Tesis sobre el tema "Spatial analysis (Statistics) Regression analysis"
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Yue, Yu. "Spatially adaptive priors for regression and spatial modeling". Diss., Columbia, Mo. : University of Missouri-Columbia, 2008. http://hdl.handle.net/10355/6059.
Texto completoThe entire dissertation/thesis text is included in the research.pdf file; the official abstract appears in the short.pdf file (which also appears in the research.pdf); a non-technical general description, or public abstract, appears in the public.pdf file. Title from title screen of research.pdf file (viewed on August 3, 2009) Vita. Includes bibliographical references.
Sikdar, Khokan Chandra. "Application of geographically weighted regression for assessing spatial non-stationarity /". Internet access available to MUN users only, 2003. http://collections.mun.ca/u?/theses,172881.
Texto completoWheeler, David C. "Diagnostic tools and remedial methods for collinearity in linear regression models with spatially varying coefficients". Columbus, Ohio : Ohio State University, 2006. http://rave.ohiolink.edu/etdc/view?acc%5Fnum=osu1155413322.
Texto completoBurke, Tommy. "Evaluation of visualisations of geographically weighted regression, with perceptual stability". Thesis, University of St Andrews, 2016. http://hdl.handle.net/10023/15680.
Texto completoKordi, Maryam. "Geographically weighted spatial interaction (GWSI)". Thesis, University of St Andrews, 2013. http://hdl.handle.net/10023/4112.
Texto completoWang, Zilong. "Analysis of Binary Data via Spatial-Temporal Autologistic Regression Models". UKnowledge, 2012. http://uknowledge.uky.edu/statistics_etds/3.
Texto completoSha, Zhe. "Estimation of conditional auto-regressive models". Thesis, University of Oxford, 2016. https://ora.ox.ac.uk/objects/uuid:6cc56943-2b4d-4931-895a-f3ab67e48e3a.
Texto completoMartinho, Maria. "Spatial analysis of exposure coefficients with applications to stomach cancer". Thesis, University of Oxford, 2007. http://ora.ox.ac.uk/objects/uuid:427fe13e-39b1-4bfd-a3a8-be957120cf44.
Texto completoHuang, Fang. "Modeling patterns of small scale spatial variation in soil". Link to electronic thesis, 2006. http://www.wpi.edu/Pubs/ETD/Available/etd-011106-155345/.
Texto completoKeywords: spatial variations; nested random effects models; semivariogram models; kriging methods; multiple logistic regression models; missing; multiple imputation. Includes bibliographical references (p. 35-36).
Chun, Yongwan. "Behavioral specifications of network autocorrelation in migration modeling an analysis of migration flows by spatial filtering /". Columbus, Ohio : Ohio State University, 2007. http://rave.ohiolink.edu/etdc/view?acc%5Fnum=osu1187188476.
Texto completoBlazzard, Kimberly. "Geostatistical Analysis of Potential Sinkhole Risk: Examining Spatial and Temporal Climate Relationships in Tennessee and Florida". Digital Commons @ East Tennessee State University, 2018. https://dc.etsu.edu/etd/3426.
Texto completoSener, Ipek Nese. "An Innovative Model Integrating Spatial And Statistical Analyses For A Comprehensive Traffic Accident Study". Master's thesis, METU, 2005. http://etd.lib.metu.edu.tr/upload/3/12606148/index.pdf.
Texto completoCosta, Julio C. "Analysis and optimization of empirical path loss models and shadowing effects for the Tampa Bay area in the 2.6 GHz band". [Tampa, Fla] : University of South Florida, 2008. http://purl.fcla.edu/usf/dc/et/SFE0002547.
Texto completoGoldman, Gretchen Tanner. "Characterization and impact of ambient air pollution measurement error in time-series epidemiologic studies". Diss., Georgia Institute of Technology, 2011. http://hdl.handle.net/1853/41158.
