Distributed machine learning in mobile adhoc networks faces significant challenges due to the limited computational resources of devices, non-IID data distribution, and dynamic network topology. Existing approaches often rely on centralized coordination and stable network conditions, which may not be feasible in practice. To address these issues, we propose an adaptive distributed multi-task learning framework called ADAMT for efficient image recognition in resource-constrained mobile ad hoc networks. ADAMT introduces three key innovations: (1) a feature expansion mechanism that enhances the expressiveness of local models by leveraging task-specific information; (2) a deep hashing technique that enables efficient on-device retrieval and multi-task fusion; and (3) an adaptive communication strategy that dynamically adjusts the model updating process based on network conditions and node reliability. The proposed framework allows each device to perform personalized model training on its local dataset while collaboratively updating the shared parameters with neighboring nodes. Extensive experiments on the ImageNet dataset demonstrate the superiority of ADAMT over state-of-the-art methods. ADAMT achieves a top-1 accuracy of 0.867, outperforming existing distributed learning approaches. Moreover, ADAMT significantly reduces the communication overhead and accelerates the convergence speed by 2.69 times compared to traditional distributed SGD. The adaptive communication strategy effectively balances the trade-off between model performance and resource consumption, making ADAMT particularly suitable for resource-constrained environments. Our work sheds light on the design of efficient and robust distributed learning algorithms for mobile adhoc networks and paves the way for deploying advanced machine learning applications on edge devices.
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http://dx.doi.org/10.1016/j.neunet.2025.107316 | DOI Listing |
J Food Prot
March 2025
Human Foods Program, U.S. Food and Drug Administration, 5001 Campus Drive, College Park, MD 20740 USA.
Microbiological sampling and testing are widely utilized in food safety risk management. We developed risk assessments to quantify the impact of various sampling plans on the risk of invasive listeriosis to consumers. We used the FDA-iRISK® tool and adapted available process, consumption, and dose response modules of published L.
View Article and Find Full Text PDFNeural Netw
March 2025
School of Computer Technology and Engineering, Changchun Institute of Technology, Changchun, China; College of Artificial Intelligence Technology, Changchun Institute of Technology, Changchun, China. Electronic address:
Distributed machine learning in mobile adhoc networks faces significant challenges due to the limited computational resources of devices, non-IID data distribution, and dynamic network topology. Existing approaches often rely on centralized coordination and stable network conditions, which may not be feasible in practice. To address these issues, we propose an adaptive distributed multi-task learning framework called ADAMT for efficient image recognition in resource-constrained mobile ad hoc networks.
View Article and Find Full Text PDFBioinformatics
March 2025
Department of Statistics, Hunan University, Changsha, 410000, China.
Motivation: Inferring gene networks provides insights into biological pathways and functional relationships among genes. When gene expression samples exhibit heterogeneity, they may originate from unknown subtypes, prompting the utilization of mixture Gaussian graphical model for simultaneous subclassification and gene network inference. However, this method overlooks the heterogeneity of network relationships across subtypes and does not sufficiently emphasize shared relationships.
View Article and Find Full Text PDFDrug Deliv Transl Res
March 2025
Regenerative Medicine & Cellular Therapies Division, School of Pharmacy, The University of Nottingham Biodiscovery Institute (BDI), University of Nottingham, Nottingham, NG7 2RD, UK.
Topically applied therapies must not only be effective at the molecular level but also efficiently access the target site which can be on milli/centimetre-scales. This bottleneck is particularly inhibitory for peptide and nucleic acid macromolecule drug delivery strategies, especially when aiming to target wounded, infected, and poorly perfused tissues of significant volume and geometry. Methods to drive fluid-flow or to enhance physical distribution of such formulations after local administration in accessible tissues (skin, eye, intestine) would be transformative in realizing the potential of such therapeutics.
View Article and Find Full Text PDFAnn Bot
March 2025
Institute of Plant Sciences, Agricultural Research Organization, Rishon LeZion 7505101, Israel.
Background And Aims: Morphological differences between the two genetically close wild radishes, Raphanus raphanistrum and R. pugioniformis, include differences in fruit structure that influence their dispersal ability and within population spatial structure. Here, we tested within- and among-populations genetic variation, hypothesizing that (i) short-distance dispersal of heavy fruits in R.
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