Results for 'data analysis'

978 found
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  1.  10
    Ordinary language analysis as'therapy'eugen Fischer Ludwig-maximilians-university, munich.Austin On Sense-Data - 2006 - Grazer Philosophische Studien 70 (1):67-99.
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  2.  7
    Data Analysis of College Students’ Mental Health Based on Clustering Analysis Algorithm.Yichen Chu & Xiaojian Yin - 2021 - Complexity 2021:1-10.
    Mental health is an important basic condition for college students to become adults. Educators gradually attach importance to strengthening the mental health education of college students. This paper makes a detailed analysis and research on college students’ mental health, expounds the development and application of clustering analysis algorithm, applies the distance formula and clustering criterion function commonly used in clustering analysis, and makes a specific description of some classic algorithms of clustering analysis. Based on expounding the (...)
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  3. Functional Data Analysis, 2nd Edn.J. O. Ramsay & B. W. Silverman - 2005 - Springer.
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  4.  28
    Nonlinear data analysis of experimental (EEG) data and comparison with theoretical (ANN) data.Atin Das, Pritha Das & A. B. Roy - 2002 - Complexity 7 (3):30-40.
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  5.  6
    Data Analysis Method of Intelligent Analysis Platform for Big Data of Film and Television.Youwen Ma & Yi Wan - 2021 - Complexity 2021:1-10.
    Based on cloud computing and statistics theory, this paper proposes a reasonable analysis method for big data of film and television. The method selects Hadoop open source cloud platform as the basis, combines the MapReduce distributed programming model and HDFS distributed file storage system and other key cloud computing technologies. In order to cope with different data processing needs of film and television industry, association analysis, cluster analysis, factor analysis, and K-mean + association (...) algorithm training model were applied to model, process, and analyze the full data of film and TV series. According to the film type, producer, production region, investment, box office, audience rating, network score, audience group, and other factors, the film and television data in recent years are analyzed and studied. Based on the study of the impact of each attribute of film and television drama on film box office and TV audience rating, it is committed to the prediction of film and television industry and constantly verifies and improves the algorithm model. (shrink)
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  6.  4
    Qualitative Data Analysis and the Transforming Moment.Donald Ratcliff - 2008 - Transformation: An International Journal of Holistic Mission Studies 25 (2-3):116-133.
    Insight is an important and repeated component of most qualitative research studies. Yet insight is often a vague concept that is not well articulated in textbooks and research reports. The late James Loder of Princeton University posited a theologically-based process he termed ‘the transforming moment’ that identifies predictable phases in a wide variety of transformations, including those of a psychological, scientific, and spiritual nature. This process corresponds at many levels with the role of insight in qualitative research. As a result, (...)
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  7.  61
    Data Analysis: Models or Techniques? [REVIEW]Paul Humphreys - 2013 - Foundations of Science 18 (3):579-581.
    In this commentary to Napoletani et al. (Found Sci 16:1–20, 2011), we argue that the approach the authors adopt suggests that neural nets are mathematical techniques rather than models of cognitive processing, that the general approach dates as far back as Ptolemy, and that applied mathematics is more than simply applying results from pure mathematics.
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  8. Contents, vehicles, and complex data analysis in neuroscience.Daniel C. Burnston - 2020 - Synthese 199 (1-2):1617-1639.
    The notion of representation in neuroscience has largely been predicated on localizing the components of computational processes that explain cognitive function. On this view, which I call “algorithmic homuncularism,” individual, spatially and temporally distinct parts of the brain serve as vehicles for distinct contents, and the causal relationships between them implement the transformations specified by an algorithm. This view has a widespread influence in philosophy and cognitive neuroscience, and has recently been ably articulated and defended by Shea. Still, I am (...)
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  9.  30
    Reconnecting data analysis and research design: Who needs a confidence interval?Andrew F. Hayes - 1998 - Behavioral and Brain Sciences 21 (2):203-204.
