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Sobre

Sobre

Alberto A. Pinto é professor Catedrático do Departamento de Matemática, Faculdade de Ciências, Universidade do Porto (Portugal). É investigador no Laboratório de Inteligência Artificial e Apoio à Decisão (LIAAD) do INESC TEC.

Foi o fundador e é actualmente o co-editor-em-chefe, juntamente com Michel Benaim da Université de Neuchatel, Suiça, do Journal of Dynamics and Games, publicado pelo American Institute of Mathematical Sciences (AIMS). Foi presidente do Centro Internacional de Matemática (CIM) de 2011 a 2016. Desde 2016 preside à Assembleia Geral do CIM.

Alberto Pinto iniciou a sua carreira científica sob a orientação de David Rand (U Warwick, UK).  Na sua tese de mestrado (1989) estudou os trabalhos de Feigenbaum e Sullivan em funções scaling. Continuando os seus trabalhos sob a orientação de David Rand, estudo na sua tese de doutoramento (1991) características de universalidade de outras classes de aplicações que formam a fronteira entre ordem e caos.

Durante esse período, Alberto Pinto conheceu vários investigadores de topo na área de Sistemas Dinâmicos, nomeadamente Dennis Sullivan (Stony Brook, NY, EUA) e Mauricio Peixoto (IMPA, Brasil), e isso teve um grande impacto na sua carreira. Como resultado, ele e seus colaboradores fizeram várias contribuições importantes para o estudo da estrutura em escala fina de sistemas dinâmicos, tendo esses trabalhos sido publicados em destacados jornais científicos internacionais e no livro Fine Structures of Hyperbolic Diffeomorphisms  em co-autoria com Flávio Ferreira e David Rand, publicado na prestigiada série Springer Monographs in Mathematics, da Springer Verlag.

Enquanto realizava um pós-doutoramento sob a supervisão de Dennis Sullivan no Graduate Center da City University of New York (CUNY), conheceu Edson de Faria e, através de Mauricio Peixoto, entrou em contato com Welington de Melo. Com de Melo provou a rigidez de aplicações unimodais suaves na fronteira entre caos e ordem, estendendo o trabalho de C. T McMullen (UHarvard), laureado em 1998 com a Medalha Fields. Conjuntamente com Edson de Faria e Welington de Melo, Alberto Pinto provou uma conjectura de Feigenbaum e Coullet-Tresser que caracteriza a duplicação do período entre o caos e a ordem para aplicações unimodais. Este resultado surge no artigo Global Hyperbolicity of Renormalization for Smooth Unimodal Mappings publicado na revista Annals of Mathematics (2006) e teve como base resultados anteriores de Sandy Davie, Dennis Sullivan, Curtis McMullen e Mikhail Lyubich.

Desde então, Alberto Pinto alargou os seus interesse de investigação a áreas mais aplicadas da Matemática, tendo feito contribuições em vastas e variadas incluindo ótica, teoria dos jogos e economia matemática, finanças, imunologia, epidemiologia e clima e energia. Nessas áreas aplicadas, ele publicou amplamente ultrapassando os cem artigos científicos.

Alberto pinto editou dois volumes, com Mauricio Peixoto e David Rand, Dynamics and Games I and II (2011). Estes dois volumes iniciaram a nova série Springer Proceedings in Mathematics. Com David Zilberman (U Berkeley) editou os  volumes Modeling, Dynamics, Optimization and Bioeconomics I and II (2015, 2017) também na série Springer Proceedings in Mathematics & Statistics. Ainda na mesma série editou conjuntamente com Lluís Alsedà, Jim Cushing e Saber Elaydi, o livro Difference Equations, Discrete Dynamical Systems and Applications.

Enquanto presidente do CIM,  editou conjuntamente com Jean-Pierre Bourguignon (European Research Council-ERC), Rolf Jeltsch (ETH-Zurich) e Marcelo Viana (IMPA), os livros Dynamics, Games and Science e Mathematics of Planet Earth que iniciaram a CIM Series in Mathematical Sciences, publicado pela Springer Verlag.  Na mesma série, editou com J.F. Oliveira e J.P. Almeida o livro Operational Research. Na área da Economia Matemática, editou com Elvio Accinelli Gamba, Athanasios N. Yannacopoulos e Carlos Hervés-Beloso, o livro Trends in Mathematical Economics (2017), também publicado pela Springer Verlag.

Alberto Pinto desempenhou ainda funções como membro da Direção do projeto Internacional Pobabilistic Methods in Non-Hyperbolic Dynamics (PRODYN), financiado pela European Science Foundation (1999-2001). Desempenhou ainda funções como Coordenador Executivo (2009-2010) do Conselho Científico de Ciências Exatas e Engenharia da Fundação para Ciência e Tecnologia.

Tópicos
de interesse
Detalhes

Detalhes

  • Nome

    Alberto Pinto
  • Cargo

    Investigador Coordenador
  • Desde

    01 maio 2011
003
Publicações

2025

A Novel MCDM Approach to Integrating Human Factors into Evacuation Models: Enhancing Emergency Preparedness for Vulnerable Populations

Autores
Reyes-Norambuena, P; Martinez-Torres, J; Pinto, AA; Yazdi, AK; Hanne, T;

Publicação
APPLIED SCIENCES-BASEL

Abstract
This research determines how to integrate factors related to evacuation in emergency preparedness using techniques for Multicriteria Decision-Making (MCDM). A distinctive MCDM technique that incorporates human behavior into evacuation models enhances decision-making and safety during emergencies, especially in vulnerable populations. For this purpose, a hybrid combination of MCDM methods-CRiteria Importance Through Intercriteria Correlation (CRITIC), Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS), and Weighted Aggregated Sum Product Assessment (WASPAS)-is used to rank the vulnerability of Chilean regions by considering various factors. First, the related factors are ranked by CRITIC, and the result is that the psychosocial problem factor has the highest priority and weight. Then, according to the hybrid methods and CRITIC, all regions of Chile are ranked first with TOPSIS, WASPAS, and a combination of them to determine which one has the highest priority. The results show that the Santiago Metropolitan Region has the highest priority for vulnerability in all three methods.

