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BISFT- two-dimensional breakdown clinical image seperation and fusion technique using CNN BISFT--利用 CNN 的二维分解临床图像分离与融合技术
Pub Date : 2024-03-22 DOI: 10.3233/jifs-239695
G. Pradeepkumar, S. Kavitha
To provide the best possible performance in precisely segmenting clinical images, several approaches are used. Convolutional neural networks are one method used in it to extract its features, which combine several models with several additional methods. It also improves the efficiency of generalisation between categorised and uncategorized image categories. The method proposed combines multi-style image fusion with two-dimensional fracture image representation. The photographs on this page have been updated with a variety of images to improve concentration sharing and achieve the desired visual look. The border detection algorithm is then used to extract the exact border of the image from the contrast extended images. It will then be divided into basic and comprehensive layers. The fused image was then created using augmented end layers.
为了提供精确分割临床图像的最佳性能,使用了多种方法。卷积神经网络是其中一种提取特征的方法,它结合了多种模型和多种附加方法。它还提高了已分类和未分类图像类别之间的泛化效率。所提出的方法将多风格图像融合与二维断裂图像表示相结合。本页面上的照片已更新为多种图像,以提高集中共享度,实现理想的视觉效果。然后使用边界检测算法从对比度扩展图像中提取图像的准确边界。然后将其分为基本层和综合层。然后使用增强端层创建融合图像。
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引用次数: 0
Automated license plate authentication framework using multi-view vehicle images 使用多视角车辆图像的车牌自动认证框架
Pub Date : 2024-03-22 DOI: 10.3233/jifs-230607
M. A. Ganesh, S. Saravana Perumaal, S.M. Gomathi Sankar
The current framework for detecting Fake License Plates (FLP) in real-time is not robust enough for patrol teams. The objective of this paper is to develop a robust license plate authentication framework, based on the Vehicle Make and Model Recognition (VMMR) and the License Plate Recognition (LPR) algorithms that is implementable at the edge devices. The contributions of this paper are (i) Development of license plate database for 547 Indian cars, (ii) Development of an image dataset with 3173 images of 547 Indian cars in 8 classes, (iii) Development of an ensemble model to recognize vehicle make and model from frontal, rear, and side images, and (iv) Development of a framework to authenticate the license plates with frontal, rear, and side images. The proposed ensemble model is compared with the state-of-the-art networks from the literature. Among the implemented networks for VMMR, the Ensembling model with a size of 303.2 MB achieves the best accuracy of 89% . Due to the limited memory size, Easy OCR is chosen to recognize license plate. The total size of the authentication framework is 308 MB. The performance of the proposed framework is compared with the literature. According to the results, the proposed framework enhances FLP recognition due to the recognition of vehicles from side images. The dataset is made public at https://www.kaggle.com/ganeshmailecture/datasets.
目前用于实时检测假车牌(FLP)的框架对于巡逻队来说不够强大。本文的目的是基于车辆制造商和型号识别(VMMR)和车牌识别(LPR)算法,开发一种可在边缘设备上实现的强大的车牌认证框架。本文的贡献在于:(i) 开发了 547 辆印度汽车的车牌数据库;(ii) 开发了一个包含 8 类 547 辆印度汽车的 3173 张图像的图像数据集;(iii) 开发了一个集合模型,用于从正面、背面和侧面图像识别车辆品牌和型号;以及 (iv) 开发了一个框架,用于通过正面、背面和侧面图像验证车牌。建议的集合模型与文献中最先进的网络进行了比较。在已实现的 VMMR 网络中,303.2 MB 大小的集合模型达到了 89% 的最佳准确率。由于内存容量有限,因此选择 Easy OCR 来识别车牌。认证框架的总大小为 308 MB。建议框架的性能与文献进行了比较。结果表明,由于可以从侧面图像识别车辆,因此建议的框架增强了 FLP 识别能力。数据集在 https://www.kaggle.com/ganeshmailecture/datasets 上公开。
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引用次数: 0
Dual generators and dual discriminators generative adversarial network for video anomaly detection 用于视频异常检测的双生成器和双判别器生成式对抗网络
Pub Date : 2024-03-22 DOI: 10.3233/jifs-237831
Kang Chen, Changming Song, Dongxu Cheng, Hao Li
Video anomaly detection (VAD) has garnered substantial attention from researchers due to its broad applications, including fire detection, drop detection, and vibration detection. In the current context of VAD, existing methods prioritize detection efficiency but overlook the impact of motion and appearance information. Additionally, achieving accurate predictions while retaining motion and appearance information poses a significant challenge. This paper proposes a novel semi-supervised method for VAD based on Generative Adversarial Network (GAN) structures with dual generators and dual discriminators, namely Dual-GAN. The future frame generator utilizes an improved encoder-decoder network to preserve more spatial information. Motion information for the future flow generator is obtained by estimating optical flow between reconstruction frames, complementing the optical flow between prediction frames. The introduction of a frame discriminator and a motion discriminator against the frame generator enhances the realism of prediction frames, which facilitates the identification of unexpected abnormal events. This method significantly outperforms comparative approaches in synthesizing video frames and predicting future flows, showcasing its effectiveness in handling diverse video data. Extensive experiments are performed on four publicly available datasets to ensure a comprehensive evaluation of the model performance. Further exploration could include refining the model architecture, exploring additional datasets, and adapting the methodology to specific application domains.