    Chow illustrates the important role played by significance testing in the evaluation of research findings. Statistics and the goals of research should be treated as both interrelated and separate parts of the research evaluation process – a message that will benefit all who read Chow's book. The arguments are especially pertinent to the debate over the relative merits of confidence intervals and significance tests.
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  10.  6
    Range-data analysis guided by a junction dictionary.Kokichi Sugihara - 1979 - Artificial Intelligence 12 (1):41-69.
  11.  23
    Data analysis using circular causality in networks.M. Lloret-Climent & J. Nescolarde-Selva - 2014 - Complexity 19 (4):15-19.
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  12. The philosophy of exploratory data analysis.I. J. Good - 1983 - Philosophy of Science 50 (2):283-295.
    This paper attempts to define Exploratory Data Analysis (EDA) more precisely than usual, and to produce the beginnings of a philosophy of this topical and somewhat novel branch of statistics. A data set is, roughly speaking, a collection of k-tuples for some k. In both descriptive statistics and in EDA, these k-tuples, or functions of them, are represented in a manner matched to human and computer abilities with a view to finding patterns that are not "kinkera". A (...)
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  13. Experimental Design and Data Analysis for Agricultural Research, vol. 1, International Rice Research Institute, Los Banos.C. G. Mclaren, V. I. Bartolome, M. C. Carrasco, L. C. Quintana, M. I. B. Ferino, J. Z. Mojica, A. B. Olea, L. C. Paunlagui, C. G. Ramos & M. A. Ynalvez - forthcoming - Laguna.
     
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  14.  14
    Current Practices in Data Analysis Procedures in Psychology: What Has Changed?María J. Blanca, Rafael Alarcón & Roser Bono - 2018 - Frontiers in Psychology 9.
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  15.  8
    Optimization of Quantitative Financial Data Analysis System Based on Deep Learning.Meiyi Liang - 2021 - Complexity 2021:1-11.
    In order to better assist investors in the evaluation and decision-making of financial data, this paper puts forward the need to build a reliable and effective financial data prediction model and, on the basis of financial data analysis, integrates deep learning algorithm to analyze financial data and completes the financial data analysis system based on deep learning. This paper introduces the implementation details of the key modules of the platform in detail. The user (...)
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  16. Agnostic Science. Towards a Philosophy of Data Analysis.D. C. Struppa - 2011 - Foundations of Science 16 (1):1-20.
    In this paper we will offer a few examples to illustrate the orientation of contemporary research in data analysis and we will investigate the corresponding role of mathematics. We argue that the modus operandi of data analysis is implicitly based on the belief that if we have collected enough and sufficiently diverse data, we will be able to answer most relevant questions concerning the phenomenon itself. This is a methodological paradigm strongly related, but not limited (...)
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  17.  13
    Complex Methods Applied to Data Analysis, Processing, and Visualisation.Jose Garcia-Rodriguez, Anastasia Angelopoulou, David Tomás & Andrew Lewis - 2019 - Complexity 2019:1-2.
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  18.  11
    Data Analysis Using SPSS for Windows: A Beginner’s Guide. New Edition: Versions 8–10. By Jeremy J. Foster. Pp. 272. £18.99, ISBN 0-7619-6927-6, paperback. [REVIEW]Sarah Elton - 2004 - Journal of Biosocial Science 36 (2):254-254.
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  19. Enhancing the doctorate at ETH Zurich : towards a new organisational culture : a qualitative data analysis of the ETH "Doctoral Supervision Symposium" 2019. Lehner, Volk, Picariello & Togni - 2021 - In Anne Lee & Rob Bongaardt (eds.), The future of doctoral research: challenges and opportunities. New York: Routledge, Taylor & Francis Group.
     
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  20. The psychology of uncertainty in scientific data analysis.Christian D. Schunn & J. Gregory Trafton - 2013 - In Gregory J. Feist & Michael E. Gorman (eds.), Handbook of the psychology of science. New York: Springer Pub. Company, LLC.
