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Social Media Data Analysis:A Causal Inference Based Study of User Behavior Patterns
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作者 Liangkeyi SUN 《计算社会科学》 2025年第1期37-53,共17页
This study aims to conduct an in-depth analysis of social media data using causal inference methods to explore the underlying mechanisms driving user behavior patterns.By leveraging large-scale social media datasets,t... This study aims to conduct an in-depth analysis of social media data using causal inference methods to explore the underlying mechanisms driving user behavior patterns.By leveraging large-scale social media datasets,this research develops a systematic analytical framework that integrates techniques such as propensity score matching,regression analysis,and regression discontinuity design to identify the causal effects of content characteristics,user attributes,and social network structures on user interactions,including clicks,shares,comments,and likes.The empirical findings indicate that factors such as sentiment,topical relevance,and network centrality have significant causal impacts on user behavior,with notable differences observed among various user groups.This study not only enriches the theoretical understanding of social media data analysis but also provides data-driven decision support and practical guidance for fields such as digital marketing,public opinion management,and digital governance. 展开更多
关键词 Social Media data Causal Inference user Behavior Patterns Propensity Score Matching DISCONTINUITY data Preprocessing
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The use of high-frequency data in cryptocurrency research:a meta-review of literature with bibliometric analysis
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作者 Muhammad Anas Syed Jawad Hussain Shahzad Larisa Yarovaya 《Financial Innovation》 2024年第1期1431-1461,共31页
As the crypto-asset ecosystem matures,the use of high-frequency data has become increasingly common in decentralized finance literature.Using bibliometric analysis,we characterize the existing cryptocurrency literatur... As the crypto-asset ecosystem matures,the use of high-frequency data has become increasingly common in decentralized finance literature.Using bibliometric analysis,we characterize the existing cryptocurrency literature that employs high-frequency data.We highlighted the most influential authors,articles,and journals based on 189 articles from the Scopus database from 2015 to 2022.This approach enables us to identify emerging trends and research hotspots with the aid of co-citation and cartographic analyses.It shows knowledge expansion through authors’collaboration in cryptocurrency research with co-authorship analysis.We identify four major streams of research:(i)return prediction and measurement of cryptocurrency volatility,(ii)(in)efficiency of cryptocurrencies,(iii)price dynamics and bubbles in cryptocurrencies,and(iv)the diversification,safe haven,and hedging properties of Bitcoin.We conclude that highly traded cryptocurrencies’investment features and economic outcomes are analyzed predominantly on a tick-by-tick basis.This study also provides recommendations for future studies. 展开更多
关键词 Cryptocurrencies high-frequency data Intra-day data Bibliometric analysis Network analysis Meta-literature review
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High-frequency compensation for seismic data based on adaptive generalized S transform 被引量:2
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作者 Li Hui-Feng Wang Jin +1 位作者 Wei Zheng-Rong Yang Fei-Long 《Applied Geophysics》 SCIE CSCD 2020年第5期747-755,902,共10页
The low-pass fi ltering eff ect of the Earth results in the absorption and attenuation of the high-frequency components of seismic signals by the stratum during propagation.Hence,seismic data have low resolution.Consi... The low-pass fi ltering eff ect of the Earth results in the absorption and attenuation of the high-frequency components of seismic signals by the stratum during propagation.Hence,seismic data have low resolution.Considering the limitations of traditional high-frequency compensation methods,this paper presents a new method based on adaptive generalized S transform.This method is based on the study of frequency spectrum attenuation law of seismic signals,and the Gauss window function of adaptive generalized S transform is used to fi t the attenuation trend of seismic signals to seek the optimal Gauss window function.The amplitude spectrum compensation function constructed using the optimal Gauss window function is used to modify the time-frequency spectrum of the adaptive generalized S transform of seismic signals and reconstruct seismic signals to compensate for high-frequency attenuation.Practical data processing results show that the method can compensate for the high-frequency components that are absorbed and attenuated by the stratum,thereby eff ectively improving the resolution and quality of seismic data. 展开更多
