Supervised learning often requires a large number of labeled examples,which has become a critical bottleneck in the case that manual annotating the class labels is *** mitigate this issue,a new framework called pairwi...
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Supervised learning often requires a large number of labeled examples,which has become a critical bottleneck in the case that manual annotating the class labels is *** mitigate this issue,a new framework called pairwise comparison(Pcomp)classification is proposed to allow training examples only weakly annotated with pairwise comparison,i.e.,which one of two examples is more likely to be *** previous study solves Pcomp problems by minimizing the classification error,which may lead to less robust model due to its sensitivity to class *** this paper,we propose a robust learning framework for Pcomp data along with a pairwise surrogate loss called *** provides an unbiased estimator to equivalently maximize AUC without accessing the precise class ***,we prove the consistency with respect to AUC and further provide the estimation error bound for the proposed *** studies on multiple datasets validate the effectiveness of the proposed method.
1 Introduction and main contributions Differential transcript usage(DTU),which refers to the event that the relative transcript abundance within a gene changes between *** detect DTU,various methods have been proposed...
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1 Introduction and main contributions Differential transcript usage(DTU),which refers to the event that the relative transcript abundance within a gene changes between *** detect DTU,various methods have been proposed,which can be classified into exon-based models and gene-based *** approaches either cannot estimate the relative transcript abundance,or they cannot deal properly with the multi-source mapping problems of ***,few methods currently consider sample-to-sample variability under multiple conditions[1].
This paper presents the first study on Sign-aware Perturbations Regression (SaPR), where the observed response variables contain the aware sign (negative or positive) perturbations. In order to predict the non-perturb...
Automated radiology report generation has the potential to improve radiology reporting and alleviate the workload of radiologists. However, the medical report generation task poses unique challenges due to the limited...
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A convolutional decoder for image caption has proven to be easier to train than the Long Short Term Memory (LSTM) decoder [2]. However, previous convolutional image captioning methods are not good at capture the relat...
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In fMRI analysis, the scientist seeks to aggregate multi-subject fMRI data so that inferences shared across subjects can be achieved. The challenge is to eliminate the variability of anatomical structure and functiona...
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The paper presents a methodology for improving the organization of knowledge bases and demonstrates its application for generating the content of explanations. The DyKOr (Dynamic Knowledge Organization) method combine...
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The paper presents a methodology for improving the organization of knowledge bases and demonstrates its application for generating the content of explanations. The DyKOr (Dynamic Knowledge Organization) method combines information that is usually available through execution traces with existing domain knowledge using techniques from machine learning including knowledge compilation, explanation-based learning, and conceptual clustering. These techniques allow the separation of the knowledge needed to solve a problem from that which is not required, and the identification of information that is related to the problem but is not explicitly stated. Thus, the analysis performed through the methodology can considerably improve the quality and content of explanations. The paper describes the implementation of the methodology and how it can be integrated into typical rule-based expert systems. Illustrations of how the method can be used to produce the content for explanations are presented in the context of typical consultation and problem solving expert systems. A discussion of how the information produced by the method can be used to prepare explanations for users with different levels of expertise is also presented.
Offline reinforcement learning(ORL)aims to learn a rational agent purely from behavior data without any online *** of the major challenges encountered in ORL is the problem of distribution shift,i.e.,the mismatch betw...
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Offline reinforcement learning(ORL)aims to learn a rational agent purely from behavior data without any online *** of the major challenges encountered in ORL is the problem of distribution shift,i.e.,the mismatch between the knowledge of the learned policy and the reality of the underlying *** works usually handle this in a too pessimistic manner to avoid out-of-distribution(OOD)queries as much as possible,but this can influence the robustness of the agents at unseen *** this paper,we propose a simple but effective method to address this *** key idea of our method is to enhance the robustness of the new policy learned offline by weakening its confidence in highly uncertain regions,and we propose to find those regions by simulating them with modified Generative Adversarial Nets(GAN)such that the generated data not only follow the same distribution with the old experience but are very difficult to deal with by themselves,with regard to the behavior policy or some other reference *** then use this information to regularize the ORL algorithm to penalize the overconfidence behavior in these *** experiments on several publicly available offline RL benchmarks demonstrate the feasibility and effectiveness of the proposed method.
The task of Chinese Spelling Check (CSC) is aiming to detect and correct spelling errors that can be found in the text. While manually annotating a high-quality dataset is expensive and time-consuming, thus the scale ...
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Predicting fluid intelligence via neuroimaging data is important to understand neural mechanisms underlying diverse complex cognitive tasks in human brain. Functional connectivity (FC) reflects interactions among brai...
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