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  21. The Hedonic Character of Nostalgia: An Integrative Data Analysis.Joost Leunissen, Tim Wildschut, Constantine Sedikides & Clay Routledge - 2020 - Emotion Review 13 (2):139-156.
    We conducted an integrative data analysis to examine the hedonic character of nostalgia. We combined positive and negative affect measures from 41 experiments manipulating nostalgia. Overall, nostalgia inductions increased positive and ambivalent affect, but did not significantly alter negative affect. The magnitude of nostalgia’s effects varied markedly across different experimental inductions of the emotion. The hedonic character of nostalgia, then, depends on how the emotion is elicited and the benchmark to which it is compared. We discuss implications for (...)
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  22.  22
    From methodology to data analysis: Prospects for the N = 1 intrasubject design.Joseph Glicksohn - 2004 - Behavioral and Brain Sciences 27 (2):264-266.
    The target article is important not only for black-box studies, but also for those interested in tracing cognitive processing and/or subjective experience. I provide two examples taken from my own research. I then proceed to discuss how best to analyze data from the n = 1 study, which has a factorial design.
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  23.  7
    A statistical model of data analysis in interactional psychology comments on the quantitative analysis of the scores of the" sr" inventory of anxiousness.A. Form & Trait Stai Spielberger - 1986 - In Piotr Buczkowski & Andrzej Klawiter (eds.), Theories of Ideology and Ideology of Theories. Rodopi. pp. 149.
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  24.  18
    Medication safety: using incident data analysis and clinical focus groups to inform educational needs.Hannah Hesselgreaves, Anne Watson, Andy Crawford, Murray Lough & Paul Bowie - 2013 - Journal of Evaluation in Clinical Practice 19 (1):30-38.
  25. A statistical model of data analysis in interactional psychology.J. Brzeziński - 1986 - In Piotr Buczkowski & Andrzej Klawiter (eds.), Theories of Ideology and Ideology of Theories. Rodopi.
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  26.  6
    Empirical Scenarios of Fake Data Analysis: The Sample Generation by Replacement Approach.Massimiliano Pastore, Massimo Nucci, Andrea Bobbio & Luigi Lombardi - 2017 - Frontiers in Psychology 8.
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  27.  7
    Commentary: Exploratory data analysis.Brian D. Haig - 2015 - Frontiers in Psychology 6.
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  28.  57
    Pitfalls and promises: The use of secondary data analysis in educational research.Emma Smith - 2008 - British Journal of Educational Studies 56 (3):323-339.
    This paper considers the use of secondary data analysis in educational research. It addresses some of the promises and potential pitfalls that influence its use and explores a possible role for the secondary analysis of numeric data in the 'new' political arithmetic tradition of social research. Secondary data analysis is a relatively under-used technique in Education and in the social sciences more widely, and it is an approach that is not without its critics. Here (...)
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  29.  18
    Categories and Concepts: Theoretical Views and Inductive Data Analysis.Iven van Mechelen, James Hampton, Ryszard S. Michalski & Peter Theuns (eds.) - 1993 - Academic Press.
    A book aimed at advanced undergraduates and graduates in cognitive science and artificial intelligence, linguistics, applied mathematics and data analysis.
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  30.  9
    Improvement of substation Monitoring aimed to improve its efficiency with the help of Big Data Analysis*.Abdul Rahman, Mohammad Asif Ikbal & Ruiling Yu - 2021 - Journal of Intelligent Systems 30 (1):499-510.
    Data analysis has become most widespread field of research and it has extended in almost every field of study. Considering the recent trends and developments in the field of communication and information technology, there is a scope of combining the monitoring of substation equipment with big data analysis technology. That will result in an improved data analysis ability, information sharing and utilization rate of monitoring data. In the proposed work, the authors have introduced (...)
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  31.  16
    Heart Rate Variability and Cardiac Vagal Tone in Psychophysiological Research – Recommendations for Experiment Planning, Data Analysis, and Data Reporting.Sylvain Laborde, Emma Mosley & Julian F. Thayer - 2017 - Frontiers in Psychology 8.
