期刊文献+
共找到87篇文章
< 1 2 5 >
每页显示 20 50 100
Construction and development of the Agricultural Science Data Center
1
作者 MENG Xianxue 《Journal of Northeast Agricultural University(English Edition)》 CAS 2007年第4期349-352,共4页
Science data are very important resources for innovative research in all scientific disciplines. The Ministry of Science and Technology (MOST) of China has launched a comprehensive platform program for supporting sc... Science data are very important resources for innovative research in all scientific disciplines. The Ministry of Science and Technology (MOST) of China has launched a comprehensive platform program for supporting scientific innovations and agricultural science database construction and sharing project is one of the activities under this program supported by MOST. This paper briefly described the achievements of the Agricultural Science Data Center Project. 展开更多
关键词 dataBASE science data data center information management
下载PDF
Exploiting Data Science for Measuring the Performance of Technology Stocks
2
作者 Tahir Sher Abdul Rehman +1 位作者 Dongsun Kim Imran Ihsan 《Computers, Materials & Continua》 SCIE EI 2023年第9期2979-2995,共17页
The rise or fall of the stock markets directly affects investors’interest and loyalty.Therefore,it is necessary to measure the performance of stocks in the market in advance to prevent our assets from suffering signi... The rise or fall of the stock markets directly affects investors’interest and loyalty.Therefore,it is necessary to measure the performance of stocks in the market in advance to prevent our assets from suffering significant losses.In our proposed study,six supervised machine learning(ML)strategies and deep learning(DL)models with long short-term memory(LSTM)of data science was deployed for thorough analysis and measurement of the performance of the technology stocks.Under discussion are Apple Inc.(AAPL),Microsoft Corporation(MSFT),Broadcom Inc.,Taiwan Semiconductor Manufacturing Company Limited(TSM),NVIDIA Corporation(NVDA),and Avigilon Corporation(AVGO).The datasets were taken from the Yahoo Finance API from 06-05-2005 to 06-05-2022(seventeen years)with 4280 samples.As already noted,multiple studies have been performed to resolve this problem using linear regression,support vectormachines,deep long short-termmemory(LSTM),and many other models.In this research,the Hidden Markov Model(HMM)outperformed other employed machine learning ensembles,tree-based models,the ARIMA(Auto Regressive IntegratedMoving Average)model,and long short-term memory with a robust mean accuracy score of 99.98.Other statistical analyses and measurements for machine learning ensemble algorithms,the Long Short-TermModel,and ARIMA were also carried out for further investigation of the performance of advanced models for forecasting time series data.Thus,the proposed research found the best model to be HMM,and LSTM was the second-best model that performed well in all aspects.A developedmodel will be highly recommended and helpful for early measurement of technology stock performance for investment or withdrawal based on the future stock rise or fall for creating smart environments. 展开更多
关键词 Machine learning data science smart environments stocks movement deep learning stock marketing
下载PDF
Data Component:An Innovative Framework for Information Value Metrics in the Digital Economy
3
作者 Tao Xiaoming Wang Yu +5 位作者 Peng Jieyang Zhao Yuelin Wang Yue Wang Youzheng Hu Chengsheng Lu Zhipeng 《China Communications》 SCIE CSCD 2024年第5期17-35,共19页
The increasing dependence on data highlights the need for a detailed understanding of its behavior,encompassing the challenges involved in processing and evaluating it.However,current research lacks a comprehensive st... The increasing dependence on data highlights the need for a detailed understanding of its behavior,encompassing the challenges involved in processing and evaluating it.However,current research lacks a comprehensive structure for measuring the worth of data elements,hindering effective navigation of the changing digital environment.This paper aims to fill this research gap by introducing the innovative concept of“data components.”It proposes a graphtheoretic representation model that presents a clear mathematical definition and demonstrates the superiority of data components over traditional processing methods.Additionally,the paper introduces an information measurement model that provides a way to calculate the information entropy of data components and establish their increased informational value.The paper also assesses the value of information,suggesting a pricing mechanism based on its significance.In conclusion,this paper establishes a robust framework for understanding and quantifying the value of implicit information in data,laying the groundwork for future research and practical applications. 展开更多
关键词 data component data element data governance data science information theory
下载PDF
Big Data 4.0: The Era of Big Intelligence
4
作者 Zhaohao Sun 《Journal of Computer Science Research》 2024年第1期1-15,共15页
