Estarei no TDC Summit Porto Alegre Inteligência Artificial com a palestra “Inteligência Artificial combatendo as fraudes”

Análise de Dados e Inteligência Artificial em Governo 

Nesta Talks será demonstrado como diferentes técnicas e tecnologias tem sido empregadas no trabalho com grandes volumes de dados para concepção de soluções inovadoras em Governo.  Exemplos de tratamentos de dados, construção de painéis e aplicação de técnicas de aprendizado de máquina e inteligência artificial. 

I Congresso de Execução Fiscal da OAB/SC: Desafios Atuais para eficiência da Execução Fiscal Municipal

07/07/2021

21h: Aplicação da Inteligência Artificial no gerenciamento do executivo fiscal.
Palestrante: Dr. Sérgio Mariano Dias
Mediadora: Dra. Elaine Goncalves Weiss de Souza

https://www.oab-sc.org.br/cursos-eventos/2021/07/07/i-congresso-execucao-fiscal-oabsc-desafios-atuais-para-eficiencia-municipal/3970

Data Science – Técnicas e Tecnologias Aplicadas em Governo

Apresentação no TDC Innovation: O Governo é um Big User em Data Science! Um grande produtor e consumidor de dados em ciência de dados. Do modelo relacional ao lago de dados demonstramos nesta palestra técnicas e tecnologias utilizadas pelo governo nos últimos doze anos para lidar com grandes volumes de dados em projetos estratégicos para o país. Como processar trezentos milhões de documentos no formato XML por mês ou manipular documentos hierárquicos com Gigabytes de informação? Estes são alguns dos exemplos abordados sobre a perspectiva de técnicas e tecnologias em ciência de dados.

TDC INNOVATION – DESAFIOS PARA CRIAÇÃO DO FUTURO DIGITAL

https://thedevconf.com/tdc/2021/innovation/trilha-data-science

Extraction of qualitative behavior rules for industrial processes from reduced concept lattice

Minimal implications base for social network analysis

Purpose
Currently, social network (SN) analysis is focused on the discovery of activity and social relationship patterns. Usually, these relationships are not easily and completely observed. Therefore, it is relevant to discover substructures and potential behavior patterns in SN. Recently, formal concept analysis (FCA) has been applied for this purpose. FCA is a concept analysis theory that identifies concept structures within a data set. The representation of SN patterns through implication rules based on FCA enables the identification of relevant substructures that cannot be easily identified. The authors’ approach considers a minimum and irreducible set of implication rules (stem base) to represent the complete set of data (activity in the network). Applying this to an SN is of interest because it can represent all the relationships using a reduced form. So, the purpose of this paper is to represent social networks through the steam base.

Design/methodology/approach
The authors’ approach permits to analyze two-mode networks by transforming access activities of SN into a formal context. From this context, it can be extracted to a minimal set of implications applying the NextClosure algorithm, which is based on the closed sets theory that provides to extract a complete, minimal and non-redundant set of implications. Based on the minimal set, the authors analyzed the relationships between premises and their respective conclusions to find basic user behaviors.

Findings
The experiments pointed out that implications, represented as a complex network, enable the identification and visualization of minimal substructures, which could not be found in two-mode network representation. The results also indicated that relations among premises and conclusions represent navigation behavior of SN functionalities. This approach enables to analyze the following behaviors: conservative, transitive, main functionalities and access time. The results also demonstrated that the relations between premises and conclusions represented the navigation behavior based on the functionalities of SN. The authors applied their approach for an SN for a relationship to explore the minimal access patterns of navigation.

Originality/value
The authors present an FCA-based approach to obtain the minimal set of implications capable of representing the minimum structure of the users’ behavior in an SN. The paper defines and analyzes three types of rules that form the sets of implications. These types of rules define substructures of the network, the capacity of generation users’ behaviors, transitive behavior and conservative capacity when the temporal aspect is considered.

 

Paula Raissa, Sérgio Dias, Mark Song, Luis Zárate, (2018) “Minimal implications base for social network analysis”, International Journal of Web Information Systems, Vol. 14 Issue: 1, pp.62-77, https://doi.org/10.1108/IJWIS-04-2017-0028