  32. Political communication in Social Networks Election campaigns and digital data analysis: a bibliographic review.Luca Corchia - 2019 - Rivista Trimestrale di Scienza Dell’Amministrazione (2):1-50.
    The outcomes of a bibliographic review on political communication, in particular electoral communication in social networks, are presented here. The electoral campaigning are a crucial test to verify the transformations of the media system and of the forms and uses of the linguistic acts by dominant actors in public sphere – candidates, parties, journalists and Gatekeepers. The aim is to reconstruct the first elements of an analytical model on the transformations of the political public sphere, with which to systematize the (...)
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  33.  34
    Where health and environment meet: the use of invariant parameters in big data analysis.Sabina Leonelli & Niccolò Tempini - 2018 - Synthese 198 (Suppl 10):1-20.
    The use of big data to investigate the spread of infectious diseases or the impact of the built environment on human wellbeing goes beyond the realm of traditional approaches to epidemiology, and includes a large variety of data objects produced by research communities with different methods and goals. This paper addresses the conditions under which researchers link, search and interpret such diverse data by focusing on “data mash-ups”—that is the linking of data from epidemiology, biomedicine, (...)
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  34.  7
    Associations Between Severity of Depression, Lifestyle Patterns, and Personal Factors Related to Health Behavior: Secondary Data Analysis From a Randomized Controlled Trial.Alejandra Aguilar-Latorre, Maria J. Serrano-Ripoll, Bárbara Oliván-Blázquez, Elena Gervilla & Capilla Navarro - 2022 - Frontiers in Psychology 13.
    BackgroundDepression is a prevalent condition that has a significant impact on psychosocial functioning and quality of life. The onset and persistence of depression have been linked to a variety of biological and psychosocial variables. Many of these variables are associated with specific lifestyle characteristics, such as physical activity, diet, and sleep patterns. Some psychosocial determinants have an impact on people’ health-related behavior change. These include personal factors such as sense of coherence, patient activation, health literacy, self-efficacy, and procrastination. This study (...)
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  35. Neutrosophic Association Rule Mining Algorithm for Big Data Analysis.Mohamed Abdel-Basset, Mai Mohamed, Florentin Smarandache & Victor Chang - 2018 - Symmetry 10 (4):1-19.
    Big Data is a large-sized and complex dataset, which cannot be managed using traditional data processing tools. Mining process of big data is the ability to extract valuable information from these large datasets. Association rule mining is a type of data mining process, which is indented to determine interesting associations between items and to establish a set of association rules whose support is greater than a specific threshold. The classical association rules can only be extracted from (...)
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  36.  19
    Preschool Metacognitive Skill Assessment in Order to Promote Educational Sensitive Response From Mixed-Methods Approach: Complementarity of Data Analysis.Elena Escolano-Pérez, Maria Luisa Herrero-Nivela & M. Teresa Anguera - 2019 - Frontiers in Psychology 10.
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  37.  7
    Emerging practices and perspectives on Big Data analysis in economics: Bigger and better or more of the same?Eric Meyer, Ralph Schroeder & Linnet Taylor - 2014 - Big Data and Society 1 (2).
    Although the terminology of Big Data has so far gained little traction in economics, the availability of unprecedentedly rich datasets and the need for new approaches – both epistemological and computational – to deal with them is an emerging issue for the discipline. Using interviews conducted with a cross-section of economists, this paper examines perspectives on Big Data across the discipline, the new types of data being used by researchers on economic issues, and the range of responses (...)
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  38.  9
    Correlation Analysis Between Teachers’ Teaching Psychological Behavior and Classroom Development Based on Data Analysis.Zhongtao Fan & Jun Liu - 2022 - Frontiers in Psychology 13.
    Teachers’ teaching psychological behavior and classroom development are the current research hotspots in the field of educational psychology. How to realize the data analysis of teachers’ teaching psychological behavior and classroom development is a problem that researchers urgently need to solve. Based on the theory of data correlation analysis, this paper uses modern Internet technology and big data analysis teacher teaching system to quantitatively and qualitatively analyze the potential of students, and build a corresponding (...)