Big data has had significant impacts on our lives,economies,academia and industries over the past decade.The current equations are:What is the future of big data?What era do we live in?This article addresses these que... Big data has had significant impacts on our lives,economies,academia and industries over the past decade.The current equations are:What is the future of big data?What era do we live in?This article addresses these questions by looking at meta as an operation and argues that we are living in the era of big intelligence through analyzing from meta(big data)to big intelligence.More specifically,this article will analyze big data from an evolutionary perspective.The article overviews data,information,knowledge,and intelligence(DIKI)and reveals their relationships.After analyzing meta as an operation,this article explores Meta(DIKE)and its relationship.It reveals 5 Bigs consisting of big data,big information,big knowledge,big intelligence and big analytics.Applying meta on 5 Bigs,this article infers that 4 Big Data 4.0=meta(big data)=big intelligence.This article analyzes how intelligent big analytics support big intelligence.The proposed approach in this research might facilitate the research and development of big data,big data analytics,business intelligence,artificial intelligence,and data science. 展开更多
关键词 Big data 4.0 Big analytics Business intelligence Artificial intelligence data science
下载PDF
Harnessing the power of immersive virtual reality-visualization and analysis of 3D earth science data sets 被引量:2
5
作者 Jiayan Zhao Jan Oliver Wallgrün +2 位作者 Peter C.LaFemina Jim Normandeau Alexander Klippel 《Geo-Spatial Information Science》 SCIE CSCD 2019年第4期237-250,I0002,共15页
The availability and quantity of remotely sensed and terrestrial geospatial data sets are on the rise.Historically,these data sets have been analyzed and quarried on 2D desktop computers;however,immersive technologies... The availability and quantity of remotely sensed and terrestrial geospatial data sets are on the rise.Historically,these data sets have been analyzed and quarried on 2D desktop computers;however,immersive technologies and specifically immersive virtual reality(iVR)allow for the integration,visualization,analysis,and exploration of these 3D geospatial data sets.iVR can deliver remote and large-scale geospatial data sets to the laboratory,providing embodied experiences of field sites across the earth and beyond.We describe a workflow for the ingestion of geospatial data sets and the development of an iVR workbench,and present the application of these for an experience of Iceland’s Thrihnukar volcano where we:(1)combined satellite imagery with terrain elevation data to create a basic reconstruction of the physical site;(2)used terrestrial LiDAR data to provide a geo-referenced point cloud model of the magmatic-volcanic system,as well as the LiDAR intensity values for the identification of rock types;and(3)used Structure-from-Motion(SfM)to construct a photorealistic point cloud of the inside volcano.The workbench provides tools for the direct manipulation of the georeferenced data sets,including scaling,rotation,and translation,and a suite of geometric measurement tools,including length,area,and volume.Future developments will be inspired by an ongoing user study that formally evaluates the workbench’s mature components in the context of fieldwork and analyses activities. 展开更多
关键词 Immersive virtual reality earth science data visualization WORKFLOW virtual fieldwork VOLCANO
原文传递
Big Data and Data Science:Opportunities and Challenges of iSchools 被引量:13
6
作者 Il-Yeol Song Yongjun Zhu 《Journal of Data and Information Science》 CSCD 2017年第3期1-18,共18页
Due to the recent explosion of big data, our society has been rapidly going through digital transformation and entering a new world with numerous eye-opening developments. These new trends impact the society and futur... Due to the recent explosion of big data, our society has been rapidly going through digital transformation and entering a new world with numerous eye-opening developments. These new trends impact the society and future jobs, and thus student careers. At the heart of this digital transformation is data science, the discipline that makes sense of big data. With many rapidly emerging digital challenges ahead of us, this article discusses perspectives on iSchools' opportunities and suggestions in data science education. We argue that iSchools should empower their students with "information computing" disciplines, which we define as the ability to solve problems and create values, information, and knowledge using tools in application domains. As specific approaches to enforcing information computing disciplines in data science education, we suggest the three foci of user-based, tool-based, and application- based. These three loci will serve to differentiate the data science education of iSchools from that of computer science or business schools. We present a layered Data Science Education Framework (DSEF) with building blocks that include the three pillars of data science (people, technology, and data), computational thinking, data-driven paradigms, and data science lifecycles. Data science courses built on the top of this framework should thus be executed with user-based, tool-based, and application-based approaches. This framework will help our students think about data science problems from the big picture perspective and foster appropriate problem-solving skills in conjunction with broad perspectives of data science lifecycles. We hope the DSEF discussed in this article will help fellow iSchools in their design of new data science curricula. 展开更多