视频异常检测(VAD)因其广泛的应用而备受研究人员的关注,包括火灾检测、跌落检测和振动检测。在当前的 VAD 环境下,现有方法优先考虑检测效率,却忽视了运动和外观信息的影响。此外,在保留运动和外观信息的同时实现准确预测也是一个巨大的挑战。本文提出了一种基于具有双生成器和双判别器的生成对抗网络(GAN)结构的新型半监督 VAD 方法,即 Dual-GAN。未来帧生成器利用改进的编码器-解码器网络来保留更多的空间信息。未来流生成器的运动信息是通过估计重建帧之间的光流获得的,这是对预测帧之间光流的补充。针对帧生成器引入的帧判别器和运动判别器增强了预测帧的真实性,从而有助于识别意外异常事件。该方法在合成视频帧和预测未来流量方面明显优于其他方法,展示了其处理各种视频数据的有效性。我们在四个公开数据集上进行了广泛的实验,以确保对模型性能进行全面评估。进一步的探索可包括完善模型架构、探索其他数据集,以及将该方法调整到特定应用领域。
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引用次数: 0
Pedestrian tracking method based on S-YOFEO framework in complex scene 复杂场景中基于 S-YOFEO 框架的行人跟踪方法
Pub Date : 2024-03-22 DOI: 10.3233/jifs-237208
Wenshun Sheng, Jiahui Shen, Qiming Huang, Zhixuan Liu, Zihao Ding
A real-time stable multi-target tracking method based on the enhanced You Only Look Once-v8 (YOLOv8) and the optimized Simple Online and Realtime Tracking with a Deep association metric (DeepSORT) for multi-target tracking (S-YOFEO) is proposed with the aim of addressing the issue of target ID transformation and loss caused by the increase of practical background complexity. For the purpose of further enhancing the representation of small-scale features, a small target detection head is first introduced to the detection layer of YOLOv8 in this paper with the aim of collecting more detailed information by increasing the detection resolution of YOLOv8. Secondly, the Omni-Scale Network (OSNet) feature extraction network is implemented to enable accurate and efficient fusion of the extracted complex and comparable feature information, taking into account the restricted computational power of DeepSORT’s original feature extraction network. Again, a novel adaptive forgetting Kalman filter algorithm (FSA) is devised to enhance the precision of model prediction and the effectiveness of parameter updates to adjust to the uncertain movement speed and trajectory of pedestrians in real scenarios. Following that, an accurate and stable association matching process is obtained by substituting Efficient-Intersection over Union (EIOU) for Complete-Intersection over Union (CIOU) in DeepSORT to boost the convergence speed and matching effect during association matching. Last but not least, One-Shot Aggregation (OSA) is presented as the trajectory feature extractor to deal with the various noise interferences in the complex scene. OSA is highly sensitive to information of different scales, and its one-time aggregation property substantially decreases the computational overhead of the model. According to the trial results, S-YOFEO has made some developments as its precision can reach 78.2% and its speed can reach 56.0 frames per second (FPS).