关键词 seismic data time-frequency analysis adaptive generalized S transform high-frequency compensation
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User Instructions for the Dynamic Database of Solid-State Electrolyte 2.0(DDSE 2.0)
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作者 Fangling Yang Qian Wang +2 位作者 Eric Jianfeng Cheng Di Zhang Hao Li 《Computers, Materials & Continua》 SCIE EI 2024年第12期3413-3419,共7页
The Dynamic Database of Solid-State Electrolyte(DDSE)is an advanced online platform offering a comprehensive suite of tools for solid-state battery research and development.Its key features include statistical analysi... The Dynamic Database of Solid-State Electrolyte(DDSE)is an advanced online platform offering a comprehensive suite of tools for solid-state battery research and development.Its key features include statistical analysis of both experimental and computational solid-state electrolyte(SSE)data,interactive visualization through dynamic charts,user data assessment,and literature analysis powered by a large language model.By facilitating the design and optimization of novel SSEs,DDSE serves as a critical resource for advancing solid-state battery technology.This Technical Report provides detailed tutorials and practical examples to guide users in effectively utilizing the platform. 展开更多
关键词 Dynamic database of solid-state electrolytes(DDSE) user instructions solid-state electrolytes solid-state batteries data visualization literature analysis material design
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Covariance Estimation Using High-Frequency Data: An Analysis of Nord Pool Electricity Forward Data
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作者 faculty of economics and organization science,lillehammer university college,lillehammer no-2624,norway 《Journal of Energy and Power Engineering》 2012年第4期570-579,共10页
The modeling of volatility and correlation is important in order to calculate hedge ratios, value at risk estimates, CAPM (Capital Asset Pricing Model betas), derivate pricing and risk management in general. Recent ... The modeling of volatility and correlation is important in order to calculate hedge ratios, value at risk estimates, CAPM (Capital Asset Pricing Model betas), derivate pricing and risk management in general. Recent access to intra-daily high-frequency data for two of the most liquid contracts at the Nord Pool exchange has made it possible to apply new and promising methods for analyzing volatility and correlation. The concepts of realized volatility and realized correlation are applied, and this study statistically describes the distribution (both distributional properties and temporal dependencies) of electricity forward data from 2005 to 2009. The main findings show that the logarithmic realized volatility is approximately normally distributed, while realized correlation seems not to be. Further, realized volatility and realized correlation have a long-memory feature. There also seems to be a high correlation between realized correlation and volatilities and positive relations between trading volume and realized volatility and between trading volume and realized correlation. These results are to a large extent consistent with earlier studies of stylized facts of other financial and commodity markets. 展开更多
关键词 Realized volatility and correlation high-frequency data distribution properties temporal dependence Nord Pool forward data.
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Automatic User Goals Identification Based on Anchor Text and Click-Through Data 被引量:6
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作者 YUAN Xiaojie DOU Zhicheng ZHANG Lu LIU Fang 《Wuhan University Journal of Natural Sciences》 CAS 2008年第4期495-500,共6页