关键词 Big data data science Information computing The fourth Industrial Revolution ISCHOOL Computational thinking data-driven paradigm data science lifecycle
下载PDF
Big Metadata,Smart Metadata,and Metadata Capital:Toward Greater Synergy Between Data Science and Metadata 被引量:6
7
作者 Jane Greenberg 《Journal of Data and Information Science》 CSCD 2017年第3期19-36,共18页
Purpose: The purpose of the paper is to provide a framework for addressing the disconnect between metadata and data science. Data science cannot progress without metadata research.This paper takes steps toward advanc... Purpose: The purpose of the paper is to provide a framework for addressing the disconnect between metadata and data science. Data science cannot progress without metadata research.This paper takes steps toward advancing the synergy between metadata and data science, and identifies pathways for developing a more cohesive metadata research agenda in data science. Design/methodology/approach: This paper identifies factors that challenge metadata research in the digital ecosystem, defines metadata and data science, and presents the concepts big metadata, smart metadata, and metadata capital as part of a metadata lingua franca connecting to data science. Findings: The "utilitarian nature" and "historical and traditional views" of metadata are identified as two intersecting factors that have inhibited metadata research. Big metadata, smart metadata, and metadata capital are presented as part ofa metadata linguafranca to help frame research in the data science research space. Research limitations: There are additional, intersecting factors to consider that likely inhibit metadata research, and other significant metadata concepts to explore. Practical implications: The immediate contribution of this work is that it may elicit response, critique, revision, or, more significantly, motivate research. The work presented can encourage more researchers to consider the significance of metadata as a research worthy topic within data science and the larger digital ecosystem. Originality/value: Although metadata research has not kept pace with other data science topics, there is little attention directed to this problem. This is surprising, given that metadata is essential for data science endeavors. This examination synthesizes original and prior scholarship to provide new grounding for metadata research in data science. 展开更多
关键词 Metadata research data science Big metadata Smart metadata Metadata capital
下载PDF
The materials data ecosystem: Materials data science and its role in data-driven materials discovery 被引量:1
8
作者 尹海清 姜雪 +4 位作者 刘国权 Sharon Elder 徐斌 郑清军 曲选辉 《Chinese Physics B》 SCIE EI CAS CSCD 2018年第11期120-125,共6页
Since its launch in 2011, the Materials Genome Initiative(MGI) has drawn the attention of researchers from academia,government, and industry worldwide. As one of the three tools of the MGI, the use of materials data... Since its launch in 2011, the Materials Genome Initiative(MGI) has drawn the attention of researchers from academia,government, and industry worldwide. As one of the three tools of the MGI, the use of materials data, for the first time, has emerged as an extremely significant approach in materials discovery. Data science has been applied in different disciplines as an interdisciplinary field to extract knowledge from data. The concept of materials data science has been utilized to demonstrate its application in materials science. To explore its potential as an active research branch in the big data era, a three-tier system has been put forward to define the infrastructure for the classification, curation and knowledge extraction of materials data. 展开更多
关键词 Materials Genome Initiative materials data science data classification life-cycle curation
下载PDF
Artificial Intelligence Based Optimal Functional Link Neural Network for Financial Data Science 被引量:1
9
作者 Anwer Mustafa Hilal Hadeel Alsolai +3 位作者 Fahd NAl-Wesabi Mohammed Abdullah Al-Hagery Manar Ahmed Hamza Mesfer Al Duhayyim 《Computers, Materials & Continua》 SCIE EI 2022年第3期6289-6304,共16页
In present digital era,data science techniques exploit artificial intelligence(AI)techniques who start and run small and medium-sized enterprises(SMEs)to have an impact and develop their businesses.Data science integr... In present digital era,data science techniques exploit artificial intelligence(AI)techniques who start and run small and medium-sized enterprises(SMEs)to have an impact and develop their businesses.Data science integrates the conventions of econometrics with the technological elements of data science.It make use of machine learning(ML),predictive and prescriptive analytics to effectively understand financial data and solve related problems.Smart technologies for SMEs enable allows the firm to get smarter with their processes and offers efficient operations.At the same time,it is needed to develop an effective tool which can assist small to medium sized enterprises to forecast