本文提出了一种基于增强型 "你只看一次-v8"(YOLOv8)的实时稳定多目标跟踪方法,以及经过优化的多目标跟踪深度关联指标(DeepSORT)简单在线实时跟踪方法(S-YOFEO),旨在解决实际背景复杂度增加导致的目标 ID 变换和丢失问题。为了进一步增强小尺度特征的表示能力,本文首先在 YOLOv8 的检测层中引入了小目标检测头,目的是通过提高 YOLOv8 的检测分辨率来收集更多细节信息。其次,考虑到 DeepSORT 原始特征提取网络的计算能力有限,本文采用了全尺度网络(Omni-Scale Network,OSNet)特征提取网络,以便准确高效地融合提取的复杂可比特征信息。此外,还设计了一种新颖的自适应遗忘卡尔曼滤波算法(FSA),以提高模型预测的精度和参数更新的有效性,从而适应真实场景中行人不确定的移动速度和轨迹。然后,在 DeepSORT 中用 "有效交集联合"(EIOU)代替 "完全交集联合"(CIOU),以提高关联匹配的收敛速度和匹配效果,从而获得精确稳定的关联匹配过程。最后,单次聚合(OSA)作为轨迹特征提取器被提出来处理复杂场景中的各种噪声干扰。OSA 对不同尺度的信息高度敏感,其一次性聚合的特性大大降低了模型的计算开销。根据试验结果,S-YOFEO 的精度达到 78.2%,速度达到每秒 56.0 帧(FPS),取得了一定的进展。
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引用次数: 0
A study on the impact of full eco-smart home on the cognitive load and perceptual needs of elderly users 全生态智能家居对老年用户认知负荷和感知需求的影响研究
Pub Date : 2024-03-22 DOI: 10.3233/jifs-237212
Jinsong Huang, Hecheng Hou, Xiaoying Li, Ziyi Zhang, Qi Jia
In the context of the digital era, the factors influencing the cognitive load of the full ecological smart home on the elderly are mostly interconnected. Most existing studies have conducted single correlation analyses, ignoring the fact that cognitive load is the result among multiple interactions of multiple factors. Furthermore, the color, material and Finishing of the product design can also impact on the user’s perceptual needs. Therefore, exploring the grouping dynamics of cognitive load and users’ perceptual needs for color (C), material (M), and Finishing (F) of smart products can provide insights for inclusive design of smart homes. The article analyzes the asymmetric multiple concurrent causal effects of full ecological smart homes on the cognitive load of the elderly from a histological perspective using fuzzy set Qualitative Comparative Analysis (fsQCA) based on the four elements of Innovation Diffusion Theory. At the same time, principal component analysis and quantitative theory I class method are used to explore the quantitative relationship between color, material, Finishing and users’ perceptual imagery of the product. The results of the study showed that there were no necessary conditions leading to high or low cognitive load in the fsQCA analysis, indicating that the problem was the result of the interaction of multiple conditions, and the final analysis yielded three histological pathways leading to low cognitive load and one pathway leading to high load in older adults. Moreover, the study identifies the combination of colors, materials, and finishes that best represent user preferences. This study establishes a dialogue between theory, results, and cases in analyzing of the group dynamics of the impact of full ecological smart homes on the cognitive load of the elderly. It provides a theoretical basis for the development of digital inclusion enhancement strategies.