Understanding the underlying goal behind a user's Web query has been proved to be helpful to improve the quality of search. This paper focuses on the problem of automatic identification of query types according to th... Understanding the underlying goal behind a user's Web query has been proved to be helpful to improve the quality of search. This paper focuses on the problem of automatic identification of query types according to the goals. Four novel entropy-based features extracted from anchor data and click-through data are proposed, and a support vector machines (SVM) classifier is used to identify the user's goal based on these features. Experi- mental results show that the proposed entropy-based features are more effective than those reported in previous work. By combin- ing multiple features the goals for more than 97% of the queries studied can be correctly identified. Besides these, this paper reaches the following important conclusions: First, anchor-based features are more effective than click-through-based features; Second, the number of sites is more reliable than the number of links; Third, click-distribution- based features are more effective than session-based ones. 展开更多
关键词 query classification user goals anchor text click-through data information retrieval
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Computing the User Experience via Big Data Analysis:A Case of Uber Services 被引量:2
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作者 Jang Hyun Kim Dongyan Nan +1 位作者 Yerin Kim Hyung Park Min 《Computers, Materials & Continua》 SCIE EI 2021年第6期2819-2829,共11页
As of 2020,the issue of user satisfaction has generated a significant amount of interest.Therefore,we employ a big data approach for exploring user satisfaction among Uber users.We develop a research model of user sat... As of 2020,the issue of user satisfaction has generated a significant amount of interest.Therefore,we employ a big data approach for exploring user satisfaction among Uber users.We develop a research model of user satisfaction by expanding the list of user experience(UX)elements(i.e.,pragmatic,expectation confirmation,hedonic,and burden)by including more elements,namely:risk,cost,promotion,anxiety,sadness,and anger.Subsequently,we collect 125,768 comments from online reviews of Uber services and perform a sentiment analysis to extract the UX elements.The results of a regression analysis reveal the following:hedonic,promotion,and pragmatic significantly and positively affect user satisfaction,while burden,cost,and risk have a substantial negative influence.However,the influence of expectation confirmation on user satisfaction is not supported.Moreover,sadness,anxiety,and anger are positively related to the perceived risk of users.Compared with sadness and anxiety,anger has a more important role in increasing the perceived burden of users.Based on these findings,we also provide some theoretical implications for future UX literature and some core suggestions related to establishing strategies for Uber and similar services.The proposed big data approach may be utilized in other UX studies in the future. 展开更多
关键词 user satisfaction user experience big data sentiment analysis Uber
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Vessel fusion tracking with a dual-frequency high-frequency surface wave radar and calibrated by an automatic identification system 被引量:3
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作者 ZHANG Hui LIU Yongxin +1 位作者 JI Yonggang WANG Linglin 《Acta Oceanologica Sinica》 SCIE CAS CSCD 2018年第7期131-140,共10页
High-frequency surface wave radar(HFSWR) and automatic identification system(AIS) are the two most important sensors used for vessel tracking.The HFSWR can be applied to tracking all vessels in a detection area,wh... High-frequency surface wave radar(HFSWR) and automatic identification system(AIS) are the two most important sensors used for vessel tracking.The HFSWR can be applied to tracking all vessels in a detection area,while the AIS is usually used to verify the information of cooperative vessels.Because of interference from sea clutter,employing single-frequency HFSWR for vessel tracking may obscure vessels located in the blind zones of Bragg peaks.Analyzing changes in the detection frequencies constitutes an effective method for addressing this deficiency.A solution consisting of vessel fusion tracking is proposed using dual-frequency HFSWR data calibrated by the AIS.Since different systematic biases exist between HFSWR frequency measurements and AIS measurements,AIS information is used to estimate and correct the HFSWR systematic biases at each frequency.First,AIS point measurements for cooperative vessels are associated with the HFSWR measurements using a JVC assignment algorithm.From the association results of the cooperative vessels,the systematic biases in the dualfrequency HFSWR data are estimated and corrected.Then,based on the corrected dual-frequency HFSWR data,the vessels are tracked using a dual-frequency fusion joint probabilistic data association(JPDA)-unscented Kalman filter(UKF) algorithm.Experimental results using real-life detection data show that the proposed method is efficient at tracking vessels in real time and can improve the tracking capability and accuracy compared with tracking processes involving single-frequency data. 展开更多
