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_cEG-GICUC
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041 0 _aeng
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049 _aDeposit
082 0 4 _a519.5
092 _a519.5
_221
097 _aPh.D
099 _aCai01.18.04.Ph.D.2025.Mu.P
100 0 _aMuhammad El- Metwally Muhammad Seliem,
_epreparation.
245 1 2 _aA proposed estimatoro f generalized semiparametric regression model /
_cby Muhammad El- Metwally Muhammad Seliem ; Supervisors Prof. Sayed Mesheal El-Sayed, Prof. Mohamed Reda Abonaze.
246 1 5 _aمقدرمقترح لنموذج الإنحدار شبه المعلمي المُعَمَّم
264 0 _c2025.
300 _a164 Leaves :
_billustrations ;
_c30 cm. +
_eCD.
336 _atext
_2rda content
337 _aUnmediated
_2rdamedia
338 _avolume
_2rdacarrier
502 _aThesis (Ph.D)-Cairo University, 2025.
504 _aBibliography: pages 119-133.
520 3 _aThis dissertation develops three generalized semiparametric regression models (GSPRMs) as an extension of parametric generalized linear models (GLMs) to address the dual chal- lenges of excess zeros and nonlinear covariate effects in count data and proportion data. Two estimators are developed for these models: penalized smoothing splines (Ps) and P-splines (Pb). Within the GSPRMs framework, three specific models are developed, each estimated using both developed estimators. First, the semiparametric partially Poisson (SPPO) regres- sion model captures