在数字化时代背景下,影响全生态智能家居对老年人认知负荷的因素大多是相互关联的。现有研究大多进行单一的相关性分析,忽略了认知负荷是多种因素相互作用的结果。此外,产品设计的颜色、材料和表面处理也会影响用户的感知需求。因此,探索认知负荷与用户对智能产品的颜色(C)、材料(M)和表面处理(F)的感知需求的分组动态,可以为智能家居的包容性设计提供启示。文章基于创新扩散理论的四个要素,采用模糊集定性比较分析法(fsQCA),从组学角度分析了全生态智能家居对老年人认知负荷的非对称多重并发因果效应。同时,采用主成分分析法和定量理论I类法,探讨色彩、材质、Finishing与用户对产品的感知意象之间的定量关系。研究结果表明,在fsQCA分析中,并不存在导致认知负荷高或低的必要条件,说明问题是多种条件相互作用的结果,最终分析得出三条导致老年人认知负荷低的组学途径和一条导致认知负荷高的途径。此外,研究还确定了最能代表用户偏好的颜色、材料和表面处理的组合。这项研究在理论、结果和案例之间建立了对话,分析了全生态智能家居对老年人认知负荷影响的群体动态。它为制定数字包容增强战略提供了理论依据。
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引用次数: 0
Learning rate burst for superior SGDM and AdamW integration 卓越的 SGDM 和 AdamW 整合的学习率突变
Pub Date : 2024-03-22 DOI: 10.3233/jifs-239157
Zhiwei Lin, Songchuan Zhang, Yiwei Zhou, Haoyu Wang, Shilei Wang
Current mainstream deep learning optimization algorithms can be classified into two categories: non-adaptive optimization algorithms, such as Stochastic Gradient Descent with Momentum (SGDM), and adaptive optimization algorithms, like Adaptive Moment Estimation with Weight Decay (AdamW). Adaptive optimization algorithms for many deep neural network models typically enable faster initial training, whereas non-adaptive optimization algorithms often yield better final convergence. Our proposed Adaptive Learning Rate Burst (Adaburst) algorithm seeks to combine the strengths of both categories. The update mechanism of Adaburst incorporates elements from AdamW and SGDM, ensuring a seamless transition between the two. Adaburst modifies the learning rate of the SGDM algorithm based on a cosine learning rate schedule, particularly when the algorithm encounters an update bottleneck, which is called learning rate burst. This approach helps the model to escape current local optima more effectively. The results of the Adaburst experiment underscore its enhanced performance in image classification and generation tasks when compared with alternative approaches, characterized by expedited convergence and elevated accuracy. Notably, on the MNIST, CIFAR-10, and CIFAR-100 datasets, Adaburst attained accuracies that matched or exceeded those achieved by SGDM. Furthermore, in training diffusion models on the DeepFashion dataset, Adaburst achieved convergence in fewer epochs than a meticulously calibrated AdamW optimizer while avoiding abrupt blurring or other training instabilities. Adaburst augmented the final training set accuracy on the MNIST, CIFAR-10, and CIFAR-100 datasets by 0.02%, 0.41%, and 4.18%, respectively. In addition, the generative model trained on the DeepFashion dataset demonstrated a 4.62-point improvement in the Frechet Inception Distance (FID) score, a metric for assessing generative model quality. Consequently, this evidence suggests that Adaburst introduces an innovative optimization algorithm that simultaneously updates AdamW and SGDM and incorporates a learning rate burst mechanism. This mechanism significantly enhances deep neural networks’ training speed and convergence accuracy.
目前主流的深度学习优化算法可分为两类:非自适应优化算法(如带动量的随机梯度下降算法(SGDM))和自适应优化算法(如带权重衰减的自适应动量估计算法(AdamW))。对于许多深度神经网络模型来说,自适应优化算法通常能加快初始训练速度,而非自适应优化算法通常能产生更好的最终收敛效果。我们提出的 Adaptive Learning Rate Burst(Adaburst)算法试图结合这两类算法的优势。Adaburst 的更新机制融合了 AdamW 和 SGDM 的元素,确保了两者之间的无缝过渡。Adaburst 根据余弦学习率计划修改 SGDM 算法的学习率,尤其是在算法遇到更新瓶颈时,这被称为学习率突变。这种方法有助于模型更有效地摆脱当前的局部最优状态。Adaburst 实验的结果表明,与其他方法相比,Adaburst 在图像分类和生成任务中的性能更强,收敛速度更快,准确率更高。值得注意的是,在 MNIST、CIFAR-10 和 CIFAR-100 数据集上,Adaburst 的准确率达到或超过了 SGDM 的准确率。此外,在 DeepFashion 数据集上训练扩散模型时,Adaburst 比精心校准的 AdamW 优化器用更少的历时就达到了收敛,同时避免了突然的模糊或其他训练不稳定性。Adaburst 在 MNIST、CIFAR-10 和 CIFAR-100 数据集上的最终训练集准确率分别提高了 0.02%、0.41% 和 4.18%。此外,在 DeepFashion 数据集上训练的生成模型的 Frechet Inception Distance(FID)得分提高了 4.62 分,FID 是评估生成模型质量的指标。因此,这些证据表明,Adaburst 引入了一种创新的优化算法,可同时更新 AdamW 和 SGDM,并结合了学习率突发机制。这种机制大大提高了深度神经网络的训练速度和收敛精度。
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引用次数: 0
Next generation mobile edge computing wireless sensor network based Japanese remote interactive practical teaching platform 基于下一代移动边缘计算无线传感器网络的日本远程互动实践教学平台
Pub Date : 2024-03-22 DOI: 10.3233/jifs-238196
HongJu Yan
To solve the problem of lack of practice in Japanese teaching, a design of a Japanese remote interactive practical teaching platform based on the modern edge computing-based wireless sensor network is proposed. In terms of hardware, it mainly refits interactive mobile edge computing, wireless sensor networks, microprocessors, and other equipment, and adjusts the interface circuit. The Japanese teaching data and relevant Japanese teaching resources generated in the process of Japanese Teaching of practical courses are stored in the corresponding database table according to a certain format, and the logical relationship between database tables is used to update the database. The software function of the platform is designed with the support of a database and hardware equipment. It consists of multiple modules, including platform user roles, interactive practical teaching and management, practical resource management and distribution, practice project information release, practice investigation statistics, and platform operation safety. Through the above design, the operation of a Japanese remote interactive practical teaching platform is realized. The test results show that there is no significant difference in the function realization of the design platform, but when multiple users are online at the same time, the interaction performance of the design platform is stronger, that is, the operation performance of the platform has obvious advantages.