关键词 vessel tracking high-frequency surface wave radar automatic identification system joint probabilistic data association unscented Kalman filter
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Exploring users' within-site navigation behavior:A case study based on clickstream data 被引量:1
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作者 Tingting JIANG Yu CHI Wenrui JIA 《Chinese Journal of Library and Information Science》 2014年第4期63-76,共14页
Purpose:The goal of our research is to suggest specific Web metrics that are useful for evaluating and improving user navigation experience on informational websites.Design/methodology/approach:We revised metrics in a... Purpose:The goal of our research is to suggest specific Web metrics that are useful for evaluating and improving user navigation experience on informational websites.Design/methodology/approach:We revised metrics in a Web forensic framework proposed in the literature and defined the metrics of footprint,track and movement.Data were obtained from user clickstreams provided by a real estate site’s administrators.There were two phases of data analysis with the first phase on navigation behavior based on user footprints and tracks,and the second phase on navigational transition patterns based on user movements.Findings:Preliminary results suggest that the apartment pages were heavily-trafficked while the agent pages and related information pages were underused to a great extent.Navigation within the same category of pages was prevalent,especially when users navigated among the regional apartment listings.However,navigation of these pages was found to be inefficient.Research limitations:The suggestions for navigation design optimization provided in the paper are specific to this website,and their applicability to other online environments needs to be verified.Preference predications or personal recommendations are not made during the current stage of research.Practical implications:Our clickstream data analysis results offer a base for future research.Meanwhile,website administrators and managers can make better use of the readily available clickstream data to evaluate the effectiveness and efficiency of their site navigation design.Originality/value:Our empirical study is valuable to those seeking analysis metrics for evaluating and improving user navigation experience on informational websites based on clickstream data.Our attempts to analyze the log file in terms of footprint,track and movement will enrich the utilization of such trace data to engender a deeper understanding of users’within-site navigation behavior. 展开更多
关键词 Web navigation user behavior Clickstream data analysis Metrics Resale apartment website
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ST-Map:an Interactive Map for Discovering Spatial and Temporal Patterns in Bibliographic Data 被引量:1
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作者 ZUO Chenyu XU Yifan +1 位作者 DING Lingfang MENG Liqiu 《Journal of Geodesy and Geoinformation Science》 CSCD 2024年第1期3-15,共13页
Getting insight into the spatiotemporal distribution patterns of knowledge innovation is receiving increasing attention from policymakers and economic research organizations.Many studies use bibliometric data to analy... Getting insight into the spatiotemporal distribution patterns of knowledge innovation is receiving increasing attention from policymakers and economic research organizations.Many studies use bibliometric data to analyze the popularity of certain research topics,well-adopted methodologies,influential authors,and the interrelationships among research disciplines.However,the visual exploration of the patterns of research topics with an emphasis on their spatial and temporal distribution remains challenging.This study combined a Space-Time Cube(STC)and a 3D glyph to represent the complex multivariate bibliographic data.We further implemented a visual design by developing an interactive interface.The effectiveness,understandability,and engagement of ST-Map are evaluated by seven experts in geovisualization.The results suggest that it is promising to use three-dimensional visualization to show the overview and on-demand details on a single screen. 展开更多