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  39.  97
    From Everyday To Psychological Description: Analyzing the Moments of a Qualitative Data Analysis.Frederick J. Wertz - 1983 - Journal of Phenomenological Psychology 14 (1-2):197-241.
  40.  8
    Landscape Image Layout Optimization Extraction Simulation of 3D Pastoral Complex under Big Data Analysis.Juan Du & Yuelin Long - 2020 - Complexity 2020:1-11.
    Big data has brought about opportunities for landscape architecture, changing the design thinking of layout optimization simulation, expanding the platform for public participation in layout optimization simulation design, reflecting social and humanistic care, and promoting the integration of discipline cooperation and data. At the same time, it also brings about challenges. The proposal of data theory, the acquisition and analysis of data, and the protection of privacy are all issues that we need to face and (...)
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  41.  49
    Ethical Issues and Guidelines for Conducting Data Analysis in Psychological Research.Rachel Wasserman - 2013 - Ethics and Behavior 23 (1):3-15.
    Psychologists are directed by ethical guidelines in most areas of their practice. However, there are very few guidelines for conducting data analysis in research. The aim of this article is to address the need for more extensive ethical guidelines for researchers who are post–data collection and beginning their data analyses. Improper data analysis is an ethical issue because it can result in publishing false or misleading conclusions. This article includes a review of ethical implications (...)
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  42.  13
    Methodological Considerations in Ethical Review — 3.: Sampling and Data Analysis.M. Tully, A. Vail, S. Roberts, L. Brabin & R. McNamee - 2009 - Research Ethics 5 (3):121-124.
    This is the third of four papers to be published in Research Ethics Review in 2009, that address methodological issues of relevance to research ethics committees. It focuses on three issues: the representativeness of study participants, the size of the study and data analysis. Differences between best practices in qualitative and quantitative research are highlighted. The paper argues that, while lack of representativeness may not be unethical, the ethical implications of unnecessary restrictions on eligibility should be considered by (...)
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  43.  6
    Where health and environment meet: the use of invariant parameters in big data analysis.Sabina Leonelli & Niccolò Tempini - 2018 - Synthese 198 (S10):2485-2504.
    The use of big data to investigate the spread of infectious diseases or the impact of the built environment on human wellbeing goes beyond the realm of traditional approaches to epidemiology, and includes a large variety of data objects produced by research communities with different methods and goals. This paper addresses the conditions under which researchers link, search and interpret such diverse data by focusing on “data mash-ups”—that is the linking of data from epidemiology, biomedicine, (...)
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  44.  37
    Evidence in Neuroimaging: Towards a Philosophy of Data Analysis.Jessey Wright - 2017 - Dissertation, The University of Western Ontario
    Neuroimaging technology is the most widely used tool to study human cognition. While originally a promising tool for mapping the content of cognitive theories onto the structures of the brain, recently developed tools for the analysis, handling and sharing of data have changed the theoretical landscape of cognitive neuroscience. Even with these advancements philosophical analyses of evidence in neuroimaging remain skeptical of the promise of neuroimaging technology. These views often treat the analysis techniques used to make sense (...)
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  45.  17
    Effectiveness of nursing‐led inpatient care for patients with post‐acute health care needs: secondary data analysis from a programme of randomized controlled trials.Ruth Harris, Jenifer Wilson-Barnett & Peter Griffiths - 2007 - Journal of Evaluation in Clinical Practice 13 (2):198-205.
  46.  34
    What is a data model?: An anatomy of data analysis in high energy physics.Antonis Antoniou - 2021 - European Journal for Philosophy of Science 11 (4):1-33.
    Many decades ago Patrick Suppes argued rather convincingly that theoretical hypotheses are not confronted with the direct, raw results of an experiment, rather, they are typically compared with models of data. What exactly is a data model however? And how do the interactions of particles at the subatomic scale give rise to the huge volumes of data that are then moulded into a polished data model? The aim of this paper is to answer these questions by (...)