为解决日语教学缺乏实践的问题,提出了基于现代边缘计算的无线传感网络的日语远程互动实践教学平台的设计方案。在硬件方面,主要改装了交互式移动边缘计算、无线传感器网络、微处理器等设备,调整了接口电路。将实践课程日语教学过程中产生的日语教学数据和相关日语教学资源按照一定的格式存储在相应的数据库表中,并利用数据库表之间的逻辑关系对数据库进行更新。平台的软件功能设计以数据库和硬件设备为支撑。由平台用户角色、交互式实践教学与管理、实践资源管理与发布、实践项目信息发布、实践调查统计、平台运行安全等多个模块组成。通过以上设计,实现了日语远程互动实践教学平台的运行。测试结果表明,设计平台的功能实现无明显差异,但当多个用户同时在线时,设计平台的交互性能更强,即平台的运行性能具有明显优势。
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引用次数: 0
WLEDD: Legal judgment prediction with legal feature word subgraph label-embedding and dual-knowledge distillation WLEDD:利用法律特征词子图标签嵌入和双重知识提炼进行法律判决预测
Pub Date : 2024-03-22 DOI: 10.3233/jifs-237323
Xiao Wei, Yidian Lin
Legal judgment prediction(LJP) has achieved remarkable results. However, existing methods still face problems such as difficulties in obtaining key feature words for charges, which impose limitations on the improvement of prediction results. To this end, we propose a legal judgment prediction model with legal feature Word subgraph Label-Embedding and Dual-knowledge Distillation(WLEDD). Compared with traditional methods, our method has two contributions: (1) To mitigate the impact of overly sparse tail class data and high similarity text representations, we capture the critical features related to the charges by fusing LDA and legal feature word subgraphs. Then we encode them as label information to obtain highly distinguished representations of legal documents. (2) To solve the problem of high difficulty in some subtasks in LJP, we perform subtask-oriented compression of models to construct a student model with lower complexity and higher accuracy through dual knowledge distillation. Moreover, we exploit the logical association between the subtasks to constrain the labels of articles by charge prediction results. It greatly reduces the difficulty of article prediction. Experimental results on four datasets show that our approach significantly outperforms the baseline models. Compared with the state-of-art method, the F1 value of WLEDD for charge prediction has increased by an average of 2.57% . For article prediction, the F1 value has increased by an average of 1.09% . In addition, we demonstrate its effectiveness through ablation experiments and analytical experiments.