关键词 space-time cube bibliographic data spatiotemporal analysis user study interactive map
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Trip Purposes of Automobile Users Inference Using Multi-day Traffic Monitoring Data
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作者 Wen Zheng Wenquan Li +2 位作者 Qian Chen Yan Zheng Chenhao Zhang 《Journal of Harbin Institute of Technology(New Series)》 CAS 2023年第5期1-11,共11页
Determining trip purpose is an important link to explore travel rules. In this paper,we takea utomobile users in urban areas as the research object,combine unsupervised learning and supervised learningm ethods to anal... Determining trip purpose is an important link to explore travel rules. In this paper,we takea utomobile users in urban areas as the research object,combine unsupervised learning and supervised learningm ethods to analyze their travel characteristics,and focus on the classification and prediction of automobileu sers’trip purposes. However,previous studies on trip purposes mainly focused on questionnaires and GPSd ata,which cannot well reflect the characteristics of automobile travel. In order to avoid the multi-dayb ehavior variability and unobservable heterogeneity of individual characteristics ignored in traditional traffic questionnaires,traffic monitoring data from the Northern District of Qingdao are used,and the K-meansc lustering method is applied to estimate the trip purposes of automobile users. Then,Adaptive Boosting(AdaBoost)and Random Forest(RF)methods are used to classify and predict trip purposes. Finally,ther esult shows:(1)the purpose of automobile users can be mainly divided into four clusters,which includeC ommuting trips,Flexible life demand travel in daytime,Evening entertainment and leisure shopping,andT axi-based trips for the first three types of purposes,respectively;(2)the Random Forest method performss ignificantly better than AdaBoost in trip purpose prediction for higher accuracy;(3)the average predictiona ccuracy of Random Forest under hyper-parameters optimization reaches96.25%,which proves the feasibilitya nd rationality of the above clustering results. 展开更多
关键词 trip purpose automobile users traffic monitoring data K-means clustering ADABOOST random forest
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Dynamic data-sharing based user recruitment in mobile crowdsensing
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作者 Chen Shuang Liu Min +1 位作者 Sun Sheng Jiao Zhenzhen 《High Technology Letters》 EI CAS 2019年第1期8-16,共9页
Mobile crowdsensing(MCS) has become an emerging paradigm to solve urban sensing problems by leveraging the ubiquitous sensing capabilities of the crowd. One critical issue in MCS is how to recruit users to fulfill mor... Mobile crowdsensing(MCS) has become an emerging paradigm to solve urban sensing problems by leveraging the ubiquitous sensing capabilities of the crowd. One critical issue in MCS is how to recruit users to fulfill more sensing tasks with budget restriction, while sharing data among tasks can be a credible way to improve the efficiency. The data-sharing based user recruitment problem under budget constraint in a realistic scenario is studied, where multiple tasks require homogeneous data but have various spatio-temporal execution ranges, meanwhile users suffer from uncertain future positions. The problem is formulated in a manner of probability by predicting user mobility, then a dynamic user recruitment algorithm is proposed to solve it. In the algorithm a greedy-adding-and-substitution(GAS) heuristic is repeatedly implemented by updating user mobility prediction in each time slot to gradually achieve the final solution. Extensive simulations are conducted using a real-world taxi trace dataset, and the results demonstrate that the approach can fulfill more tasks than existing methods. 展开更多
关键词 mobile crowdsensing(MCS) data sharing user recruitment mobility prediction dynamic decision
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Analyzing the Factors Affecting the Users' Success in Web Based Education: A Data Mining Approach
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作者 Sona Mardikyan Cigdem Karakaya 《Computer Technology and Application》 2011年第5期396-400,共5页
