186 research outputs found
Dual-Branch Temperature Scaling Calibration for Long-Tailed Recognition
The calibration for deep neural networks is currently receiving widespread
attention and research. Miscalibration usually leads to overconfidence of the
model. While, under the condition of long-tailed distribution of data, the
problem of miscalibration is more prominent due to the different confidence
levels of samples in minority and majority categories, and it will result in
more serious overconfidence. To address this problem, some current research
have designed diverse temperature coefficients for different categories based
on temperature scaling (TS) method. However, in the case of rare samples in
minority classes, the temperature coefficient is not generalizable, and there
is a large difference between the temperature coefficients of the training set
and the validation set. To solve this challenge, this paper proposes a
dual-branch temperature scaling calibration model (Dual-TS), which considers
the diversities in temperature parameters of different categories and the
non-generalizability of temperature parameters for rare samples in minority
classes simultaneously. Moreover, we noticed that the traditional calibration
evaluation metric, Excepted Calibration Error (ECE), gives a higher weight to
low-confidence samples in the minority classes, which leads to inaccurate
evaluation of model calibration. Therefore, we also propose Equal Sample Bin
Excepted Calibration Error (Esbin-ECE) as a new calibration evaluation metric.
Through experiments, we demonstrate that our model yields state-of-the-art in
both traditional ECE and Esbin-ECE metrics
centroIDA: Cross-Domain Class Discrepancy Minimization Based on Accumulative Class-Centroids for Imbalanced Domain Adaptation
Unsupervised Domain Adaptation (UDA) approaches address the covariate shift
problem by minimizing the distribution discrepancy between the source and
target domains, assuming that the label distribution is invariant across
domains. However, in the imbalanced domain adaptation (IDA) scenario, covariate
and long-tailed label shifts both exist across domains. To tackle the IDA
problem, some current research focus on minimizing the distribution
discrepancies of each corresponding class between source and target domains.
Such methods rely much on the reliable pseudo labels' selection and the feature
distributions estimation for target domain, and the minority classes with
limited numbers makes the estimations more uncertainty, which influences the
model's performance. In this paper, we propose a cross-domain class discrepancy
minimization method based on accumulative class-centroids for IDA (centroIDA).
Firstly, class-based re-sampling strategy is used to obtain an unbiased
classifier on source domain. Secondly, the accumulative class-centroids
alignment loss is proposed for iterative class-centroids alignment across
domains. Finally, class-wise feature alignment loss is used to optimize the
feature representation for a robust classification boundary. A series of
experiments have proved that our method outperforms other SOTA methods on IDA
problem, especially with the increasing degree of label shift
The extraction of natural essential oils and terpenoids from plants by supercritical fluid
In order to provide guidance for the improvement of supercritical fluid extraction technology in the extraction of natural volatile oil and terpenoids from plants, SFE was compared with steam distillation, solvent extraction, Soxhlet extraction, pressure method and other traditional extraction processes, and the supercritical CO2 extraction conditions of SFE in the extraction of natural volatile oil and terpenoids were studied, including temperature, pressure, extraction time, extraction time, extraction time, extraction time, extraction time, extraction time and so on. The influence of entrainer or co extractant on the extraction effect was discussed to provide optimization parameters for the extraction process of natural volatile oil and terpenoids. SFE technology has advantages in the extraction of natural plant volatile oil and has broad application prospects in industrial production
Clinical Potential of an Enzyme-Based Novel Therapy for Cocaine Overdose
It is a grand challenge to develop a truly effective medication for treatment of cocaine overdose. The current available, practical emergence treatment for cocaine overdose includes administration of a benzodiazepine anticonvulsant agent (e.g. diazepam) and/or physical cooling with an aim to relieve the symptoms. The inherent difficulties of antagonizing physiological effects of drugs in the central nervous system have led to exploring protein-based pharmacokinetic approaches using biologics like vaccines, monoclonal antibodies, and enzymes. However, none of the pharmacokinetic agents has demonstrated convincing preclinical evidence of clinical potential for drug overdose treatment without a question mark on the timing used in the animal models. Here we report the use of animal models, including locomotor activity, protection, and rescue experiments in rats, of drug toxicity treatment with clinically relevant timing for the first time. It has been demonstrated that an efficient cocaine-metabolizing enzyme developed in our previous studies can rapidly reverse the cocaine toxicity whenever the enzyme is given to a living rat, demonstrating promising clinical potential of an enzyme-based novel therapy for cocaine overdose as a successful example in comparison with the commonly used diazepam