Texto completoEvans, Ben Richard. "Data-driven prediction of saltmarsh morphodynamics". Thesis, University of Cambridge, 2018. https://www.repository.cam.ac.uk/handle/1810/276823.
Texto completoHu, ChungLynn. "Nonignorable nonresponse in the logistic regression analysis /". The Ohio State University, 1998. http://rave.ohiolink.edu/etdc/view?acc_num=osu1487950153601414.
Texto completoButler, Thomas W. "Spatial statistics and analysis of earth's ionosphere". Thesis, Boston University, 2013. https://hdl.handle.net/2144/10950.
Texto completoThe ionosphere, a layer of Earths upper atmosphere characterized by energetic charged particles, serves as a natural plasma laboratory and supplies proxy diagnostics of space weather drivers in the magnetosphere and the solar wind. The ionosphere is a highly dynamic medium, and the spatial structure of observed features (such as auroral light emissions, charge density, temperature, etc.) is rich with information when analyzed in the context of fluid, electromagnetic, and chemical models. Obtaining measurements with higher spatial and temporal resolution is clearly advantageous. For instance, measurements obtained with a new electronically-steerable incoherent scatter radar (ISR) present a unique space-time perspective compared to those of a dish-based ISR. However, there are unique ambiguities for this modality which must be carefully considered. The ISR target is stochastic, and the fidelity of fitted parameters (ionospheric densities and temperatures) requires integrated sampling, creating a tradeoff between measurement uncertainty and spatio-temporal resolution. Spatial statistics formalizes the relationship between spatially dispersed observations and the underlying process(es) they represent. A spatial process is regarded as a random field with its distribution structured (e.g., through a correlation function) such that data, sampled over a spatial domain, support inference or prediction of the process. Quantification of uncertainty, an important component of scientific data analysis, is a core value of spatial statistics. This research applies the formalism of spatial statistics to the analysis of Earth's ionosphere using remote sensing diagnostics. In the first part, we consider the problem of volumetric imaging using phased-array ISR based on optimal spatial prediction ("kriging"). In the second part, we develop a technique for reconstructing two-dimensional ion flow fields from line-of-sight projections using Tikhonov regularization. In the third part, we adapt our spatial statistical approach to global ionospheric imaging using total electron content (TEC) measurements derived from navigation satellite signals.
Liu, Hai Chan Kung-sik. "Semiparametric regression analysis of zero-inflated data". Iowa City : University of Iowa, 2009. http://ir.uiowa.edu/etd/308.
Texto completoMaimon, Geva. "A Bayesian spatial analysis of glass data /". Thesis, McGill University, 2004. http://digitool.Library.McGill.CA:80/R/?func=dbin-jump-full&object_id=82284.
Texto completoVan, Deventer Petrus Jacobus Uys. "Outliers, influential observations and robust estimation in non-linear regression analysis and discriminant analysis". Doctoral thesis, University of Cape Town, 1993. http://hdl.handle.net/11427/4363.
Texto completoWilson, Helen Elizabeth. "Statistical analysis of replicated spatial point patterns". Thesis, Lancaster University, 1998. http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.268009.
Texto completoDai, Elin y Lara Güleryüz. "Factors that influence condominium pricing in Stockholm: A regression analysis : A regression analysis". Thesis, KTH, Matematisk statistik, 2019. http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-254235.
Texto completoDenna studie ämnar till att undersöka vilka faktorer som är av betydelse när syftet är att förutsäga prissättningen på bostadsrätter i Stockholms innerstad. Genom att använda multipel linjär regression, transformation av responsvariabeln, samt en mängd olika metoder för att förfina modellen, togs en slutgiltig, out of sample-validerad modell med ett 95%-konfidensintervall fram. För att genomföra de statistiska metoderna användes programmet R. Denna studie är avgränsad till de distrikt i Stockholms innerstad vars postnummer varierar mellan 112-118, därav är det viktigt att modellen endast appliceras på dessa områden eftersom de är inkluderade i modellen som regressorer. Tidsperioden inom vilket slutpriserna analyserades var mellan januari 2014 och april 2019, i vilket valutans volatilitet inte har analyserats som en ekonomisk påverkande faktor. Den slutgiltiga modellen innefattar de följande variablerna: våning, boarea, månadsavgift, konstruktionsår, distrikt.