business failure as well as financial crisis.AI becomes a familiar tool for several businesses due to the fact that it concentrates on the design of intelligent decision making tools to solve particular real time problems.With this motivation,this paper presents a new AI based optimal functional link neural network(FLNN)based financial crisis prediction(FCP)model forSMEs.The proposed model involves preprocessing,feature selection,classification,and parameter tuning.At the initial stage,the financial data of the enterprises are collected and are preprocessed to enhance the quality of the data.Besides,a novel chaotic grasshopper optimization algorithm(CGOA)based feature selection technique is applied for the optimal selection of features.Moreover,functional link neural network(FLNN)model is employed for the classification of the feature reduced data.Finally,the efficiency of theFLNNmodel can be improvised by the use of cat swarm optimizer(CSO)algorithm.A detailed experimental validation process takes place on Polish dataset to ensure the performance of the presented model.The experimental studies demonstrated that the CGOA-FLNN-CSO model has accomplished maximum prediction accuracy of 98.830%,92.100%,and 95.220%on the applied Polish dataset Year I-III respectively. 展开更多
关键词 data science small and medium-sized enterprises business sectors financial crisis prediction intelligent systems artificial intelligence decision making machine learning
下载PDF
Data Science Altmetrics
10
作者 Mike Thelwall 《Journal of Data and Information Science》 2016年第2期7-12,共6页
Introduction Within the field of scientometrics,which involves quantitative studies of science,the citation analysis specialism counts citations between academic papers in order to help evaluate the impact of the cite... Introduction Within the field of scientometrics,which involves quantitative studies of science,the citation analysis specialism counts citations between academic papers in order to help evaluate the impact of the cited work(Moed,2006). 展开更多
关键词 data science Altmetrics JIF data THAN
下载PDF
What Does Information Science Offer for Data Science Research?:A Review of Data and Information Ethics Literature
11
作者 Brady Lund Ting Wang 《Journal of Data and Information Science》 CSCD 2022年第4期16-38,共23页
This paper reviews literature pertaining to the development of data science as a discipline,current issues with data bias and ethics,and the role that the discipline of information science may play in addressing these... This paper reviews literature pertaining to the development of data science as a discipline,current issues with data bias and ethics,and the role that the discipline of information science may play in addressing these concerns.Information science research and researchers have much to offer for data science,owing to their background as transdisciplinary scholars who apply human-centered and social-behavioral perspectives to issues within natural science disciplines.Information science researchers have already contributed to a humanistic approach to data ethics within the literature and an emphasis on data science within information schools all but ensures that this literature will continue to grow in coming decades.This review article serves as a reference for the history,current progress,and potential future directions of data ethics research within the corpus of information science literature. 展开更多
关键词 data science Library and information science data ethics data bias Education
下载PDF
Deep Learning Enabled Microarray Gene Expression Classification for Data Science Applications
12
作者 Areej A.Malibari Reem M.Alshehri +5 位作者 Fahd N.Al-Wesabi Noha Negm Mesfer Al Duhayyim Anwer Mustafa Hilal Ishfaq Yaseen Abdelwahed Motwakel 《Computers, Materials & Continua》 SCIE EI 2022年第11期4277-4290,共14页
In bioinformatics applications,examination of microarray data has received significant interest to diagnose diseases.Microarray gene expression data can be defined by a massive searching space that poses a primary cha... In bioinformatics applications,examination of microarray data has received significant interest to diagnose diseases.Microarray gene expression data can be defined by a massive searching space that poses a primary challenge in the appropriate selection of genes.Microarray data classification incorporates multiple disciplines such as bioinformatics,machine learning(ML),data science,and pattern classification.This paper designs an optimal deep neural network based microarray gene expression classification(ODNN-MGEC)model for bioinformatics applications.The proposed ODNN-MGEC technique performs data normalization process to normalize the data into a uniform scale.Besides,improved fruit fly optimization(IFFO)based feature selection technique is used to reduce the high dimensionality in the biomedical data.Moreover,deep neural network(DNN)model is applied for the classification of microarray gene expression data and the hyperparameter tuning of the DNN model is carried out using the Symbiotic Organisms Search(SOS)algorithm.The utilization of IFFO and SOS algorithms pave the way for accomplishing maximum gene expression classification outcomes.For examining the improved outcomes of the ODNN-MGEC technique,a wide ranging experimental analysis is made against benchmark datasets.The extensive comparison study with recent approaches demonstrates the enhanced outcomes of the ODNN-MGEC technique in terms of different measures. 展开更多