Machine-Learning-Assisted and Real-Time-Feedback-Controlled Growth of InAs/GaAs Quantum Dots
Self-assembled InAs/GaAs quantum dots (QDs) have properties highly valuable
for developing various optoelectronic devices such as QD lasers and single
photon sources. The applications strongly rely on the density and quality of
these dots, which has motivated studies of the growth process control to
realize high-quality epi-wafers and devices. Establishing the process
parameters in molecular beam epitaxy (MBE) for a specific density of QDs is a
multidimensional optimization challenge, usually addressed through
time-consuming and iterative trial-and-error. Meanwhile, reflective high-energy
electron diffraction (RHEED) has been widely used to capture a wealth of growth
information in situ. However, it still faces the challenges of extracting
information from noisy and overlapping images. Here, based on 3D ResNet, we
developed a machine learning (ML) model specially designed for training RHEED
videos instead of static images and providing real-time feedback on surface
morphologies for process control. We demonstrated that ML from previous growth
could predict the post-growth density of QDs, by successfully tuning the QD
densities in near-real time from 1.5E10 cm-2 down to 3.8E8 cm-2 or up to 1.4
E11 cm-2. Compared to traditional methods, our approach, with in-situ tuning
capabilities and excellent reliability, can dramatically expedite the material
optimization process and improve the reproducibility of MBE growth,
constituting significant progress for thin film growth techniques. The concepts
and methodologies proved feasible in this work are promising to be applied to a
variety of material growth processes, which will revolutionize semiconductor
manufacturing for microelectronic and optoelectronic industries.Comment: 5 figure
A Cryophyte Transcription Factor, CbABF1, Confers Freezing, and Drought Tolerance in Tobacco
Abscisic acid responsive element binding factors (ABFs) play crucial roles in plant responses to abiotic stress. However, little is known about the roles of ABFs in alpine subnival plants, which can survive under extreme environmental conditions. Here, we cloned and characterized an ABF1 homolog, CbABF1, from the alpine subnival plant Chorispora bungeana. Expression of CbABF1 was induced by cold, drought, and abscisic acid. Subcellular localization analysis revealed that CbABF1 was located in the nucleus. Further, CbABF1 had transactivation activity, which was dependent on the N-terminal region containing 89 residues. A Snf1-related protein kinase, CbSnRK2.6, interacted with CbABF1 in yeast two-hybrid analysis and bimolecular fluorescence complementation assays. Transient expression assay revealed that CbSnRK2.6 enhanced the transactivation of CbABF1 on ABRE cis-element. We further found that heterologous expression of CbABF1 in tobacco improved plant tolerance to freezing and drought stress, in which the survival rates of the transgenic plants increased around 40 and 60%, respectively, compared with wild-type plants. Moreover, the transgenic plants accumulated less reactive oxygen species, accompanied by high activities of antioxidant enzymes and elevated expression of stress-responsive genes. Our results thus suggest that CbABF1 is a transcription factor that plays an important role in cold and drought tolerance and is a candidate gene in molecular breeding of stress-tolerant crops
Deubiquitinase PSMD14 enhances hepatocellular carcinoma growth and metastasis by stabilizing GRB2
Abstract(#br)Hepatocellular carcinoma (HCC) has emerged as one of the most common malignancies worldwide. It is associated with a high mortality rate, as evident from its increasing incidence and extremely poor prognosis. The deubiquitinating enzyme 26S proteasome non-ATPase regulatory subunit 14 (PSMD14) has been reported to act as an oncogene in several human cancers. The present study aimed to reveal the functional significance of PSMD14 in HCC progression and the underlying mechanisms. We found that PSMD14 was significantly upregulated in HCC tissues. Overexpression of PSMD14 correlated with vascular invasion, tumor number, tumor recurrence, and poor tumor-free and overall survival of patients with HCC. Knockdown and overexpression experiments demonstrated that PSMD14 promoted proliferation, migration, and invasion in HCC cells in vitro , and facilitated tumor growth and metastasis in vivo . Mechanistically, we identified PSMD14 as a novel post-translational regulator of GRB2. PSMD14 inhibits degradation of GRB2 via deubiquitinating this oncoprotein in HCC cells. Furthermore, pharmacological inhibition of PSMD14 with O-phenanthroline (OPA) suppressed the malignant behavior of HCC cells in vitro and in vivo . In conclusion, our findings suggest that PSMD14 could serve as a novel promising therapeutic candidate for HCC
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