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Innovation, Technology and Entrepreneurship

The mission of our Centre for Innovation, Technology and Entrepreneurship (CITE) is to carry out multidisciplinary activities at the intersection of technology, innovation, sustainability, and management, promoting the exploration, implementation, and adoption of responsible and sustainable socio-technical systems.


We focus on the areas of Innovation Management, Technology Management, and Technology-Based Entrepreneurship, exploring theories, methods, models, and tools to support the innovation process. Through research and innovation activities—including consultancy and advanced training—we address environmental, social, and economic challenges, contributing to the exploration, implementation, and adoption of innovative solutions. We create impact through research and innovation outcomes, aligning our activities with the Sustainable Development Goals (SDGs).


We place high value on collaboration with both national and international partners. We are a member of the Enterprise Europe Network (EEN), where our mission is to support Portuguese companies on their innovation journey by identifying and fostering international partnerships for business or innovation development, while also helping to find the most relevant funding sources.


We support the implementation of innovation management systems, integrating technology management with new business models and value chains, and promoting sustainable and responsible practices. We also run open innovation and acceleration programmes, contributing to the development of startups and the strengthening of innovation ecosystems.


We work across three core areas: innovation management and the front end of innovation (FEI), technology management and policy, and entrepreneurship and business model innovation.

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CITE Publications

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2026

Impact of Green Knowledge Sharing on the Organizational Performance of SMEs : The Mediating Role of Green Organizational Culture and Technological Innovation

Authors
Almeida, F; Okon, E;

Publication
Knowledge and Process Management

Abstract
ABSTRACT This study explores the impact of Green Knowledge Sharing (GKS) on Organizational Performance (OP), considering the mediating roles of Green Organizational Culture (GOC) and Technological Innovation (TI). Addressing current gaps in the literature, the research extends beyond sector-specific analyses and incorporates a cross-country perspective, examining 297 small and medium-sized enterprises (SMEs) in Portugal, Spain, and the United Kingdom. Additionally, this study acknowledges the influence of digital transformation in enhancing GKS, a factor often overlooked in previous research. By adopting a Structural Equation Modeling (SEM) approach, this article confirms a direct and positive effect on both OP and GOC, with GOC further influencing OP, establishing its mediating role in this relationship. However, the relationships between GKS and TI, as well as the indirect effect of GKS on OP through TI, are not supported. These findings offer theoretical advancements by broadening the conventional understanding of OP beyond financial metrics and present practical implications for SME managers, highlighting strategies to foster a green organizational culture and leverage technological innovation for sustainable performance.

2026

Scientific and industrial specialisation, structural change and economic growth: Global evidence

Authors
Teixeira, AAC; Pinto, A;

Publication
RESEARCH POLICY

Abstract
Understanding how structural change drives long-run growth requires jointly considering the dynamics of productive and scientific specialisations, and science-industry alignment. This paper develops and tests a unified framework that integrates evolutionary, structuralist, complexity, and innovation-systems perspectives to assess how productive and scientific specialisations, science-industry alignment, diversification, and global value chain integration shape economic performance. To operationalize this framework, we construct new indicators, including a Science-Industry Matching (SIM) index, measures of dynamic entry and relatedness density, and specialisation-based diversity indices, and apply them to a panel of up to 142 countries over 2000-2018/2023. Estimation relies on country fixed effects with Driscoll-Kraay standard errors to address heteroskedasticity, autocorrelation, and cross-sectional dependence. The results reveal that persistent specialisation in high- and medium-high-tech industries fosters growth, while low-tech dependence constrains it. Scientific specialisation in enabling fields such as mathematics, physics, chemistry, and energy/environmental sciences supports growth, but excessive concentration risks lock-in. Science-industry alignment enhances growth in advanced economies with strong absorptive capacity but penalises weaker systems. Industrial diversification often dilutes resources, whereas scientific diversification consistently promotes growth by broadening the knowledge base for recombination. Finally, integration into global value chains is growth-enhancing in developing economies, while advanced economies can sustain higher domestic value added without significant penalties.

2025

Bridging Social Entrepreneurship and Sustainable Development

Authors
Almeida, F;

Publication
Examining the Intersection of Technology, Media, and Social Innovation

Abstract
Social entrepreneurship is crucial for sustainable development as it blends innovative business models with a focus on economic, social and environmental impact. This synergy can potentially accelerate progress towards the sustainable development goals, creating a more equitable and sustainable future. This study aims to explore this phenomenon by carrying out a systematic review of literature. It is adopted the PRISMA framework to identify 54 relevant studies in this field. The findings characterize the evolution of articles in this field, the number of citations, the relationship between key terms, and the respective clusters. Moreover, seven contributions of social entrepreneurship for sustainable development are identified. Finally, the role of technology in promoting and supporting the interconnection between social entrepreneurship and sustainable development is explored. This study is relevant to enhance understanding of how technology supports social entrepreneurship and helps social entrepreneurs to achieve sustainable development goals.

2025

Energy-efficient meta-classifier model for log access anomaly detection in healthcare systems

Authors
Matos, M; Gomes, F; Nogueira, F; Almeida, F;

Publication
INTERNATIONAL JOURNAL OF INTELLIGENT COMPUTING AND CYBERNETICS

Abstract
PurposeDetecting anomalous access to electronic health records (EHRs) is critical for safeguarding patient privacy and ensuring compliance with healthcare regulations. Traditional anomaly detection methods often struggle in this domain due to extreme class imbalance, limited labelled data and the subtlety of insider threats. This study proposes a lightweight, hybrid anomaly detection framework that integrates unsupervised, supervised and rule-based approaches using a meta-classifier architecture.Design/methodology/approachAn experimental and model-development approach is employed, combining machine learning techniques with domain-inspired rule modelling to construct a hybrid anomaly detection framework for healthcare access logs. Performance of the algorithm is measured using standard classification metrics such as precision, recall, F1-score and accuracy.FindingsEvaluated on a synthetic but realistic dataset of 50.000 normal and 500 labelled anomalous healthcare access events, the proposed framework achieved superior performance compared to standalone models as well as other hybrid models, with an F1-score of 0.8989 and recall of 0.8180. It also maintained low inference latency (0.028 ms) and energy consumption (4.03e-07 kg CO2), making it suitable for deployment in resource-constrained clinical environments.Originality/valueThis study highlights the potential of a hybrid meta-classifier to enhance anomaly detection in healthcare access logs, capturing both subtle and obvious anomalies while outperforming conventional models and remaining efficient, scalable and practical for real-time monitoring.

2025

Comparative analysis of cybersecurity artificial intelligence frameworks

Authors
Almeida, FL;

Publication
Information Security Journal: A Global Perspective

Abstract