关键词 BIOINFORMATICS data science microarray gene expression data classification deep learning metaheuristics
下载PDF
Program of International Conference on Data-driven Discovery: When Data Science Meets Information Science(June 19-22, 2016, Beijing, China)
13
《Journal of Data and Information Science》 2016年第2期92-94,共3页
关键词 When data science Meets Information science Program of International Conference on data-driven Discovery June 19-22 BEIJING China
下载PDF
Information Science Roles in the Emerging Field of Data Science
14
作者 Gary Marchionini 《Journal of Data and Information Science》 2016年第2期1-6,共6页
There has long been discussion about the distinctions of library science,information science,and informatics,and how these areas differ and overlap with computer science.Today the term data science is emerging that ge... There has long been discussion about the distinctions of library science,information science,and informatics,and how these areas differ and overlap with computer science.Today the term data science is emerging that generates excitement and questions about how it relates to and differs from these other areas of study. 展开更多
关键词 Information science Roles in the Emerging Field of data science
下载PDF
Data science in the intensive care unit
15
作者 Ming-Hao Luo Dan-Lei Huang +4 位作者 Jing-Chao Luo Ying Su Jia-Kun Li Guo-Wei Tu Zhe Luo 《World Journal of Critical Care Medicine》 2022年第5期311-316,共6页
In this editorial,we comment on the current development and deployment of data science in intensive care units(ICUs).Data in ICUs can be classified into qualitative and quantitative data with different technologies ne... In this editorial,we comment on the current development and deployment of data science in intensive care units(ICUs).Data in ICUs can be classified into qualitative and quantitative data with different technologies needed to translate and interpret them.Data science,in the form of artificial intelligence(AI),should find the right interaction between physicians,data and algorithm.For individual patients and physicians,sepsis and mechanical ventilation have been two important aspects where AI has been extensively studied.However,major risks of bias,lack of generalizability and poor clinical values remain.AI deployment in the ICUs should be emphasized more to facilitate AI development.For ICU management,AI has a huge potential in transforming resource allocation.The coronavirus disease 2019 pandemic has given opportunities to establish such systems which should be investigated further.Ethical concerns must be addressed when designing such AI. 展开更多
关键词 Artificial intelligence COVID-19 data science Intensive care units INTERACTION
下载PDF
Research on the Construction of Application-Oriented Undergraduate Data Science and Big Data Technology Courses
16
作者 Zhuoqun Li 《Journal of Contemporary Educational Research》 2022年第5期69-74,共6页
In order to conduct research and analysis on the construction of application-oriented undergraduate data science and big data technology courses,the professional development characteristics of universities and enterpr... In order to conduct research and analysis on the construction of application-oriented undergraduate data science and big data technology courses,the professional development characteristics of universities and enterprises should be taken into consideration,the development trend of the big data industry should be scrutinized,and professional application-oriented talents should be cultivated in line with job requirements.This paper expounds the demand for capacity-building professional development in application-oriented undergraduate data science and big data technology courses,conducts research and analysis on the current situation of professional development,and puts forward strategies in hope to provide reference for capacity-building professional development. 展开更多
关键词 data science and big data technology Professional development Application-oriented undergraduate education
下载PDF
Big Data Analytics Using Graph Signal Processing
17
作者 Farhan Amin Omar M.Barukab Gyu Sang Choi 《Computers, Materials & Continua》 SCIE EI 2023年第1期489-502,共14页
The networks are fundamental to our modern world and they appear throughout science and society.Access to a massive amount of data presents a unique opportunity to the researcher’s community.As networks grow in size ... The networks are fundamental to our modern world and they appear throughout science and society.Access to a massive amount of data presents a unique opportunity to the researcher’s community.As networks grow in size the complexity increases and our ability to analyze them using the current state of the art is at severe risk of failing to keep pace.Therefore,this paper initiates a discussion on graph signal processing for large-scale data analysis.We first provide a comprehensive overview of core ideas in Graph signal processing(GSP)and their connection to conventional digital signal processing(DSP).We then summarize recent developments in developing basic GSP tools,including methods for graph filtering or graph learning,graph signal,graph Fourier transform(GFT),spectrum,graph frequency,etc.Graph filtering is a basic task that allows for isolating the contribution of individual frequencies and therefore enables the removal of noise.We then consider a graph filter as a model that helps to extend the application of GSP methods to large datasets.To show the suitability and the effeteness,we first created a noisy graph signal and then applied it to the filter.After several rounds of simulation results.We see that the filtered signal appears to be smoother and is closer to the original noise-free distance-based signal.By using this example application,we thoroughly demonstrated that graph filtration is efficient for big data analytics. 