法律判决预测(LJP)已经取得了显著的成果。然而,现有方法仍然面临着指控关键特征词获取困难等问题,限制了预测结果的改进。为此,我们提出了一种法律特征字子图标签嵌入和双知识蒸馏(WLEDD)的法律判决预测模型。与传统方法相比,我们的方法有两个贡献:(1) 为了减轻尾类数据过于稀疏和高相似度文本表征的影响,我们通过融合 LDA 和法律特征词子图来捕捉与指控相关的关键特征。然后,我们将其编码为标签信息,从而获得高区分度的法律文件表示。(2) 为解决 LJP 中某些子任务的高难度问题,我们对模型进行了面向子任务的压缩,通过双重知识提炼构建出复杂度更低、准确度更高的学生模型。此外,我们还利用子任务之间的逻辑关联,通过收费预测结果来约束文章标签。这大大降低了文章预测的难度。在四个数据集上的实验结果表明,我们的方法明显优于基线模型。与最先进的方法相比,WLEDD 在电荷预测方面的 F1 值平均提高了 2.57%。在文章预测方面,F1 值平均提高了 1.09%。此外,我们还通过烧蚀实验和分析实验证明了它的有效性。
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引用次数: 0
A mathematical model of temperature distribution along the length of the oil production well 采油井沿线温度分布数学模型
Pub Date : 2024-03-22 DOI: 10.3233/jifs-219366
Shahnaz N. Shahbazova, Ab.G. Rzayev, R. Asadova, K.M. Jabiyev
The paper gives a systems analysis in the field of heat transfer and temperature distribution (TD) along the length of oil production wells (OPW). The analysis shows that the existing mathematical models are suitable only for determining TD along the length of casing string (CS) and are not suitable for determining TD along the length of the tubing run, since the existence of the interfacial (between the CS and the tubing) annulus of the fluid and gas layers with heat capacity and thermal conductivity that differ significantly from the heat capacity and thermal conductivity of rocks surrounding the CS. Given the above, mathematical models taking into account the impact of the fluid and gas layers in the annulus on the heat transfer from the upward fluid flow to the tubing wall and from the wall to the interfacial annulus are developed. To ensure the technological effectiveness of the obtained model, formulas for quantitative estimation of the heat transfer of the fluid flow into the surrounding environment are given.
本文对采油井(OPW)沿线的传热和温度分布(TD)进行了系统分析。分析表明,现有的数学模型仅适用于确定套管串(CS)长度上的温度分布,而不适用于确定油管运行长度上的温度分布,因为(CS 和油管之间的)环形界面上存在流体层和气体层,其热容量和导热系数与 CS 周围岩石的热容量和导热系数相差很大。鉴于上述情况,考虑到环形空间中的流体层和气体层对从上行流体流到油管壁以及从油管壁到界面环形空间的热传递的影响,建立了数学模型。为确保所获模型的技术有效性,给出了定量估算流体流向周围环境传热的公式。
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引用次数: 0
A novel Prophet model based on Gaussian linear fuzzy information granule for long-term time series prediction1 基于高斯线性模糊信息粒的新型先知模型用于长期时间序列预测1
Pub Date : 2024-03-22 DOI: 10.3233/jifs-230313
Hong Yang, Lina Wang
The paper focuses on how to improve the prediction accuracy of time series and the interpretability of prediction results. First, a novel Prophet model based on Gaussian linear fuzzy approximate representation (GF-Prophet) is proposed for long-term prediction, which uniformly predicts the data with consistent trend characteristics. By taking Gaussian linear fuzzy information granules as inputs and outputs, GF-Prophet predicts with significantly smaller cumulative error. Second, noticing that trend extraction affects prediction accuracy seriously, a novel granulation modification algorithm is proposed to merge adjacent information granules that do not have significant differences. This is the first attempt to establish Prophet based on fuzzy information granules to predict trend characteristics. Experiments on public datasets show that the introduction of Gaussian linear fuzzy information granules significantly improves prediction performance of traditional Prophet model. Compared with other classical models, GF-Prophet has not only higher prediction accuracy, but also better interpretability, which can clearly give the change information, fluctuation amplitude and duration of a certain trend in the future that investors actually pay attention to.
本文的重点是如何提高时间序列的预测精度和预测结果的可解释性。首先,针对长期预测提出了一种基于高斯线性模糊近似表示的新型先知模型(GF-Prophet),它能均匀地预测具有一致趋势特征的数据。通过将高斯线性模糊信息颗粒作为输入和输出,GF-Prophet 预测的累积误差明显更小。其次,注意到趋势提取会严重影响预测精度,提出了一种新颖的粒度修正算法,以合并差异不大的相邻信息粒度。这是首次尝试基于模糊信息颗粒建立先知来预测趋势特征。在公共数据集上的实验表明,高斯线性模糊信息颗粒的引入显著提高了传统先知模型的预测性能。与其他经典模型相比,GF-Prophet 不仅具有更高的预测精度,而且具有更好的可解释性,能够清晰地给出投资者实际关注的某一趋势在未来的变化信息、波动幅度和持续时间。
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引用次数: 0
期刊
Journal of Intelligent & Fuzzy Systems
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