nonparametric covariate effects in standard count data. Second, the semiparametric partially zero-inflated Poisson (SPZIP) regression model incorporates logis- tic regression components to address excess zeros in count data. Third, the semiparametric partially zero-inflated Beta (SPZIBE) regression model handles proportion data with zero- inflation. To evaluate the performance and applicability of these developed models, extensive sim- ulation studies and real-world applications were conducted, demonstrating their robustness and practical utility. The Pb estimator of the extended models (SPPO-Pb, SPZIP-Pb, SPZIBE- Pb) show superior performance across evaluation metrics, including Akaike Information Cri- terion (AIC), Bayesian Information Criterion (BIC), and root mean square error (RMSE), achieving RMSE reductions of 40–58 % compared to standard Poisson, zero-inflated Poisson (ZIP) and zero-inflated Beta (ZIBE) regression models estimated via maximum likelihood (ML). Real-world applications to the Biochemists dataset (count data) and the Varieties of Democracy (V-Dem) dataset, a global socio-political dataset (proportion data), validate their utility across scientific and socio-political contexts. These models provide researchers in economics, political science, and social sciences with robust, interpretable tools for analyz- ing zero-inflated (ZI) data with enhanced predictive accuracy.
520 3 _aﺗﻌﺎﻟﺞ ﻫﺬﻩ ﺍﻷﻁﺮﻭﺣﺔ، ﺍﻟﺘﺤﺪﻳﺎﺕ ﺍﻟﻤﻨﻬﺠﻴﺔ ﻓﻲ ﻧﻤﺬﺟﺔ ﺑﻴﺎﻧﺎﺕ ﺍﻟﻌﺪ ﻭﺑﻴﺎﻧﺎﺕ ﺍﻟﻨﺴﺐ ﺍﻟﺘﻲ ﺗﻌﺎﻧﻲ ﻣﻦ ﻣﺸﻜﻠﺔ ﺍﻟﺘﻀﺨﻢ ﺍﻟﺼﻔﺮﻱ، ﻭﻫﻲ ﻣﺸﻜﻠﺔ ﺷﺎﺋﻌﺔ ﻓﻲ ﺍﻟﺒﻴﺎﻧﺎﺕ ﺍﻟﻮﺍﻗﻌﻴﺔ ﺍﻟﺘﻲ ﺗﺘﻤﺜﻞ ﻓﻲ ﻣﺠﺎﻻﺕ ﻣﺜﻞ ﺍﻻﻗﺘﺼﺎﺩ، ﺍﻟﻌﻠﻮﻡ ﺍﻟﺴﻴﺎﺳﻴﺔ، ﻋﻠﻢ ﺍﻷﻭﺑﺌﺔ، ﻭﺍﻟﻌﻠﻮﻡ ﺍﻻﺟﺘﻤﺎﻋﻴﺔ. ﻏﺎﻟﺒًﺎ ﻣﺎ ﺗﻔﺸﻞ ﻧﻤﺎﺫﺝ ﺍﻟﻤﻌﻠﻤﻴﺔ ﺍﻟﺘﻘﻠﻴﺪﻳﺔ، ﻣﺜﻞ ﺍﻧﺤﺪﺍﺭ ﺑﻮﺍﺳﻮﻥ (PO)، ﻭﺍﻧﺤﺪﺍﺭ ﺑﻮﺍﺳﻮﻥ ﻣﺘﻀﺨﻢ ﺍﻷﺻﻔﺎﺭ (ZIP)، ﻭﺍﻧﺤﺪﺍﺭ ﺑﻴﺘﺎ ﻣﺘﻀﺨﻢ ﺍﻷﺻﻔﺎﺭ (ZIBE)، ﻓﻲ ﺍﻟﺘﻘﺎﻁ ﺍﻟﻌﻼﻗﺎﺕ ﻏﻴﺮ ﺍﻟﺨﻄﻴﺔ ﺑﻴﻦ ﺍﻟﻤﺘﻐﻴﺮﺍﺕ ﺍﻟﺘﻔﺴﻴﺮﻳﺔ ﻭﺍﻟﻤﺘﻐﻴﺮﺍﺕ ﺍﻟﺘﺎﺑﻌﺔ، ﻣﻤﺎ ﻳﺆﺩﻱ ﺇﻟﻰ ﺍﻧﺤﻴﺎﺯ ﻓﻲ ﺍﻟﺘﻘﺪﻳﺮﺍﺕ ﻭﺍﻧﺨﻔﺎﺽ ﺍﻟﺪﻗﺔ ﺍﻟﺘﻨﺒﺆﻳﺔ. ﻛﻤﺎ ﺗﻔﺘﻘﺮ ﺍﻟﻨﻤﺎﺫﺝ ﺷﺒﻪ ﺍﻟﻤﻌﻠﻤﻴﺔ ﺍﻟﺤﺎﻟﻴﺔ ﺇﻟﻰ ﺁﻟﻴﺎﺕ ﻣﺪﻣﺠﺔ ﻟﻠﺘﻌﺎﻣﻞ ﻣﻊ ﺍﻟﺘﻀﺨﻢ ﺍﻟﺼﻔﺮﻱ، ﺍ ﺟﺪﻳﺪًﺍ ﻟﻨﻤﺎﺫﺝ ﺧﺎﺻﺔً ﻋﻨﺪ ﺍﻟﺘﻌﺎﻣﻞ ﻣﻊ ﺑﻴﺎﻧﺎﺕ ﺍﻟﻌﺪ ﻭﺍﻟﻨﺴﺐ ﻓﻲ ﺇﻁﺎﺭ ﻣﻮﺣﺪ. ﻟﻤﻌﺎﻟﺠﺔ ﻫﺬﻩ ﺍﻟﻔﺠﻮﺍﺕ، ﺗﺆﺳﺲ ﻫﺬﻩ ﺍﻷﻁﺮﻭﺣﺔ ﺇﻁﺎﺭ Penalized Smoothing) ﻳﻌﺘﻤﺪ ﻋﻠﻰ ﻣﻘﺪﺭﻳﻦ: ﺍﻟﺸﺮﺍﺋﺢ ﺍﻟﺘﻤﻬﻴﺪﻳﺔ ﺍﻟﻤﻌﺎﻗﺒﺔ ،(GSPRMs) ﻌﻤﻤﺔ ﺍﻻﻧﺤﺪﺍﺭ ﺷﺒﻪ ﺍﻟﻤﻌﻠﻤﻴﺔ ﺍﻟﻤ ،GSPRMs ﺍﻟﻤﻌﺎﻗﺒﺔ، ﺍﻟﻠﺬﻳﻦ ﻳﻌﺰﺯﺍﻥ ﺍﻟﻜﻔﺎءﺓ ﺍﻟﺤﺴﺎﺑﻴﺔ ﻭﺍﻟﻤﺮﻭﻧﺔ ﻓﻲ ﺍﻟﻨﻤﺬﺟﺔ. ﺿﻤﻦ ﻧﻤﺎﺫﺝ (B-spline) ﻭﺷﺮﺍﺋﺢ (Splines ُﻁﻮﺭﺕ ﺛﻼﺛﺔ ﻧﻤﺎﺫﺝ ﺟﺪﻳﺪﺓ ﻟﺘﻠﺒﻴﺔ ﺍﺣﺘﻴﺎﺟﺎﺕ ﺗﺤﻠﻴﻞ ﺍﻟﺒﻴﺎﻧﺎﺕ ﺍﻟﻤﻌﻘﺪﺓ: • ﻧﻤﺎﺫﺝ ﺍﻧﺤﺪﺍﺭ ﺑﻮﺍﺳﻮﻥ ﺷﺒﻪ ﺍﻟﻤﻌﻠﻤﻲ ﺍﻟﺠﺰﺋﻲ ﺍﻟﻤﻌﻤﻢ (SPPO): ﻳﺴﺘﺨﺪﻡ ﻫﺬﺍ ﺍﻟﻨﻤﻮﺫﺝ ﻛﻼً ﻣﻦ ﺷﺮﺍﺋﺢ Pb ﻭ Ps ﻻﻟﺘﻘﺎﻁ ﺎ ﻗﻮﻳًﺎ ﻭﻗﺎﺑﻼً ﻟﻠﺘﻔﺴﻴﺮ ً ﺍﻟﻌﻼﻗﺎﺕ ﻏﻴﺮ ﺍﻟﻤﻌﻠﻤﻴﺔ ﺑﻤﺮﻭﻧﺔ ﺑﻴﻦ ﺍﻟﻤﺘﻐﻴﺮﺍﺕ ﺍﻟﻤﺸﺘﺮﻛﺔ ﻭﺍﻻﺳﺘﺠﺎﺑﺔ ﺍﻟﻌﺪﺩﻳﺔ. ﻳﻮﻓﺮ SPPO ﻧﻬﺠ . ٍﻟﻠﺤﺎﻻﺕ ﺍﻟﺘﻲ ﻗﺪ ﻻ ﺗﺘﻤﻜﻦ ﻓﻴﻬﺎ ﺍﻟﻨﻤﺎﺫﺝ ﺍﻟﺨﻄﻴﺔ ﺍﻟﺘﻘﻠﻴﺪﻳﺔ ﻣﻦ ﺍﻟﺘﻘﺎﻁ ﻋﻤﻠﻴﺔ ﺗﻮﻟﻴﺪ ﺍﻟﺒﻴﺎﻧﺎﺕ ﺍﻟﻌﺪﺩﻳﺔ ﺍﻷﺳﺎﺳﻴﺔ ﺑﺸﻜﻞ ﻛﺎﻑ SPPO ﻊ ﻫﺬﺍ ﺍﻟﻨﻤﻮﺫﺝ ﺇﻁﺎﺭ ِّ• ﻧﻤﻮﺫﺝ ﺍﻧﺤﺪﺍﺭ ﺑﻮﺍﺳﻮﻥ ﺷﺒﻪ ﺍﻟﻤﻌﻠﻤﻲ ﺍﻟﺠﺰﺋﻲ ﺍﻟﻤﻌﻤﻢ ﻣﺘﻀﺨﻢ ﺍﻷﺻﻔﺎﺭ (SPZIP): ﻳُﻮﺳ SPZIP ﻳﺘﻀﻤﻦ .Ps ﻭ Pb ﻟﻤﻌﺎﻟﺠﺔ ﺑﻴﺎﻧﺎﺕ ﺍﻟﻌﺪ ﺍﻟﺘﻲ ﺗﻌﺎﻧﻲ ﻣﻦ ﻣﺸﻜﻠﺔ ﺍﻟﺘﻀﺨﻢ ﺍﻟﺼﻔﺮﻱ، ﺑﺎﺳﺘﺨﺪﺍﻡ ﻛﻞ ﻣﻦ ﺷﺮﺍﺋﺢ ﻣﻜﻮﻥ ﺗﻀﺨﻢ ﺻﻔﺮﻱ، ﻳﺘﻢ ﻧﻤﺬﺟﺘﻪ ﺑﺎﺳﺘﺨﺪﺍﻡ ﺩﺍﻟﺔ ﺍﻟﺮﺑﻂ (logit)، ﻟﺤﺴﺎﺏ ﻛﻞ ﻣﻦ ﺍﻷﺻﻔﺎﺭ ﺍﻟﻬﻴﻜﻠﻴﺔ ﻭﺍﻟﻌﺸﻮﺍﺋﻴﺔ. ﻳﻮﻓﺮ ﻫﺬﺍ ﺃﻛﺜﺮ ﺩﻗﺔ ﻭﻭﺍﻗﻌﻴﺔ ﻟﻠﺒﻴﺎﻧﺎﺕ ﺫﺍﺕ ﺍﻷﺻﻔﺎﺭ ﺍﻟﺰﺍﺋﺪﺓ. ًﺍﻟﻨﻬﺞ ﺗﻤﺜﻴﻼ ﺎ ﻟﺘﺤﻠﻴﻞ ً• ﻧﻤﻮﺫﺝ ﺍﻧﺤﺪﺍﺭ ﺑﻴﺘﺎ ﺷﺒﻪ ﺍﻟﻤﻌﻠﻤﻲ ﺍﻟﺠﺰﺋﻲ ﺍﻟﻤﻌﻤﻢ ﻣﺘﻀﺨﻢ ﺍﻷﺻﻔﺎﺭ (SPZIBE): ُﺻِّﻤﻢ ﻫﺬﺍ ﺍﻟﻨﻤﻮﺫﺝ ﺧﺼﻴﺼ SPZIBE ﺷﺎﺋﻊ ﻓﻲ ﻣﺨﺘﻠﻒ ﺍﻟﻤﺠﺎﻻﺕ. ﻳﺴﺘﺨﺪﻡ ﺍﻟﺒﻴﺎﻧﺎﺕ ﺍﻟﻨﺴﺒﻴﺔ ﺍﻟﺘﻲ ﺗﻌﺎﻧﻲ ﻣﻦ ﻣﺸﻜﻠﺔ ﺍﻟﺘﻀﺨﻢ ﺍﻟﺼﻔﺮﻱ، ﻭﻫﻮ ﺗﺤﺪ ﻛﻼً ﻣﻦ ﺷﺮﺍﺋﺢ Pb ﻭ Ps ﻻﻟﺘﻘﺎﻁ ﺍﻟﻌﻼﻗﺎﺕ ﺍﻟﻤﻌﻘﺪﺓ ﺑﻴﻦ ﺍﻟﻤﺘﻐﻴﺮﺍﺕ ﺍﻟﻤﺸﺘﺮﻛﺔ ﻭﺍﻟﻤﺘﻐﻴﺮ ﺍﻟﺘﺎﺑﻊ. ﻳﺘﻢ ﺗﻄﻮﻳﺮ ﻧﺴﺨﺘﻴﻦ: SPZIBE-Pb ﻭ SPZIBE-Ps، ﻣﻤﺎ ﻳﺴﻤﺢ ﺑﺘﻘﻴﻴﻢ ﻣﻘﺎﺭﻥ ﻷﺩﺍء ﻣﻨﺎﻫﺞ ﺍﻟﺸﺮﺍﺋﺢ ﺍﻟﻤﺨﺘﻠﻔﺔ.
530 _aIssues also as CD.
546 _aText in English and abstract in Arabic & English.
650 0 _aApplied Statistics and Econometrics
650 0 _aالإحصاء التطبيقي والاقتصاد القياسي
653 1 _aSemiparametric Regression Models
_aParametric Models
_aGeneralized Linear Models
_aCount Data
_aProportion Data
_a P-Splines
_aSmoothing Splines
_aExcess Zeros Problem
_aنماذج العد
_aنماذج شبه معلمية
700 0 _aSayed Mesheal El-Sayed
_ethesis advisor.
700 0 _aMohamed Reda Abonaze.
_ethesis advisor.
900 _b01-01-2025
_cSayed Mesheal El-Sayed
_cMohamed Reda Abonaze
_UCairo University
_FFaculty of Graduate Studies for Statistical Research
_DDepartment of Applied Statistics and Econometrics
905 _aShimaa
942 _2ddc
_cTH
_e21
_n0
999 _c179534