展开更多
关键词 Big data data science big data processing graph signal processing social networks
下载PDF
A Blockchain-Based Trust Model for Supporting Collaborative Healthcare Data Management
18
作者 Jiwon Jeon Junho Kim +1 位作者 Mincheol Shin Mucheol Kim 《Computer Systems Science & Engineering》 SCIE EI 2023年第9期3403-3421,共19页
The development of information technology allows the collaborative business process to be run across multiple enterprises in a larger market environment.However,while collaborative business expands the realm of busine... The development of information technology allows the collaborative business process to be run across multiple enterprises in a larger market environment.However,while collaborative business expands the realm of businesses,it also causes various hazards in collaborative Interaction,such as data falsification,inconstancy,andmisuse.To solve these issues,a blockchainbased collaborative business modeling approach was proposed and analyzed.However,the existing studies lack the blockchain risk problem-solving specification,and there is no verification technique to examine the process.Consequently,it is difficult to confirm the appropriateness of the approach.Thus,here,we propose and build a blockchain-based trust model to strengthen and verify the integrity and security of the collaborative business process;Integrity and security address the validity of collaborative interactions in terms of a trust,and we construct a blockchain pattern based on trust elements to meet the required the characteristics.Specifically,a trust model can be applied to the healthcare data-sharing process,and then the achievement of the trustbased safe data-sharing process can be proven.Our model can be used as a trust-building guidance tool or for integrity and security verification with the collaborative business process in a distributed environment with blockchain. 展开更多
关键词 Blockchain business process trustmodel healthcare data-sharing data science
下载PDF
Emotion recognition support system: Where physicians and psychiatrists meet linguists and data engineers
19
作者 Peyman Adibi Simindokht Kalani +6 位作者 Sayed Jalal Zahabi Homa Asadi Mohsen Bakhtiar Mohammad Reza Heidarpour Hamidreza Roohafza Hassan Shahoon Mohammad Amouzadeh 《World Journal of Psychiatry》 SCIE 2023年第1期1-14,共14页
An important factor in the course of daily medical diagnosis and treatment is understanding patients’ emotional states by the caregiver physicians. However, patients usually avoid speaking out their emotions when exp... An important factor in the course of daily medical diagnosis and treatment is understanding patients’ emotional states by the caregiver physicians. However, patients usually avoid speaking out their emotions when expressing their somatic symptoms and complaints to their non-psychiatrist doctor. On the other hand, clinicians usually lack the required expertise(or time) and have a deficit in mining various verbal and non-verbal emotional signals of the patients. As a result, in many cases, there is an emotion recognition barrier between the clinician and the patients making all patients seem the same except for their different somatic symptoms. In particular, we aim to identify and combine three major disciplines(psychology, linguistics, and data science) approaches for detecting emotions from verbal communication and propose an integrated solution for emotion recognition support. Such a platform may give emotional guides and indices to the clinician based on verbal communication at the consultation time. 展开更多
关键词 Physician-Patient relations Emotions Verbal behavior LINGUISTICS PSYCHOLOGY data science
下载PDF
Aims & Scope of Journal of Data and Information Science(JDIS)
20
《Chinese Journal of Library and Information Science》 2015年第3期91-,共1页
The main areas of interest of JDIS are:1)new theories,methods,and techniques of big data based data mining,knowledge discovery,and informatics,including but not limited to scientometrics,communication analysis,social ... The main areas of interest of JDIS are:1)new theories,methods,and techniques of big data based data mining,knowledge discovery,and informatics,including but not limited to scientometrics,communication analysis,social network analysis,tech&industry; analysis,competitive intelligence,knowledge mapping,evidence based policy analysis,and predictive analysis. 展开更多
关键词 Scope of Journal of data and Information science data AIMS JDIS
下载PDF
上一页 1 2 5 下一页 到第
使用帮助 返回顶部