Person:
Caballero Roldán, Rafael

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First Name
Rafael
Last Name
Caballero Roldán
Affiliation
Universidad Complutense de Madrid
Faculty / Institute
Informática
Department
Sistemas Informáticos y Computación
Area
Lenguajes y Sistemas Informáticos
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Search Results

Now showing 1 - 7 of 7
  • Publication
    Mejora del aprendizaje de SQL con realimentación semántica
    (2018-06-13) Sáenz Pérez, Fernando; Caballero Roldán, Rafael; García Ruiz, Yolanda; Garméndia Salvador, Luis
  • Publication
    Two type extensions for the constraint modelling language MiniZinc
    (Elsevier, 2015-11-01) Caballero Roldán, Rafael; Stuckey, Peter J.; Tenorio Fornés, Antonio
    In this paper we present two type extensions for the modelling language MiniZinc that allow the representation of some problems in a more natural way. The first proposal, called MiniZinc? , extends existing types with additional values. The user can specify both the extension of a predefined type with new values, and the behavior of the operations with relation to the new types. We illustrate the usage of MiniZinc? to model SQL-like problems with integer variables extended with NULL values. The second extension, MiniZinc+, introduces union types in the language. This allows defining recursive types such as trees, which are very useful for modelling problems that involve complex structures. A new case statement is introduced to select the different components of union type terms. The paper shows how a model defined using these extensions can be transformed into a MiniZinc model which is equivalent to the original model.
  • Publication
    Short term cloud nowcasting for a solar power plant based on irradiance historical Data
    (Universidad Nacional de La Plata, 2018-12) Caballero Roldán, Rafael; Zarzalejo Tirado, Luis Fernando; Otero Martín, Álvaro; Piñuel Moreno, Luis; Wilbert, Stefan
    This work considers the problem of forecasting the normal solar irradiance with high spatial and temporal resolution (5 minutes). The forecasting is based on a dataset registered during one year from the high resolution radiometric network at a operational solar power plan at Almeria, Spain. In particular, we show a technique for forecasting the irradiance in the next few minutes from the irradiance values obtained on the previous hour. Our proposal employs a type of recurrent neural network known as LSTM, which can learn complex patterns and that has proven its usability for forecasting temporal series. The results show a reasonable improvement with respect to other prediction methods typically employed in the studies of temporal series.
  • Publication
    Declarative debugging
    (2011-09-21) Caballero Roldán, Rafael
    Declarative debugging is a debugging technique that abstracts the execution details to focus on the semantic meaning of the program components. It was frst proposed in the feld of Logic Programming, but its general structure has been later extended to other programming paradigms, becoming an active area of research. The technique relies on a data structure, the computation tree, that represents some computation producing an unexpected result. This tree is traversed by asking questions to the user about the correction of the intermediate computation steps until the source of the bug has been found. We show how instances of this general technique can be defned for diferent programming paradigms simply adapting the defnition of computation tree. In particular we present the instances that have been developed by the Declarative Programming Group at the University Complutense of Madrid, which include functional-logic languages (Toy and Curry), object oriented languages (Java), deductive databases (Datalog) and SQL views. Bachelor's degree in Computer Science by the Universidad Politécnica de Madrid and Ph.D in Mathematics by the Universidad Complutense de Madrid. Currently Lecturer (Prof. Contratado Doctor) in the Computer Science Department at the Faculty of Computer Science. Research areas of interest: functional-logic programming, declarative and algorithmic debugging, qualifed declarative programming and in general declarative languages including uncertainty, SQL debugging and test-case generation, embedding of XML query languages in declarative languages, program transformation techniques for declarative languages.
  • Publication
    Implementación de un entorno de aprendizaje colaborativo de lenguajes de programación mediante traducción
    (2016-01) Caballero Roldán, Rafael; Martín Martín, Enrique; Montenegro Montes, Manuel; Riesco Rodríguez, Adrián; Tamarit Muñoz, Salvador
    Memoria del PIMCD 32/2015, donde presentamos una herramienta colaborativa para aprender lenguajes de traducción mediante traducción llamada DuoCode.
  • Publication
    A core Erlang semantics for declarative debugging
    (Elsevier, 2019-10-01) Martin-Martin, Enrique; Tamarit, Salvador; Riesco Rodríguez, Adrián; Caballero Roldán, Rafael
    One of the main advantages of declarative languages is their clearly established formal semantics, that allows programmers to reason about the properties of programs and to establish the correctness of tools. In particular, declarative debugging is a technique that analyses the proof trees of computations to locate bugs in programs. However, in the case of commercial declarative languages such as the functional language Erlang, sometimes the semantics is only informally defined, and this precludes these possibilities. Moreover, defining semantics for these languages is far from trivial because they include complex features needed in real applications, such as concurrency. In this paper we define a semantics for Core Erlang, the intermediate language underlying Erlang programs. We focus on the problem of concurrency and show how a medium-sized-step calculus, that avoids the details of small-step semantics but still captures the most common program errors, can be used to define an algorithmic debugger that is sound and complete.
  • Publication
    Predicting students' knowledge after playing a serious game based on learning analytics data: A case study
    (Wiley, 2019-12) Alonso Fernández, Cristina; Martínez Ortiz, Iván; Caballero Roldán, Rafael; Freire Morán, Manuel; Fernández Manjón, Baltasar
    Serious games have proven to be a powerful tool in education to engage, motivate, and help students learn. However, the change in student knowledge after playing games is usually measured with traditional (paper) prequestionnaires–postquestionnaires. We propose a combination of game learning analytics and data mining techniques to predict knowledge change based on in-game student interactions. We have tested this approach in a case study for which we have conducted preexperiments–postexperiments with 227 students playing a previously validated serious game on first aid techniques. We collected student interaction data while students played, using a game learning analytics infrastructure and the standard data format Experience API for Serious Games. After data collection, we developed and tested prediction models to determine whether knowledge, given as posttest results, can be accurately predicted. Additionally, we compared models both with and without pretest information to determine the importance of previous knowledge when predicting postgame knowledge. The high accuracy of the obtained prediction models suggests that serious games can be used not only to teach but also to measure knowledge acquisition after playing. This will simplify serious games application for educational settings and especially in the classroom easing teachers' evaluation tasks.