Corporations focus on web based education to train their employees ever more than before. Unlike traditional learning environments, web based education applications store large amount of data. This growing availabilit... Corporations focus on web based education to train their employees ever more than before. Unlike traditional learning environments, web based education applications store large amount of data. This growing availability of data stimulated the emergence of a new field called educational data mining. In this study, the classification method is implemented on a data that is obtained from a company which uses web based education to train their employees. The authors' aim is to find out the most critical factors that influence the users' success. For the classification of the data, two decision tree algorithms, Classification and Regression Tree (CART) and Quick, Unbiased and Efficient Statistical Tree (QUEST) are applied. According to the results, assurance of a certificate at the end of the training is found to be the most critical factor that influences the users' success. Position, number of work years and the education level of the user, are also found as important factors. 展开更多
关键词 Web based education data mining decision trees users' success
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User Profile & Attitude Analysis Based on Unstructured Social Media and Online Activity
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作者 Yuting Tan Vijay K. Madisetti 《Journal of Software Engineering and Applications》 2024年第6期463-473,共11页
As social media and online activity continue to pervade all age groups, it serves as a crucial platform for sharing personal experiences and opinions as well as information about attitudes and preferences for certain ... As social media and online activity continue to pervade all age groups, it serves as a crucial platform for sharing personal experiences and opinions as well as information about attitudes and preferences for certain interests or purchases. This generates a wealth of behavioral data, which, while invaluable to businesses, researchers, policymakers, and the cybersecurity sector, presents significant challenges due to its unstructured nature. Existing tools for analyzing this data often lack the capability to effectively retrieve and process it comprehensively. This paper addresses the need for an advanced analytical tool that ethically and legally collects and analyzes social media data and online activity logs, constructing detailed and structured user profiles. It reviews current solutions, highlights their limitations, and introduces a new approach, the Advanced Social Analyzer (ASAN), that bridges these gaps. The proposed solutions technical aspects, implementation, and evaluation are discussed, with results compared to existing methodologies. The paper concludes by suggesting future research directions to further enhance the utility and effectiveness of social media data analysis. 展开更多
关键词 Social Media user Behavior Analysis Sentiment Analysis data Mining Machine Learning user Profiling CYBERSECURITY Behavioral Insights Personality Prediction
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Enhancing Data Analysis and Automation: Integrating Python with Microsoft Excel for Non-Programmers
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作者 Osama Magdy Ali Mohamed Breik +2 位作者 Tarek Aly Atef Tayh Nour El-Din Raslan Mervat Gheith 《Journal of Software Engineering and Applications》 2024年第6期530-540,共11页
Microsoft Excel is essential for the End-User Approach (EUA), offering versatility in data organization, analysis, and visualization, as well as widespread accessibility. It fosters collaboration and informed decision... Microsoft Excel is essential for the End-User Approach (EUA), offering versatility in data organization, analysis, and visualization, as well as widespread accessibility. It fosters collaboration and informed decision-making across diverse domains. Conversely, Python is indispensable for professional programming due to its versatility, readability, extensive libraries, and robust community support. It enables efficient development, advanced data analysis, data mining, and automation, catering to diverse industries and applications. However, one primary issue when using Microsoft Excel with Python libraries is compatibility and interoperability. While Excel is a widely used tool for data storage and analysis, it may not seamlessly integrate with Python libraries, leading to challenges in reading and writing data, especially in complex or large datasets. Additionally, manipulating Excel files with Python may not always preserve formatting or formulas accurately, potentially affecting data integrity. Moreover, dependency on Excel’s graphical user interface (GUI) for automation can limit scalability and reproducibility compared to Python’s scripting capabilities. This paper covers the integration solution of empowering non-programmers to leverage Python’s capabilities within the familiar Excel environment. This enables users to perform advanced data analysis and automation tasks without requiring extensive programming knowledge. Based on Soliciting feedback from non-programmers who have tested the integration solution, the case study shows how the solution evaluates the ease of implementation, performance, and compatibility of Python with Excel versions. 展开更多