Kim, Hyon-Jung. "Nonparametric Spatial analysis in spectral and space domains". NCSU, 2000. http://www.lib.ncsu.edu/theses/available/etd-20000822-235839.
Texto completoKIM, HYON-JUNG. Variance Estimation in Spatial Regression Using a NonparametricSemivariogram Based on Residuals. (Under the direction of Professor Dennis D. Boos.)The empirical semivariogram of residuals from a regression model withstationary errors may be used to estimate the covariance structure of the underlyingprocess.For prediction (Kriging) the bias of the semivariogram estimate induced byusing residuals instead of errors has only a minor effect because thebias is small for small lags. However, for estimating the variance of estimatedregression coefficients and of predictions,the bias due to using residuals can be quite substantial. Thus wepropose a method for reducing the bias in empirical semivariogram estimatesbased on residuals. The adjusted empirical semivariogram is then isotonizedand made positive definite and used to estimate the variance of estimatedregression coefficients in a general estimating equations setup.Simulation results for least squares and robust regression show that theproposed method works well in linear models withstationary correlated errors. Spectral Analysis with Spatial Periodogram and Data Tapers.(Under the direction of Professor Montserrat Fuentes.)The spatial periodogram is a nonparametric estimate of the spectral density, which is the Fourier Transform of the covariance function. The periodogram is a useful tool to explain the dependence structure of aspatial process.Tapering (data filtering) is an effective technique to remove the edge effects even inhigh dimensional problemsand can be applied to the spatial data in order to reduce the bias of the periodogram.However, the variance of the periodogram increases as the bias is reduced.We present a method to choose an appropriate smoothing parameter for datatapers and obtain better estimates of the spectral densityby improving the properties of the periodogram.The smoothing parameter is selected taking intoaccount the trade-off between bias and variance of the taperedperiodogram. We introduce a new asymptotic approach for spatial datacalled `shrinking asymptotics', which combines theincreasing-domain and the fixed-domain asymptotics.With this approach, the tapered spatial periodogram can be usedto determine uniquely the spectral density of the stationary process,avoiding the aliasing problem.
Zhang, Zhigang. "Nonproportional hazards regression models for survival analysis /". free to MU campus, to others for purchase, 2004. http://wwwlib.umi.com/cr/mo/fullcit?p3144473.
Texto completoMeless, Dejen. "Test Cycle Optimization using Regression Analysis". Thesis, Linköping University, Automatic Control, 2010. http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-54809.
Texto completoIndustrial robots make up an important part in today’s industry and are assigned to a range of different tasks. Needless to say, businesses need to rely on their machine park to function as planned, avoiding stops in production due to machine failures. This is where fault detection methods play a very important part. In this thesis a specific fault detection method based on signal analysis will be considered. When testing a robot for fault(s), a specific test cycle (trajectory) is executed in order to be able to compare test data from different test occasions. Furthermore, different test cycles yield different measurements to analyse, which may affect the performance of the analysis. The question posed is: Can we find an optimal test cycle so that the fault is best revealed in the test data? The goal of this thesis is to, using regression analysis, investigate how the presently executed test cycle in a specific diagnosis method relates to the faults that are monitored (in this case a so called friction fault) and decide if a different one should be recommended. The data also includes representations of two disturbances.
The results from the regression show that the variation in the test quantities utilised in the diagnosis method are not explained by neither the friction fault or the test cycle. It showed that the disturbances had too large effect on the test quantities. This made it impossible to recommend a different (optimal) test cycle based on the analysis.
