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Information

Information is a scientific, peer-reviewed, open access journal of information science and technology, data, knowledge, and communication, published monthly online by MDPI.
The International Society for the Study of Information (IS4SI) is affiliated with Information and its members receive discounts on the article processing charges.
Quartile Ranking JCR - Q2 (Computer Science, Information Systems)

All Articles (5,589)

In the domain of marine remote sensing, the real-time monitoring of ocean waves is a research hotspot, which employs acquired X-band radar images to retrieve wave information. To enhance the accuracy of the classical spectrum method using the extracted signal-to-noise ratio (SNR) from an image sequence, data from the preferred analysis area around the upwind is required. Additionally, the accuracy requires further improvement in cases of low wind speed and swell. For shore-based radar, access to the preferred analysis area cannot be guaranteed in practice, which limits the measurement accuracy of the spectrum method. In this paper, a method using extracted SNRs and an optimized genetic algorithm back-propagation (GABP) neural network model is proposed to enhance the inversion accuracy of significant wave height. The extracted SNRs from multiple selected analysis regions, included angles, and wind speed are employed to construct a feature vector as the input parameter of the GABP neural network. Considering the not-completely linear relationship of wave height to the SNR derived from radar images, the GABP network model is used to fit the relationship. Compared with the classical SNR-based method, the correlation coefficient using the GABP neural network is improved by 0.14, and the root mean square error is reduced by 0.20 m.

22 January 2026

Collected radar image at 23:53 on 19 January 2015.

This paper proposes a lightweight facial expression recognition model based on an improved Mini-Xception algorithm to address the issue of deploying existing models on resource-constrained devices. The model achieves lightweight facial expression recognition, particularly for elder-oriented applications, by introducing depthwise separable convolutions, residual connections, and a four-class expression reconstruction. These designs significantly reduce the number of parameters and computational complexity while maintaining high accuracy. The model achieves an accuracy of 79.96% on the FER2013 dataset, outperforming various other popular models, and enables efficient real-time inference in standard CPU environments.

22 January 2026

Overall Network Structure (⊕ denotes feature fusion, implemented via feature-map concatenation in this work).

Accurately estimating story points in Agile Scrum environments remains a challenging task, as traditional models often struggle to capture the complex relationships between user stories and their corresponding effort estimations. In this study, we leverage Gemini’s embedding representations to enhance the modeling of user stories within a story point estimation dataset. To improve prediction performance, we propose GemSP, an ensemble regression model that integrates two complementary regression techniques applied to the Gemini embeddings. Our approach aims to exploit the rich semantic representations of user stories while benefiting from the robustness of ensemble learning. Experimental results show that, when instantiated with Gemini embeddings, the proposed GemSP framework achieves lower prediction error than selected baseline models (GPT-2, Deep-SE, and GPT2SP) under cross-project evaluation on JIRA datasets. These results illustrate the practical benefit of decoupling semantic representation learning from regression, enabling effective integration of stronger embedding models within lightweight ensemble predictors.

22 January 2026

GemSP Architecture. Blue blocks denote Gemini embedding generation, green blocks represent dimensionality reduction using PCA, and orange blocks indicate ensemble regression models.

Reading speed is hypothesized to have distinct neural signatures across orthographically diverse languages, yet cross-linguistic evidence remains limited. We investigated this by classifying speed readers versus regular readers among Sinhalese and Japanese adults (n=142) using task-based fMRI and 35 supervised machine learning classifiers. Functional activation was extracted from 12 reading-related cortical regions. We introduced Fuzzy C-Means (FCM) clustering for data augmentation and Shapley additive explanations (SHAP) for model interpretability, enabling evaluation of region-wise contributions to reading speed classification. The best model, an FT-TABPFN network with FCM augmentation, achieved 81.1% test accuracy in the Combined cohort. In the Japanese-only cohort, Quadratic SVM and Subspace KNN each reached 85.7% accuracy. SHAP analysis revealed that the angular gyrus (AG) and inferior frontal gyrus (triangularis) were the strongest contributors across cohorts. Additionally, the anterior supra marginal gyrus (ASMG) appeared as a higher contributor in the Japanese-only cohort, while the posterior superior temporal gyrus (PSTG) contributed strongly to both cohorts separately. However, the posterior middle temporal gyrus (PMTG) showed less or no contribution to the model classification in each cohort. These findings demonstrate the effectiveness of interpretable machine learning for decoding reading speed, highlighting both universal neural predictors and language-specific differences. Our study provides a novel, generalizable framework for cross-linguistic neuroimaging analysis of reading proficiency.

21 January 2026

Block design of the covert reading fMRI task. Each session comprised six runs with alternating 30 s rest (R; fixation) and 60 s reading (T) blocks. Passages were shown in the participant’s native language (Sinhala or Japanese) as white text on a black background via MR-compatible goggles.

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Test and Evaluation Methods for Human-Machine Interfaces of Automated Vehicles II
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Test and Evaluation Methods for Human-Machine Interfaces of Automated Vehicles II

Editors: Frederik Naujoks, Yannick Forster, Andreas Keinath, Nadja Schömig, Sebastian Hergeth, Katharina Wiedemann

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Information - ISSN 2078-2489