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<title>Grupo: Modelización y Predicción con Datos Funcionales (FQM307)</title>
<link>https://hdl.handle.net/10481/17722</link>
<description/>
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<rdf:li rdf:resource="https://hdl.handle.net/10481/112400"/>
<rdf:li rdf:resource="https://hdl.handle.net/10481/108928"/>
<rdf:li rdf:resource="https://hdl.handle.net/10481/106891"/>
<rdf:li rdf:resource="https://hdl.handle.net/10481/103698"/>
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<dc:date>2026-04-11T19:22:18Z</dc:date>
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<item rdf:about="https://hdl.handle.net/10481/112400">
<title>Métodos de Inferencia Estadística en la Información Científica</title>
<link>https://hdl.handle.net/10481/112400</link>
<description>Métodos de Inferencia Estadística en la Información Científica
Escabias Machuca, Manuel
Material de trabajo para la asignatura de Métodos de Inferencia Estadística en la Información Científica del Máster Universitario en Información y Comunicación Científica de la Universidad de Granada.
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<item rdf:about="https://hdl.handle.net/10481/108928">
<title>R code and data used in paper "New approaches for scalar-on-function regression via independent component analysis"</title>
<link>https://hdl.handle.net/10481/108928</link>
<description>R code and data used in paper "New approaches for scalar-on-function regression via independent component analysis"
Ortiz, Helena; Acal González, Christian José; Vidal, Marc; Roldan, Juan B; Aguilera Del Pino, Ana María
In the interest of transparency and knowledge transfer, the attached file contains the data used and the code scripts implemented in the R statistical software for the paper entitled “New approaches for scalar-on-function regression via independent component analysis”.; In the “Models” folder, the CaseI and CaseII files can be found; these contain the functions used to simulate the data for the first and second simulations, respectively. The “Methods” folder includes the functions corresponding to the employed methods (1–12), as well as the fica and fica_hybrid functions, which are used to run the different types of FICA. In addition, this folder contains the Simulation file, from which all simulation data are generated and the corresponding results are obtained. Finally, the “RRAMs” folder includes the basic coefficients for the set and reset curves, along with the response variable data in CSV format, where column 4 corresponds to set and column 5 to reset.&#13;
&#13;
Important: To run the simulation, the directories containing the models and the methods must be defined before loading each of them.
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<item rdf:about="https://hdl.handle.net/10481/106891">
<title>Algorithmic analysis of a complex reliability system subject to multiple events with a preventive maintenance strategy and a Bernoulli vacation policy through MMAPs</title>
<link>https://hdl.handle.net/10481/106891</link>
<description>Algorithmic analysis of a complex reliability system subject to multiple events with a preventive maintenance strategy and a Bernoulli vacation policy through MMAPs
Ruiz Castro, Juan Eloy; Zapata Ceballos, Hugo Alaín
In this work, a single-unit multi-state system is considered. The system is subject to internal failures, as well as external shocks with multiple consequences. It also incorporates a preventive maintenance strategy and a Bernoulli vacation policy for the repairperson. It is algorithmically modeled in both continuous and discrete time using Marked Markovian Arrival Processes (MMAP). The system’s operation/degradation level is divided into an indeterminate number of levels. Upon returning from a vacation period, the repair technician may initiate corrective repair, perform preventive maintenance, replace the unit, remain idle at the workplace, or begin a new vacation period. The decision in the latter two cases is made probabilistically based on the system’s operational level. This methodology allows the model and its associated measures to be algorithmically derived in both&#13;
transient and stationary regimes, presented in a matrix-algorithmic form. Analytical-matrix methods are used to obtain the system’s steady-state behaviour as well as various performance measures. Costs and rewards are introduced to analyze when the system becomes profitable. Measures associated with costs over time and in the stationary regime are defined and considered for optimization studies. A numerical example demonstrates the versatility of the model by solving a probabilistic optimization problem using a multi-objective Pareto analysis approach and performing a comparative evaluation of multiple models. Genetic algorithm is applied to find the optimization results in the reduced solution space. All modeling and associated measures have been computationally implemented in Matlab.
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<item rdf:about="https://hdl.handle.net/10481/103698">
<title>Characterizing the functional ANOVA model for repeated measures via PCA application to biomechanical data</title>
<link>https://hdl.handle.net/10481/103698</link>
<description>Characterizing the functional ANOVA model for repeated measures via PCA application to biomechanical data
Ortiz, Helena; Acal González, Christian José; Escabias Machuca, Manuel; Aguilera Del Pino, Ana María
Gait analysis is a branch of biomechanics where its purpose is the study of mechanical laws relating to the way the body moves from one place to another. In most cases, the data sets for human gait analysis consist of continuous recordings of multiple physical activities, including kinematics and muscle performance. Despite the registered data being functions, the most common practice to detect any anomalies among experimental conditions consists of analyzing the vector of discrete observations or even summary measures of the curves. This fact causes an important information loss since the continuous nature of the data is being ignored. A suitable solution is to apply functional data analysis for analyzing continuous biomechanical data as functions, revealing the true nature of movement and allowing us to model and forecast the data with more precision. In the current paper, a new functional methodology for the analysis of variance with repeated measures was introduced. In particular, since functional data variability can be summarized by their first principal component scores, we proposed to turn the functional model into a multivariate one for the response of the most explicative principal components, and then, considered a semi-parametric approach to overcome the restrictive assumptions required in the classic repeated measures design. The motivation of this research was to contrast the differences in gait patterns of elementary school students when walking to school, depending on the type of bag they use to carry their school materials. The analysis reveals that gait joint movement is influenced by sex and the type of schoolbag, regardless of the load carried.
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<item rdf:about="https://hdl.handle.net/10481/99403">
<title>Algorithmic modelling of a complex redundant multi-state system subject to multiple events, preventive maintenance, loss of units and a multiple vacation policy through a MMAP</title>
<link>https://hdl.handle.net/10481/99403</link>
<description>Algorithmic modelling of a complex redundant multi-state system subject to multiple events, preventive maintenance, loss of units and a multiple vacation policy through a MMAP
Ruiz Castro, Juan Eloy; Zapata Ceballos, Hugo Alaín
A complex multi-state redundant system undergoing preventive maintenance and experiencing multiple events is being considered in a continuous time frame. The online unit is susceptible to various types of failures, both internal and external in nature, with multiple degradation levels present, both internally and externally. Random inspections are continuously monitoring these degradation levels, and if they reach a critical state, the unit is directed to a repair facility for preventive maintenance. The maintenance place is managed by a repairperson, who follows a multiple vacation policy dependent on the operational status of the units. The repairperson is responsible for two primary tasks: corrective repair and preventive maintenance. The time durations&#13;
within the system follow phase-type distributions, and the model is constructed utilizing Markovian Arrival Processes with marked arrivals. A variety of performance measures, including transient and stationary distributions, are calculated using matrix-analytic&#13;
methods. This methodology allows for the representation of significant outcomes and the general behavior of the system in a matrix-algorithmic structure. To enhance the model's efficiency, both costs and rewards are incorporated into the analysis. A numerical example is presented to showcase the model's flexibility and effectiveness in real-world applications.
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