208 research outputs found
Saliency-Aware Regularized Graph Neural Network
The crux of graph classification lies in the effective representation
learning for the entire graph. Typical graph neural networks focus on modeling
the local dependencies when aggregating features of neighboring nodes, and
obtain the representation for the entire graph by aggregating node features.
Such methods have two potential limitations: 1) the global node saliency w.r.t.
graph classification is not explicitly modeled, which is crucial since
different nodes may have different semantic relevance to graph classification;
2) the graph representation directly aggregated from node features may have
limited effectiveness to reflect graph-level information. In this work, we
propose the Saliency-Aware Regularized Graph Neural Network (SAR-GNN) for graph
classification, which consists of two core modules: 1) a traditional graph
neural network serving as the backbone for learning node features and 2) the
Graph Neural Memory designed to distill a compact graph representation from
node features of the backbone. We first estimate the global node saliency by
measuring the semantic similarity between the compact graph representation and
node features. Then the learned saliency distribution is leveraged to
regularize the neighborhood aggregation of the backbone, which facilitates the
message passing of features for salient nodes and suppresses the less relevant
nodes. Thus, our model can learn more effective graph representation. We
demonstrate the merits of SAR-GNN by extensive experiments on seven datasets
across various types of graph data. Code will be released.Comment: Accepted by Artificial Intelligence Journal with minor revisio
Scaling Up to Excellence: Practicing Model Scaling for Photo-Realistic Image Restoration In the Wild
We introduce SUPIR (Scaling-UP Image Restoration), a groundbreaking image
restoration method that harnesses generative prior and the power of model
scaling up. Leveraging multi-modal techniques and advanced generative prior,
SUPIR marks a significant advance in intelligent and realistic image
restoration. As a pivotal catalyst within SUPIR, model scaling dramatically
enhances its capabilities and demonstrates new potential for image restoration.
We collect a dataset comprising 20 million high-resolution, high-quality images
for model training, each enriched with descriptive text annotations. SUPIR
provides the capability to restore images guided by textual prompts, broadening
its application scope and potential. Moreover, we introduce negative-quality
prompts to further improve perceptual quality. We also develop a
restoration-guided sampling method to suppress the fidelity issue encountered
in generative-based restoration. Experiments demonstrate SUPIR's exceptional
restoration effects and its novel capacity to manipulate restoration through
textual prompts.Comment: This paper has been accepted by CVPR 202
Global trends and performances in diabetic retinopathy studies: A bibliometric analysis
ObjectiveThe objective of this study is to conduct a comprehensive bibliometric analysis to identify and evaluate global trends in diabetic retinopathy (DR) research and visualize the focus and frontiers of this field.MethodsDiabetic retinopathy-related publications from the establishment of the Web of Science (WOS) through 1 November 2022 were retrieved for qualitative and quantitative analyses. This study analyzed annual publication counts, prolific countries, institutions, journals, and the top 10 most cited literature. The findings were presented through descriptive statistics. VOSviewer 1.6.17 was used to exhibit keywords with high frequency and national cooperation networks, while CiteSpace 5.5.R2 displayed the timeline and burst keywords for each term.ResultsA total of 10,709 references were analyzed, and the number of publications continuously increased over the investigated period. America had the highest h-index and citation frequency, contributing to the most influence. China was the most prolific country, producing 3,168 articles. The University of London had the highest productivity. The top three productive journals were from America, and Investigative Ophthalmology Visual Science had the highest number of publications. The article from Gulshan et al. (2016; co-citation counts, 2,897) served as the representative and symbolic reference. The main research topics in this area were incidence, pathogenesis, treatment, and artificial intelligence (AI). Deep learning, models, biomarkers, and optical coherence tomography angiography (OCTA) of DR were frontier hotspots.ConclusionBibliometric analysis in this study provided valuable insights into global trends in DR research frontiers. Four key study directions and three research frontiers were extracted from the extensive DR-related literature. As the incidence of DR continues to increase, DR prevention and treatment have become a pressing public health concern and a significant area of research interest. In addition, the development of AI technologies and telemedicine has emerged as promising research frontiers for balancing the number of doctors and patients