Othuon, Lucas Onyango A. "The accuracy of parameter estimates and coverage probability of population values in regression models upon different treatments of systematically missing data". Thesis, National Library of Canada = Bibliothèque nationale du Canada, 1998. http://www.collectionscanada.ca/obj/s4/f2/dsk2/ftp02/NQ34604.pdf.
Texto completoMa, Kunlei. "Spatial Analysis of Chinese Air Transportation". University of Cincinnati / OhioLINK, 2015. http://rave.ohiolink.edu/etdc/view?acc_num=ucin1446546987.
Texto completoFiery, Michael Allen. "A form of two-phase sampling utilizing regression analysis". Morgantown, W. Va. : [West Virginia University Libraries], 2005. https://eidr.wvu.edu/etd/documentdata.eTD?documentid=4312.
Texto completoTitle from document title page. Document formatted into pages; contains iv, 81 p. : ill. (some col.). Includes abstract. Includes bibliographical references (p. 32).
Zhou, Qi Jessie. "Inferential methods for extreme value regression models /". *McMaster only, 2002.
Buscar texto completoSandrock, Brian Arthur. "Spatial Analysis of Foreclosures in Hillsborough County". Scholar Commons, 2014. https://scholarcommons.usf.edu/etd/5438.
Texto completoLiu, Hai. "Semiparametric regression analysis of zero-inflated data". Diss., University of Iowa, 2009. https://ir.uiowa.edu/etd/308.
Texto completoDonkor, Faustina Fosua. "Spatial Analysis of Teen Births in North Central Texas". Thesis, University of North Texas, 2001. https://digital.library.unt.edu/ark:/67531/metadc3056/.
Texto completoHolmgren, Rachelle. "Challenges Involved in the Automation of Regression Analysis". Scholarship @ Claremont, 2016. http://scholarship.claremont.edu/cmc_theses/1405.
Texto completoMitchell, Napoleon. "Outliers and Regression Models". Thesis, University of North Texas, 1992. https://digital.library.unt.edu/ark:/67531/metadc279029/.
Texto completoLuna, Ronaldo. "Liquefaction evaluation using a spatial analysis system". Diss., Georgia Institute of Technology, 1995. http://hdl.handle.net/1853/19413.
Texto completoAssefa, Yared. "Time series and spatial analysis of crop yield". Thesis, Kansas State University, 2012. http://hdl.handle.net/2097/15142.
Texto completoDepartment of Statistics
Juan Du
Space and time are often vital components of research data sets. Accounting for and utilizing the space and time information in statistical models become beneficial when the response variable in question is proved to have a space and time dependence. This work focuses on the modeling and analysis of crop yield over space and time. Specifically, two different yield data sets were used. The first yield and environmental data set was collected across selected counties in Kansas from yield performance tests conducted for multiple years. The second yield data set was a survey data set collected by USDA across the US from 1900-2009. The objectives of our study were to investigate crop yield trends in space and time, quantify the variability in yield explained by genetics and space-time (environment) factors, and study how spatio-temporal information could be incorporated and also utilized in modeling and forecasting yield. Based on the format of these data sets, trend of irrigated and dryland crops was analyzed by employing time series statistical techniques. Some traditional linear regressions and smoothing techniques are first used to obtain the yield function. These models were then improved by incorporating time and space information either as explanatory variables or as auto- or cross- correlations adjusted in the residual covariance structures. In addition, a multivariate time series modeling approach was conducted to demonstrate how the space and time correlation information can be utilized to model and forecast yield and related variables. The conclusion from this research clearly emphasizes the importance of space and time components of data sets in research analysis. That is partly because they can often adjust (make up) for those underlying variables and factor effects that are not measured or not well understood.
Slack, Marc G. "Spatial and temporal path planning". Thesis, This resource online, 1987. http://scholar.lib.vt.edu/theses/available/etd-04272010-020255/.
Texto completoDetwiler, Dana. "Microcomputer implementation of robust regression techniques". Master's thesis, This resource online, 1993. http://scholar.lib.vt.edu/theses/available/etd-03302010-020305/.
