scispace - formally typeset
Search or ask a question
Institution

Alibaba Group

CompanyHangzhou, China
About: Alibaba Group is a company organization based out in Hangzhou, China. It is known for research contribution in the topics: Computer science & Terminal (electronics). The organization has 6810 authors who have published 7389 publications receiving 55653 citations. The organization is also known as: Alibaba Group Holding Limited & Alibaba Group (Cayman Islands).


Papers
More filters
Journal ArticleDOI
Kai Zhao1, Yongfu Li1, Guoxing Wang1, Yu Pu2, Yong Lian1 
TL;DR: A robust QRS detection algorithm that is capable of detecting QRS complexes as well as accurately identifying R-peaks and outperforms many existing algorithms on six other ECG databases, such as NSTDB, TWADB, STDB, SVDB, AFTDB, and FANTASIADB.
Abstract: This paper presents a robust QRS detection algorithm that is capable of detecting QRS complexes as well as accurately identifying R-peaks. The proposed bilateral threshold scheme combined with QRS watchdog greatly improves the detection accuracy and robustness, resulting in consistent detection performance on 9 available ECG databases. Simulations show that the proposed algorithm achieves good results on the datasets from both QTDB healthy database and MITDB arrhythmia database, i.e. the sensitivity of 99.99% and 99.88%, the precision of 99.98% and 99.88%, and the detection error rate of 0.04% and 0.31%, respectively. Furthermore, it also outperforms many existing algorithms on six other ECG databases, such as NSTDB, TWADB, STDB, SVDB, AFTDB, and FANTASIADB.

32 citations

Proceedings Article
01 Jan 2020
TL;DR: This work proposes a novel variational sample re-weighting (VSR) method to eliminate confounding bias by decorrelating the treatments and confounders and conducts extensive experiments to demonstrate that the predictive model trained on this re-weightsed dataset can achieve more accurate counterfactual outcome prediction.
Abstract: Estimating counterfactual outcome of different treatments from observational data is an important problem to assist decision making in a variety of fields. Among the various forms of treatment specification, bundle treatment has been widely adopted in many scenarios, such as recommendation systems and online marketing. The bundle treatment usually can be abstracted as a high dimensional binary vector, which makes it more challenging for researchers to remove the confounding bias in observational data. In this work, we assume the existence of low dimensional latent structure underlying bundle treatment. Via the learned latent representations of treatments, we propose a novel variational sample re-weighting (VSR) method to eliminate confounding bias by decorrelating the treatments and confounders. Finally, we conduct extensive experiments to demonstrate that the predictive model trained on this re-weighted dataset can achieve more accurate counterfactual outcome prediction.

32 citations

Proceedings ArticleDOI
Fei Sun1, Peng Jiang1, Hanxiao Sun1, Changhua Pei1, Wenwu Ou1, Xiaobo Wang1 
17 Oct 2018
TL;DR: A novel multi-source pointer network is proposed by adding a new knowledge encoder for pointer network to address the problem of product title summarization in E-commerce applications for display on mobile devices.
Abstract: In this paper, we study the product title summarization problem in E-commerce applications for display on mobile devices. Comparing with conventional sentence summarization, product title summarization has some extra and essential constraints. For example, factual errors or loss of the key information are intolerable for E-commerce applications. Therefore, we abstract two more constraints for product title summarization: (i) do not introduce irrelevant information; (ii) retain the key information (e.g., brand name and commodity name). To address these issues, we propose a novel multi-source pointer network by adding a new knowledge encoder for pointer network. The first constraint is handled by pointer mechanism. For the second constraint, we restore the key information by copying words from the knowledge encoder with the help of the soft gating mechanism. For evaluation, we build a large collection of real-world product titles along with human-written short titles. Experimental results demonstrate that our model significantly outperforms the other baselines. Finally, online deployment of our proposed model has yielded a significant business impact, as measured by the click-through rate.

31 citations

Posted Content
TL;DR: A novel adversarial attack method that can generate visually natural motion-blurred adversarial examples, named motion-based adversarial blur attack (ABBA), which shows more effective penetrating capability to the state-of-the-art GAN-based deblurring mechanisms compared with other blurring methods.
Abstract: The state-of-the-art deep neural networks (DNNs) are vulnerable against adversarial examples with additive random-like noise perturbations. While such examples are hardly found in the physical world, the image blurring effect caused by object motion, on the other hand, commonly occurs in practice, making the study of which greatly important especially for the widely adopted real-time image processing tasks (e.g., object detection, tracking). In this paper, we initiate the first step to comprehensively investigate the potential hazards of the blur effect for DNN, caused by object motion. We propose a novel adversarial attack method that can generate visually natural motion-blurred adversarial examples, named motion-based adversarial blur attack (ABBA). To this end, we first formulate the kernel-prediction-based attack where an input image is convolved with kernels in a pixel-wise way, and the misclassification capability is achieved by tuning the kernel weights. To generate visually more natural and plausible examples, we further propose the saliency-regularized adversarial kernel prediction, where the salient region serves as a moving object, and the predicted kernel is regularized to achieve naturally visual effects. Besides, the attack is further enhanced by adaptively tuning the translations of object and background. A comprehensive evaluation on the NeurIPS'17 adversarial competition dataset demonstrates the effectiveness of ABBA by considering various kernel sizes, translations, and regions. The in-depth study further confirms that our method shows more effective penetrating capability to the state-of-the-art GAN-based deblurring mechanisms compared with other blurring methods. We release the code to this https URL.

31 citations

Journal ArticleDOI
TL;DR: This work provides conditions under which exact diffusion has superior steady-state mean-square deviation performance than traditional algorithms without bias-correction, and it is proven that this superiority is more evident over sparsely-connected network topologies such as lines, cycles, or grids.
Abstract: Various bias-correction methods such as EXTRA, gradient tracking methods, and exact diffusion have been proposed recently to solve distributed deterministic optimization problems. These methods employ constant step-sizes and converge linearly to the exact solution under proper conditions. However, their performance under stochastic and adaptive settings is less explored. It is still unknown whether , when and why these bias-correction methods can outperform their traditional counterparts with noisy gradient and constant step-sizes. This work studies the performance of exact diffusion under the stochastic and adaptive setting, and provides conditions under which exact diffusion has superior steady-state mean-square deviation (MSD) performance than traditional algorithms without bias-correction. In particular, it is proven that this superiority is more evident over sparsely-connected network topologies such as lines, cycles, or grids. Conditions are also provided under which exact diffusion method can or degrade the performance of traditional methods. Simulations are provided to validate the theoretical findings.

31 citations


Authors

Showing all 6829 results

NameH-indexPapersCitations
Philip S. Yu1481914107374
Lei Zhang130231286950
Jian Xu94136652057
Wei Chu8067028771
Le Song7634521382
Yuan Xie7673924155
Narendra Ahuja7647429517
Rong Jin7544919456
Beng Chin Ooi7340819174
Wotao Yin7230327233
Deng Cai7032624524
Xiaofei He7026028215
Irwin King6747619056
Gang Wang6537321579
Xiaodan Liang6131814121
Network Information
Related Institutions (5)
Microsoft
86.9K papers, 4.1M citations

94% related

Google
39.8K papers, 2.1M citations

94% related

Facebook
10.9K papers, 570.1K citations

93% related

AT&T Labs
5.5K papers, 483.1K citations

90% related

Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20235
202230
20211,352
20201,671
20191,459
2018863