关键词 PYTHON End-user Approach Microsoft Excel data Analysis Integration SPREADSHEET PROGRAMMING data Visualization
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The Intersection of Privacy by Design and Behavioral Economics: Nudging Users towards Privacy-Friendly Choices
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作者 Vivek Kumar Agarwal 《Journal of Information Security》 2024年第4期557-563,共7页
This paper conducts a comprehensive review of existing research on Privacy by Design (PbD) and behavioral economics, explores the intersection of Privacy by Design (PbD) and behavioral economics, and how designers can... This paper conducts a comprehensive review of existing research on Privacy by Design (PbD) and behavioral economics, explores the intersection of Privacy by Design (PbD) and behavioral economics, and how designers can leverage “nudges” to encourage users towards privacy-friendly choices. We analyze the limitations of rational choice in the context of privacy decision-making and identify key opportunities for integrating behavioral economics into PbD. We propose a user-centered design framework for integrating behavioral economics into PbD, which includes strategies for simplifying complex choices, making privacy visible, providing feedback and control, and testing and iterating. Our analysis highlights the need for a more nuanced understanding of user behavior and decision-making in the context of privacy, and demonstrates the potential of behavioral economics to inform the design of more effective PbD solutions. 展开更多
关键词 Privacy by Design Behavioral Economics Nudges user-Centric Design data Protection Cognitive Biases HEURISTICS
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同态加密下用户隐私数据传输的安全保护方法
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作者 付爱英 熊宇峰 曾勍炜 《吉林大学学报(理学版)》 北大核心 2025年第2期573-579,共7页
为满足用户隐私数据传输的安全性需求,提出一种同态加密下用户隐私数据传输安全保护方法.首先,通过特征空间重组技术进行数据重构,利用语义相关性融合方法在捕获用户隐私数据特征的同时进行自适应调度,并对捕获的特征量进行模糊聚类,确... 为满足用户隐私数据传输的安全性需求,提出一种同态加密下用户隐私数据传输安全保护方法.首先,通过特征空间重组技术进行数据重构,利用语义相关性融合方法在捕获用户隐私数据特征的同时进行自适应调度,并对捕获的特征量进行模糊聚类,确定用户隐私数据属性;其次,结合用户隐私数据属性,采用同态加密算法和深度学习相结合的方法对用户隐私数据进行点对点加密传输,最终实现用户隐私数据传输安全保护.仿真实验结果表明,该方法的数据加密效果较好,通信开销较低,可以更好地确保用户隐私数据传输的安全性和可靠性. 展开更多
关键词 同态加密 用户隐私数据 传输安全保护 特征空间重组
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基于大数据挖掘的宠物猫航空箱用户需求分析和设计研究
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作者 倪敏娜 刘慧敏 +2 位作者 薛景梵 张峰 易琦 《包装工程》 北大核心 2025年第2期122-135,共14页
目的大数据中挖掘更加全面的用户需求,以优化宠物猫航空箱产品设计。方法提出了一种基于大数据挖掘来获取宠物猫航空箱用户需求并对其展开分析的研究方法。首先对UGC平台评论进行语义提取及处理;其次构建需求要素模型,分析用户需求特征... 目的大数据中挖掘更加全面的用户需求,以优化宠物猫航空箱产品设计。方法提出了一种基于大数据挖掘来获取宠物猫航空箱用户需求并对其展开分析的研究方法。首先对UGC平台评论进行语义提取及处理;其次构建需求要素模型,分析用户需求特征关系并可视化呈现;再次通过用户信息数据挖掘和定性调研绘制用户画像;最后整合用户需求特征与用户画像以构建用户行为地图,总结用户总体需求,并转化为设计需求,指导进一步设计实践和案例验证。结果将设计需求映射为功能和解决方案,进行产品设计与开发,结合用户满意度检测验证其可行性。结论对设计实践进行体验评价,结果表明结合大数据挖掘和用户需求定性分析的方法,能够有效、全面获取宠物猫航空箱的用户需求,为后续产品设计优化研究提供科学依据。 展开更多
关键词 大数据挖掘 宠物猫航空箱 用户需求 产品设计
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一种海量教育用户行为数据分析软件的设计
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作者 何雪锋 《河北软件职业技术学院学报》 2025年第1期19-23,共5页
在线教育行业的迅猛发展加剧了各大在线教育机构的竞争,尤其在打造个性化服务和预测市场趋势方面竞争更加激烈。为了提升在线教育机构的市场竞争力,基于分布式数据仓库Hive、后端开发框架SpringBoot和前端开发框架Vue等技术,提出了一套... 在线教育行业的迅猛发展加剧了各大在线教育机构的竞争,尤其在打造个性化服务和预测市场趋势方面竞争更加激烈。为了提升在线教育机构的市场竞争力,基于分布式数据仓库Hive、后端开发框架SpringBoot和前端开发框架Vue等技术,提出了一套海量数据存储、分析和可视化解决方案。实践证明,该方案能够高效、多维度地实现海量数据的挖掘和展示,具有较强的可操作性和借鉴意义。 展开更多
关键词 教育数据 用户行为 数据仓库 Hive
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基于深度并行时序网络的用户侧异常数据智能诊断
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作者 郑艳松 廖伟国 《现代电子技术》 北大核心 2025年第4期140-144,共5页
在用户侧数据中,异常往往隐藏在复杂的时序关系中,传统的时序分析方法在处理用户侧数据中复杂的时序关系时存在困难,特征提取难以捕获关键特征,导致诊断精度低且易漏检。为此,研究一种基于深度并行时序网络的用户侧异常数据智能诊断方... 在用户侧数据中,异常往往隐藏在复杂的时序关系中,传统的时序分析方法在处理用户侧数据中复杂的时序关系时存在困难,特征提取难以捕获关键特征,导致诊断精度低且易漏检。为此,研究一种基于深度并行时序网络的用户侧异常数据智能诊断方法。深度并行时序网络分解层利用滑动窗口法分割用户侧数据,得到数个窗口序列。编码层依据层叠时序卷积神经网络与长短期记忆(LSTM)网络建立编码器,提取各窗口序列的时空特征;解码层通过引入时间注意力机制的门控循环单元建立解码器,重构窗口序列的时空特征;推断层依据重构特征计算异常分数,当异常分数大于设置阈值时,说明该窗口内的用户侧数据为异常数据,即完成了用户侧异常数据的智能诊断。实验结果表明,所提方法可有效提取用户侧数据特征,计算异常分数,并完成用户侧异常数据智能诊断。 展开更多
关键词 深度并行时序网络 用户侧 异常数据 智能诊断 滑动窗口 LSTM
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