2025

Striking a balance: navigating the trade-offs between predictive accuracy and interpretability in machine learning models

Autores
Arantes, M; González Manteiga, W; Torres, J; Pinto, A;

Publicação
ELECTRONIC RESEARCH ARCHIVE

Abstract
Sales forecasting is very important in retail management. It helps with decisions about inventory, staffing, and planning promotions. In this study, we looked at how to balance the accuracy of predictions with how easy it is to understand the machine learning models used in sales forecasting. We used public data from Rossmann stores to study various factors like promotions, holidays, and store features that affect daily sales. We compared a complex, highly accurate model (XGBoost) with simpler, easier-to-understand linear regression models. To find a middle ground, we created a hybrid model called LR XGBoost. This model changes a linear regression model to match the predictions of XGBoost. The hybrid model keeps the strong predictive power of complex models but makes the results easier to understand, which is important for making decisions in retail. Our study shows that our hybrid model offers a good balance, providing reliable sales forecasts with more transparency than standard linear regression. This makes it a valuable tool for retail managers who need accurate forecasts and a clear understanding of what influences sales. The model’s consistent performance across datasets also suggests it can be used in various retail settings to improve efficiency and help with strategic decisions. © 2025 the Author(s), licensee AIMS Press. This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0)

2025

A Statistical Duality for Random Matching of Agents

Autores
Yannacopoulos, A; Oliveira, B; Ferreira, M; Martins, J; Pinto, A;

Publicação
MATHEMATICAL METHODS IN THE APPLIED SCIENCES

Abstract
We propose a statistical duality among the preferences and endowments of the agents. Under this duality, the logarithmic prices of random trades among agents in a decentralized economy converge in expectation to the logarithm of the Walrasian equilibrium price in a centralized economy.

2025

The Application of Machine Learning and Deep Learning with a Multi-Criteria Decision Analysis for Pedestrian Modeling: A Systematic Literature Review (1999-2023)

Autores
Reyes-Norambuena, P; Pinto, AA; Martínez, J; Yazdi, AK; Tan, Y;

Publicação
SUSTAINABILITY

Abstract
Among transportation researchers, pedestrian issues are highly significant, and various solutions have been proposed to address these challenges. These approaches include Multi-Criteria Decision Analysis (MCDA) and machine learning (ML) techniques, often categorized into two primary types. While previous studies have addressed diverse methods and transportation issues, this research integrates pedestrian modeling with MCDA and ML approaches. This paper examines how MCDA and ML can be combined to enhance decision-making in pedestrian dynamics. Drawing on a review of 1574 papers published from 1999 to 2023, this study identifies prevalent themes and methodologies in MCDA, ML, and pedestrian modeling. The MCDA methods are categorized into weighting and ranking techniques, with an emphasis on their application to complex transportation challenges involving both qualitative and quantitative criteria. The findings suggest that hybrid MCDA algorithms can effectively evaluate ML performance, addressing the limitations of traditional methods. By synthesizing the insights from the existing literature, this review outlines key methodologies and provides a roadmap for future research in integrating MCDA and ML in pedestrian dynamics. This research aims to deepen the understanding of how informed decision-making can enhance urban environments and improve pedestrian safety.

2025

Barrett's paradox of cooperation in the case of quasi-linear utilities

Autores
Accinelli, E; Afsar, A; Martins, F; Martins, J; Oliveira, BMPM; Oviedo, J; Pinto, AA; Quintas, L;

Publicação
MATHEMATICAL METHODS IN THE APPLIED SCIENCES

Abstract
This paper fits in the theory of international agreements by studying the success of stable coalitions of agents seeking the preservation of a public good. Extending Baliga and Maskin, we consider a model of N homogeneous agents with quasi-linear utilities of the form u(j) (r(j); r) = r(alpha) - r(j), where r is the aggregate contribution and the exponent alpha is the elasticity of the gross utility. When the value of the elasticity alpha increases in its natural range (0, 1), we prove the following five main results in the formation of stable coalitions: (i) the gap of cooperation, characterized as the ratio of the welfare of the grand coalition to the welfare of the competitive singleton coalition grows to infinity, which we interpret as a measure of the urge or need to save the public good; (ii) the size of stable coalitions increases from 1 up to N; (iii) the ratio of the welfare of stable coalitions to the welfare of the competitive singleton coalition grows to infinity; (iv) the ratio of the welfare of stable coalitions to the welfare of the grand coalition decreases (a lot), up to when the number of members of the stable coalition is approximately N/e and after that it increases (a lot); and (v) the growth of stable coalitions occurs with a much greater loss of the coalition members when compared with free-riders. Result (v) has two major drawbacks: (a) A priori, it is difficult to convince agents to be members of the stable coalition and (b) together with results (i) and (iv), it explains and leads to the pessimistic Barrett's paradox of cooperation, even in a case not much considered in the literature: The ratio of the welfare of the stable coalitions against the welfare of the grand coalition is small, even in the extreme case where there are few (or a single) free-riders and the gap of cooperation is large. Optimistically, result (iii) shows that stable coalitions do much better than the competitive singleton coalition. Furthermore, result (ii) proves that the paradox of cooperation is resolved for larger values of.. so that the grand coalition is stabilized.