Volume 16 Number 1 March 2026

    
A Digital Data-Driven Framework for Hierarchical Assessment of Students’ Innovation and Entrepreneurship Capabilities

Ezendu Ariwa

https://doi.org/10.6025/jio/2026/16/1/1-12

Abstract This study addresses the critical gap in reliable, scalable assessment of college students’ innovation and entrepreneurship capabilities by developing a digital, data driven evaluation system. Leveraging social media analytics, data mining techniques, and the Analytic Hierarchy Process (AHP), the framework constructs a three tier hierarchical indicator structure encompassing personal qualities (innovative awareness, entrepreneurial motivation, psychological resilience), skill capabilities (professional knowledge, practical innovation, teamwork), and learning... Read More


Design and Validation of an AI-Integrated Neuromuscular Assessment System for Physical Fitness Evaluation

Tuan Nguyen Minh

https://doi.org/10.6025/jio/2026/16/1/13-25

Abstract This study presents the design and validation of an AI-integrated neuromuscular assessment system for objective evaluation of physical fitness, addressing the limitations of subjective clinical scales in rehabilitation and athletic training contexts. The proposed framework employs a four layer modular architecture: (1) synchronized multimodal data acquisition using high density EMG arrays (8–16 channels), force plates, and inertial measurement units; (2) adaptive feature engineering with... Read More


LA-MIL: Label-Aware Attention Networks for Multi-Label Multi-Instance Text Classification

Pit Pichappan

https://doi.org/10.6025/jio/2026/16/1/26-39

Abstract Multilabel multi instance text classification presents unique challenges due to the weak supervision setting where documents (bags) are labeled but constituent sentences (instances) are not, coupled with severe label imbalance where infrequent “tail” labels dominate real world distributions. Existing approaches typically employ label agnostic aggregation strategies such as max or mean pooling that implicitly assume uniform instance relevance across all labels, an assumption that... Read More