Texto completoLi, Youjun. "Bayesian Non-Linear Quantile Regression with Application in Decline Curve Analysis for Petroleum Reservoirs". Case Western Reserve University School of Graduate Studies / OhioLINK, 2017. http://rave.ohiolink.edu/etdc/view?acc_num=case1491607854874719.
Texto completoJensen, Daniel. "Spatial analysis and visualization in the NBA using GIS applications". Thesis, California State University, Long Beach, 2014. http://pqdtopen.proquest.com/#viewpdf?dispub=1527009.
Texto completoBasketball is a unique sport in which the use of space and time is greatly important for a team’s success. Furthermore, the National Basketball Association (NBA) is undergoing drastic change in terms of the way teams approach spatial issues as well as the spatio-temporal technologies and analytics. Given these facts, Geographic Information Systems (GIS) provide the opportunity to develop new analytic and visual methodologies to perform spatial analysis for team performances and meet the league’s changing needs. This project thus develops new approaches, methods, and toolsets using GIS to demonstrate its efficacy and potential for professional application in the NBA. The first application uses GIS to adapt Relative Motion analysis techniques to an existing play, seeking to represent the average motion characteristics entailed therein. The other application uses a tool developed to map, glean spatial statistics, and model the use and importance of floor spacing for teams in the NBA.
Yin, Jiangyong. "Bayesian Analysis of Non-Gaussian Stochastic Processes for Temporal and Spatial Data". The Ohio State University, 2014. http://rave.ohiolink.edu/etdc/view?acc_num=osu1406928537.
Texto completoWhite, Gentry. "Bayesian semiparametric spatial and joint spatio-temporal modeling". Diss., Columbia, Mo. : University of Missouri-Columbia, 2006. http://hdl.handle.net/10355/4450.
Texto completoThe entire dissertation/thesis text is included in the research.pdf file; the official abstract appears in the short.pdf file (which also appears in the research.pdf); a non-technical general description, or public abstract, appears in the public.pdf file. Title from title screen of research.pdf file viewed on (May 2, 2007) Vita. Includes bibliographical references.
Pereira, Sandra M. C. "Analysis of spatial point patterns using hierarchical clustering algorithms". University of Western Australia. School of Mathematics and Statistics, 2003. http://theses.library.uwa.edu.au/adt-WU2004.0056.
Texto completoLi, Hongfei. "Approximate profile likelihood estimation for spatial-dependence parameters". Columbus, Ohio : Ohio State University, 2007. http://rave.ohiolink.edu/etdc/view?acc%5Fnum=osu1191267954.
Texto completoDai, Wenlin. "Different-based methods in nonparametric regression models". HKBU Institutional Repository, 2014. https://repository.hkbu.edu.hk/etd_oa/40.
Texto completoRUTHERFORD, BRIAN MILNE. "BOOTSTRAP AND RELATED METHODS FOR APPROXIMATE CONFIDENCE BOUNDS IN NONPARAMETRIC REGRESSION". Diss., The University of Arizona, 1986. http://hdl.handle.net/10150/183923.
Texto completoGuo, Xu. "Checking the adequacy of regression models with complex data structure". HKBU Institutional Repository, 2014. https://repository.hkbu.edu.hk/etd_oa/90.
Texto completoYiu, Man-lung. "Advanced query processing on spatial networks". Click to view the E-thesis via HKUTO, 2006. http://sunzi.lib.hku.hk/hkuto/record/B36279365.
Texto completoYiu, Man-lung y 姚文龍. "Advanced query processing on spatial networks". Thesis, The University of Hong Kong (Pokfulam, Hong Kong), 2006. http://hub.hku.hk/bib/B36279365.
Texto completoHoriguchi, Akira. "Bayesian Additive Regression Trees: Sensitivity Analysis and Multiobjective Optimization". The Ohio State University, 2020. http://rave.ohiolink.edu/etdc/view?acc_num=osu1606841319315633.
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