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  47.  10
    Characteristics of Life-Sustaining Treatment Decisions: National Data Analysis in South Korea.Jiyeon Choi, Heejung Jeon & Ilhak Lee - 2023 - Asian Bioethics Review 16 (1):33-46.
    This study analyzed the national data on life-sustaining treatment decisions from 2018 to 2020 to find out the characteristics of South Korea’s end-of-life procedure according to the decision-making approach and process. We collected the data of 84,422 patients registered with the National Agency for Management of Life-sustaining Treatment. We divided the patients into four groups (G1, G2, G3, and G4) according to the decision-making approach. A descriptive analysis of each group was conducted using indicators such as the (...)
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  48.  31
    Classification issue in the ivf icsi/et data analysis: Early treatment outcome prognosis.Paweł Malinowski, Robert Milewski, Piotr Ziniewicz, Anna Justyna Milewsk, Jan Czerniecki & Sławomir Wołczyński - 2013 - Studies in Logic, Grammar and Rhetoric 35 (1):103-115.
    Infertility is a serious social problem. Very often the only treatment possibility are IVF methods. This study explores the possibility of outcome prediction in the early stages of treatment. The data, collected from the previous treatment cycles, were divided into four subsets, which corresponded to the selected stages of treatment. On each such subset, sophisticated data mining analysis was carried out, with appropriate imputations and classification procedures. The obtained results indicate that there is a possibility of predicting (...)
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  49.  6
    A Risk Assessment Algorithm for College Student Entrepreneurship Based on Big Data Analysis.Chengjun Zhou & DuanXu Wang - 2021 - Complexity 2021:1-12.
    College student entrepreneurship is a complex and dynamic process, in which the potential risks faced by entrepreneurial enterprises are interactive and diverse. The changes in risk assessment for college student entrepreneurship are also dynamic and nonlinear and are affected by many factors, which make the risk assessment process for college student entrepreneurship quite complicated. Big data analysis technology is a new product formed under the background of cloud computing and Internet technology, which has the characteristics of large (...) scale, multiple data types, and strong data value and provides more technical support for the researches on the risk assessment algorithm for college student entrepreneurship. On the basis of summarizing and analyzing previous research results, this article expounded the research status and significance of the risk assessment algorithm for college student entrepreneurship, elaborated the development background, current status, and future challenges of big data analysis technology, introduced the basic principles of support vector machine and hierarchical analytic process, constructed a risk assessment model for college student entrepreneurship based on big data analysis, analyzed the risk factors and assessment indicators of the entrepreneurial model, proposed a risk assessment algorithm for college student entrepreneurship based on big data analysis, performed the discrimination coefficient calculation and comprehensive correlation optimization, and finally conducted a case experiment and its result analysis. The study results show that the risk assessment algorithm for college student entrepreneurship based on big data analysis can effectively realize the comprehensive management of risk factors, make full use of the value of assessment parameter data, and significantly improve the accuracy and efficiency of the risk assessment for college student entrepreneurship, providing more technical support for the researches on the risk assessment algorithm for college student entrepreneurship. The study results of this article provide a reference for further researches on the risk assessment algorithm of college student entrepreneurship based on big data analysis. (shrink)
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  50.  5
    Construction of an IoT customer operation analysis system based on big data analysis and human-centered artificial intelligence for web 4.0.Wei Li, Chenye Han, Baojing Liu & Xinxin Liu - 2022 - Journal of Intelligent Systems 31 (1):927-943.
    Internet of thing building sensors can capture several types of building operations, performances, and conditions and send them to a central dashboard to analyze data to support decision-making. Traditionally, laptops and cell phones are the majority of Internet-connected devices. IoT tracking allows customers to close the distance between devices and enterprises by collecting and analyzing various IoT data through connected devices, customers, and applications on the network. There is a lack of requirements for IoT edge applications security and (...)
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