features. The edge extraction module uses the Canny edge detection algorithm to guide and constrain crack edge information from the neural network. The experimental results show that the method in this work is superior to the most widely used crack segmentation methods. Compared with that of the baseline U-Net, the mIoU of the EU-Net increases by 0.59% and 5.7% on the Crack500 and Masonry datasets, respectively.

研究了一种基于深度语义信息融合和边缘信息引导的增强型 U 形网络(EU-Net),以提高雾霾条件下道路裂缝的分割精度。EU 型网络由多模式特征融合、侧边信息融合和边缘提取模块组成。特征融合模块和侧信息融合模块用于将深度语义信息与多尺度特征进行融合。边缘提取模块使用 Canny 边缘检测算法来引导和约束神经网络中的裂缝边缘信息。实验结果表明,该方法优于目前最广泛使用的裂缝分割方法。与基准 U-Net 相比,EU-Net 在 Crack500 和 Masonry 数据集上的 mIoU 分别提高了 0.59% 和 5.7%。
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引用次数: 0
SCSformer: cross-variable transformer framework for multivariate long-term time series forecasting via statistical characteristics space SCSformer:通过统计特征空间进行多变量长期时间序列预测的交叉变量变换器框架
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-09 DOI: 10.1007/s10489-024-05764-9
Yongfeng Su, Juhui Zhang, Qiuyue Li

Deep learning-based models have emerged as promising tools for multivariate long-term time series forecasting. These models are finely structured to perform feature extraction from time series, greatly improving the accuracy of multivariate long-term time series forecasting. However, to the best of our knowledge, few scholars have focused their research on preprocessing time series, such as analyzing their periodic distributions or analyzing their values and volatility at the global level. In fact, properly preprocessing time series can often significantly improve the accuracy of multivariate long-term time series forecasting. In this paper, using the cross-variable transformer as a basis, we introduce a statistical characteristics space fusion module to preprocess the time series, this module takes the mean and standard deviation values of the time series during different periods as part of the model’s inputs and greatly improves the model’s performance. The Statistical Characteristics Space Fusion Module consists of a statistical characteristics space, which represents the mean and standard deviation values of a time series under different periods, and a convolutional neural network, which is used to fuse the original time series with the corresponding mean and standard deviation values. Moreover, to extract the linear dependencies of the time series variables more efficiently, we introduce three different linear projection layers at different nodes of the model, which we call the Multi-level Linear Projection Module. This new methodology, called the SCSformer, includes three innovations. First, we propose a Statistical Characteristics Space Fusion Module, which is capable of calculating the statistical characteristics space of the time series and fusing the original time series with a specific element of the statistical characteristics space as inputs of the model. Second, we introduce a Multi-level Linear Projection Module to capture linear dependencies of time series from different stages of the model. Third, we combine the Statistical Characteristics Space Fusion Module, the Multi-level Linear Projection Module, the Reversible Instance Normalization and the Cross-variable Transformer proposed in Client in a certain order to generate the SCSformer. We test this combination on nine real-world time series datasets and achieve optimal results on eight of them. Our code is publicly available at https://github.com/qiuyueli123/SCSformer.