Real-time Monitoring for the Next Core-Collapse Supernova in JUNO
Core-collapse supernova (CCSN) is one of the most energetic astrophysical
events in the Universe. The early and prompt detection of neutrinos before
(pre-SN) and during the SN burst is a unique opportunity to realize the
multi-messenger observation of the CCSN events. In this work, we describe the
monitoring concept and present the sensitivity of the system to the pre-SN and
SN neutrinos at the Jiangmen Underground Neutrino Observatory (JUNO), which is
a 20 kton liquid scintillator detector under construction in South China. The
real-time monitoring system is designed with both the prompt monitors on the
electronic board and online monitors at the data acquisition stage, in order to
ensure both the alert speed and alert coverage of progenitor stars. By assuming
a false alert rate of 1 per year, this monitoring system can be sensitive to
the pre-SN neutrinos up to the distance of about 1.6 (0.9) kpc and SN neutrinos
up to about 370 (360) kpc for a progenitor mass of 30 for the case
of normal (inverted) mass ordering. The pointing ability of the CCSN is
evaluated by using the accumulated event anisotropy of the inverse beta decay
interactions from pre-SN or SN neutrinos, which, along with the early alert,
can play important roles for the followup multi-messenger observations of the
next Galactic or nearby extragalactic CCSN.Comment: 24 pages, 9 figure
Detection of the Diffuse Supernova Neutrino Background with JUNO
As an underground multi-purpose neutrino detector with 20 kton liquid scintillator, Jiangmen Underground Neutrino Observatory (JUNO) is competitive with and complementary to the water-Cherenkov detectors on the search for the diffuse supernova neutrino background (DSNB). Typical supernova models predict 2-4 events per year within the optimal observation window in the JUNO detector. The dominant background is from the neutral-current (NC) interaction of atmospheric neutrinos with 12C nuclei, which surpasses the DSNB by more than one order of magnitude. We evaluated the systematic uncertainty of NC background from the spread of a variety of data-driven models and further developed a method to determine NC background within 15\% with {\it{in}} {\it{situ}} measurements after ten years of running. Besides, the NC-like backgrounds can be effectively suppressed by the intrinsic pulse-shape discrimination (PSD) capabilities of liquid scintillators. In this talk, I will present in detail the improvements on NC background uncertainty evaluation, PSD discriminator development, and finally, the potential of DSNB sensitivity in JUNO
Potential of Core-Collapse Supernova Neutrino Detection at JUNO
JUNO is an underground neutrino observatory under construction in Jiangmen, China. It uses 20kton liquid scintillator as target, which enables it to detect supernova burst neutrinos of a large statistics for the next galactic core-collapse supernova (CCSN) and also pre-supernova neutrinos from the nearby CCSN progenitors. All flavors of supernova burst neutrinos can be detected by JUNO via several interaction channels, including inverse beta decay, elastic scattering on electron and proton, interactions on C12 nuclei, etc. This retains the possibility for JUNO to reconstruct the energy spectra of supernova burst neutrinos of all flavors. The real time monitoring systems based on FPGA and DAQ are under development in JUNO, which allow prompt alert and trigger-less data acquisition of CCSN events. The alert performances of both monitoring systems have been thoroughly studied using simulations. Moreover, once a CCSN is tagged, the system can give fast characterizations, such as directionality and light curve
An analysis of reverse logistics technology and service for hi-tech industry
Thesis (M. Eng. in Logistics)--Massachusetts Institute of Technology, Engineering Systems Division, 2004."June 2004."Includes bibliographical references (leaf 52).This thesis provides a method for hi-tech companies to evaluate reverse logistic software and services. To clarify what is reverse logistics, the definition and features of reverse logistics are first introduced. The reasons to improve reverse logistics management systems are explained. Information of reverse logistics software systems and service vendors is collected, compared and analyzed. Current reverse logistics market trends are analyzed and problems in evaluating reverse logistics systems are identified. An algorithm to evaluate the software and service is established and explained. Parameters are analyzed and determined. Various vendors are selected and interviewed. Their capabilities/strengths are rated. As an example, the evaluation points for several software systems are calculated in the case of a semi-conductor company. Research limits are also provided. Conclusions are presented at the end of the thesis.by Jinfan Li.M.Eng.in Logistic
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