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Publicações

Publicações por HumanISE

2023

TÔ LIGADO: uma ação pedagógica inventiva para o desenvolvimento sustentável na educação OnLIFE

Autores
Schuster, BE; Rosa, GSd; Schlemmer, E;

Publicação
TICs & EaD em Foco

Abstract
O presente artigo propõe-se discutir práticas pedagógicas que promovam a inventividade, a cocriação e a colaboração e tem por objetivo apresentar a ação “Tô Ligado!”, que emergiu da vivência de cidadania digital MOVEOnCibricity no contexto do I Festival Internacional de Cidadania Digital, desenvolvida pela Rede Internacional ConectaKaT. A pesquisa se desenvolve a partir do Método Cartográfico de Pesquisa-Intervenção e está fundamentada na perspectiva da Educação OnLIFE. Tem como resultados o desenvolvimento de outras ações, constituindo a característica reticular e conectiva da ConectaKaT, sendo eles: a WebSérie Entrevistas, a Campanha/Jogo Segurança na Internet e nova WebSérie TomKaT nas Escolas. Esta ação apresenta contribuições significativas na construção de práticas pedagógicas inventivas e cocriadas na perspectiva de uma Educação OnLIFE, contribuindo também para um habitar engajado no ensinar e no aprender. Além disso, a ação “Tô Ligado!” se configurou como uma potente prática na construção de conhecimentos em torno de temáticas que se relacionam ao desenvolvimento sustentável. Assim, a ConectaKaT tem se estruturado enquanto uma plataforma viva de interação ecológica, propícia à invenção de novas metodologias e práticas pedagógicas, evidenciando uma nova política cognitiva em Educação.

2023

Blockchain-Based Electronic Voting: A Secure and Transparent Solution

Autores
Pereira, BMB; Torres, JM; Sobral, PM; Moreira, RS; Soares, CPD; Pereira, I;

Publicação
CRYPTOGRAPHY

Abstract
Since its appearance in 2008, blockchain technology has found multiple uses in fields such as banking, supply chain management, and healthcare. One of the most intriguing uses of blockchain is in voting systems, where the technology can overcome the security and transparency concerns that plague traditional voting systems. This paper provides a thorough examination of the implementation of a blockchain-based voting system. The proposed system employs cryptographic methods to protect voters' privacy and anonymity while ensuring the verifiability and integrity of election results. Digital signatures, homomorphic encryption (He), zero-knowledge proofs (ZKPs), and the Byzantine fault-tolerant consensus method underpin the system. A review of the literature on the use of blockchain technology for voting systems supports the analysis and the technical and logistical constraints connected with implementing the suggested system. The study suggests solutions to problems such as managing voter identification and authentication, ensuring accessibility for all voters, and dealing with network latency and scalability. The suggested blockchain-based voting system can provide a safe and transparent platform for casting and counting votes, ensuring election results' privacy, anonymity, and verifiability. The implementation of blockchain technology can overcome traditional voting systems' security and transparency shortcomings while also delivering a high level of integrity and traceability.

2023

Towards Hyper-Relevance in Marketing: Development of a Hybrid Cold-Start Recommender System

Autores
Fernandes, L; Miguéis, V; Pereira, I; Oliveira, E;

Publicação
APPLIED SCIENCES-BASEL

Abstract
Recommender systems position themselves as powerful tools in the support of relevance and personalization, presenting remarkable potential in the area of marketing. The cold-start customer problematic presents a challenge within this topic, leading to the need of distinguishing user features and preferences based on a restricted set of transactional information. This paper proposes a hybrid recommender system that aims to leverage transactional and portfolio information as indicating characteristics of customer behaviour. Four independent systems are combined through a parallelised weighted hybrid design. The first individual system utilises the price, target age, and brand of each product to develop a content-based recommender system, identifying item similarities. Secondly, a keyword-based content system uses product titles and descriptions to identify related groups of items. The third system utilises transactional data, defining similarity between products based on purchasing patterns, categorised as a collaborative model. The fourth system distinguishes itself from the previous approaches by leveraging association rules, using transactional information to establish antecedent and precedence relationships between items through a market basket analysis. Two datasets were analysed: product portfolio and transactional datasets. The product portfolio had 17,118 unique products and the included 4,408,825 instances from 2 June 2021 until 2 June 2022. Although the collaborative system demonstrated the best evaluation metrics when comparing all systems individually, the hybridisation of the four systems surpassed each of the individual systems in performance, with a 8.9% hit rate, 6.6% portfolio coverage, and with closer targeting of customer preferences and smaller bias.

2023

A Deep Learning Approach to Monitoring Workers’ Stress at Office

Autores
Rodrigues, F; Marchetti, J;

Publicação
Lecture Notes in Networks and Systems

Abstract
Identifying stress in people is not a trivial or straightforward task, as several factors are involved in detecting the presence or absence of stress. The problem of detect stress has attracted much attention in the last decade and is mainly addressed with physiological signals and in a controlled ambience with specific tasks. However, the widespread use of video cameras permitted the creation of a new non-invasive data collection techniques. The goal of this work is to provide an alternative way to detect stress in the workplace without the need of specific laboratory conditions. For that, a stress detection model based on images analysed with deep learning neural networks was developed. The trained model achieved a F1 = 79.9% on a binary dataset, of stress/non-stress, with an imbalanced ratio of 0.49. This model can be used in a non-invasive application to detect stress and provide recommendations to the collaborators in the workplace in order to help them to control their stress condition. © 2023, The Author(s), under exclusive license to Springer Nature Switzerland AG.

2023

Semi-supervised and ensemble learning to predict work-related stress

Autores
Rodrigues, F; Correia, H;

Publicação
JOURNAL OF INTELLIGENT INFORMATION SYSTEMS

Abstract
Stress is a common feeling in people's day-to-day life, especially at work, being the cause of several health problems and absenteeism. Despite the difficulty in identifying it properly, several studies have established a correlation between stress and perceivable human features. The problem of detecting stress has attracted significant attention in the last decade. It has been mainly addressed through the analysis of physiological signals in the execution of specific tasks in controlled environments. Taking advantage of technological advances that allow to collect stress-related data in a non-invasive way, the goal of this work is to provide an alternative approach to detect stress in the workplace without requiring specific controlled conditions. To this end, a video-based plethysmography application that analyses the person's face and retrieves several physiological signals in a non-invasive way was used. Moreover, in an initial phase, additional information that complements and labels the physiological data was obtained through a brief questionnaire answered by the participants. The data collection pilot took place over a period of two months, having involved 28 volunteers. Several stress detection models were developed; the best trained model achieved an accuracy of 86.8% and a F1 score of 87% on a binary stress/non-stress prediction.

2023

Vol. 3 (2023): Artigos dos alunos da edição 2023 do Mestrado em Negócio Eletrónico e alunos Erasmus

Autores
Azevedo, A; Sousa Pinto, A; Curado Malta, M;

Publicação

Abstract
A terceira edição dos Cadernos de Investigação do Mestrado em Negócio Eletrónico (MNE) testemunha o contínuo amadurecimento deste ciclo de estudos como polo de reflexão académica e científica. Este volume reúne 21 artigos de jovens investigadores que, sob orientação de docentes-investigadores, exploram os fenómenos mais relevantes que moldam o atual panorama do negócio eletrónico.

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