基于深度学习的模型已成为多变量长期时间序列预测的有前途的工具。这些模型结构精细,可以从时间序列中提取特征,大大提高了多元长期时间序列预测的准确性。然而,据我们所知,很少有学者将研究重点放在时间序列的预处理上,如分析其周期性分布或在全局层面分析其数值和波动性。事实上,对时间序列进行适当的预处理往往能显著提高多元长期时间序列预测的准确性。本文以交叉变量变换器为基础,引入统计特征空间融合模块对时间序列进行预处理,该模块将时间序列在不同时期的均值和标准差作为模型输入的一部分,大大提高了模型的性能。统计特征空间融合模块由统计特征空间和卷积神经网络组成,前者表示不同时期时间序列的均值和标准差,后者用于将原始时间序列与相应的均值和标准差进行融合。此外,为了更有效地提取时间序列变量的线性依赖关系,我们在模型的不同节点引入了三个不同的线性投影层,我们称之为多层线性投影模块。这种名为 SCSformer 的新方法包括三项创新。首先,我们提出了统计特征空间融合模块,该模块能够计算时间序列的统计特征空间,并将原始时间序列与统计特征空间的特定元素融合,作为模型的输入。其次,我们引入了多级线性投影模块,以捕捉模型中不同阶段时间序列的线性依赖关系。第三,我们将统计特征空间融合模块、多级线性投影模块、可逆实例归一化和客户端中提出的交叉变量变换器按一定顺序结合起来,生成 SCSformer。我们在九个真实世界的时间序列数据集上测试了这一组合,并在其中八个数据集上取得了最佳结果。我们的代码可在 https://github.com/qiuyueli123/SCSformer 公开获取。
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引用次数: 0
Siam2C: Siamese visual segmentation and tracking with classification-rank loss and classification-aware Siam2C:连体视觉分割与跟踪,带分类等级损失和分类感知
IF 3.4 2区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-08 DOI: 10.1007/s10489-024-05840-0
Bangjun Lei, Qishuai Ding, Weisheng Li, Hao Tian, Lifang Zhou

Siamese visual trackers based on segmentation have garnered considerable attention due to their high accuracy. However, these trackers rely solely on simple classification confidence to distinguish between positive and negative samples (foreground or background), lacking more precise discrimination capabilities for objects. Moreover, the backbone network excels at focusing on local information during feature extraction, failing to capture the long-distance contextual semantics crucial for classification. Consequently, these trackers are highly susceptible to interference during actual tracking, leading to erroneous object segmentation and subsequent tracking failures, thereby compromising robustness. For this purpose, we propose a Siamese visual segmentation and tracking network with classification-rank loss and classification-aware (Siam2C). We design a classification-rank loss (CRL) algorithm to enlarge the margin between positive and negative samples, ensuring that positive samples are ranked higher than negative ones. This optimization enhances the network’s ability to learn from positive and negative samples, allowing the tracker to accurately select the object for segmentation and tracking rather than being misled by interfering targets. Additionally, we design a classification-aware attention module (CAM), which employs spatial and channel self-attention mechanisms to capture long-distance dependencies between different positions in the feature map. The module enhances the feature representation capability of the backbone network, providing richer global contextual semantic information for the tracking network’s classification decisions. Extensive experiments on the VOT2016, VOT2018, VOT2019, OTB100, UAV123, GOT-10k, DAVIS2016, and DAVIS2017 datasets demonstrate the outstanding performance of Siam2C.

基于分割的连体视觉跟踪器因其高精度而备受关注。然而,这些跟踪器仅仅依靠简单的分类置信度来区分正负样本(前景或背景),缺乏对物体更精确的辨别能力。此外,骨干网络在特征提取过程中擅长关注局部信息,而无法捕捉对分类至关重要的远距离上下文语义。因此,这些跟踪器在实际跟踪过程中极易受到干扰,导致错误的物体分割和随后的跟踪失败,从而降低了鲁棒性。为此,我们提出了一种具有分类等级损失和分类感知功能的连体视觉分割和跟踪网络(Siam2C)。我们设计了一种分类等级损失(CRL)算法,以扩大正样本和负样本之间的差值,确保正样本的等级高于负样本。这一优化增强了网络从正样本和负样本中学习的能力,使跟踪器能够准确地选择对象进行分割和跟踪,而不会被干扰目标所误导。此外,我们还设计了分类感知注意力模块(CAM),该模块采用空间和通道自注意力机制来捕捉特征图中不同位置之间的长距离依赖关系。该模块增强了主干网络的特征表示能力,为跟踪网络的分类决策提供了更丰富的全局上下文语义信息。在 VOT2016、VOT2018、VOT2019、OTB100、UAV123、GOT-10k、DAVIS2016 和 DAVIS2017 数据集上进行的大量实验证明了 Siam2C 的出色性能。
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引用次数: 0
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