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Dive into the research topics where Xuchao Zhang is active.

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Featured researches published by Xuchao Zhang.


conference on information and knowledge management | 2016

Automatical Storyline Generation with Help from Twitter

Ting Hua; Xuchao Zhang; Wei Wang; Chang-Tien Lu; Naren Ramakrishnan

Storyline detection aims to connect seemly irrelevant single documents into meaningful chains, which provides opportunities for understanding how events evolve over time and what triggers such evolutions. Most previous work generated the storylines through unsupervised methods that can hardly reveal underlying factors driving the evolution process. This paper introduces a Bayesian model to generate storylines from massive documents and infer the corresponding hidden relations and topics. In addition, our model is the first attempt that utilizes Twitter data as human input to ``supervise the generation of storylines. Through extensive experiments, we demonstrate our proposed model can achieve significant improvement over baseline methods and can be used to discover interesting patterns for real world cases.


international joint conference on artificial intelligence | 2017

Robust Regression via Heuristic Hard Thresholding

Xuchao Zhang; Liang Zhao; Arnold P. Boedihardjo; Chang-Tien Lu

The presence of data noise and corruptions recently invokes increasing attention on Robust Least Squares Regression (RLSR), which addresses the fundamental problem that learns reliable regression coefficients when response variables can be arbitrarily corrupted. Until now, several important challenges still cannot be handled concurrently: 1) exact recovery guarantee of regression coefficients 2) difficulty in estimating the corruption ratio parameter; and 3) scalability to massive dataset. This paper proposes a novel Robust Least squares regression algorithm via Heuristic Hard thresholding (RLHH), that concurrently addresses all the above challenges. Specifically, the algorithm alternately optimizes the regression coefficients and estimates the optimal uncorrupted set via heuristic hard thresholding without corruption ratio parameter until it converges. We also prove that our algorithm benefits from strong guarantees analogous to those of state-of-the-art methods in terms of convergence rates and recovery guarantees. Extensive experiment demonstrates that the effectiveness of our new method is superior to that of existing methods in the recovery of both regression coefficients and uncorrupted sets, with very competitive efficiency.


international joint conference on artificial intelligence | 2017

Multimodal Storytelling via Generative Adversarial Imitation Learning

Zhiqian Chen; Xuchao Zhang; Arnold P. Boedihardjo; Jing Dai; Chang-Tien Lu

Deriving event storylines is an effective summarization method to succinctly organize extensive information, which can significantly alleviate the pain of information overload. The critical challenge is the lack of widely recognized definition of storyline metric. Prior studies have developed various approaches based on different assumptions about users interests. These works can extract interesting patterns, but their assumptions do not guarantee that the derived patterns will match users preference. On the other hand, their exclusiveness of single modality source misses cross-modality information. This paper proposes a method, multimodal imitation learning via generative adversarial networks(MIL-GAN), to directly model users interests as reflected by various data. In particular, the proposed model addresses the critical challenge by imitating users demonstrated storylines. Our proposed model is designed to learn the reward patterns given user-provided storylines and then applies the learned policy to unseen data. The proposed approach is demonstrated to be capable of acquiring the users implicit intent and outperforming competing methods by a substantial margin with a user study.


conference on information and knowledge management | 2017

Spatiotemporal Event Forecasting from Incomplete Hyper-local Price Data

Xuchao Zhang; Liang Zhao; Arnold P. Boedihardjo; Chang-Tien Lu; Naren Ramakrishnan

Hyper-local pricing data, e.g., about foods and commodities, exhibit subtle spatiotemporal variations that can be useful as crucial precursors of future events. Three major challenges in modeling such pricing data include: i) temporal dependencies underlying features; ii) spatiotemporal missing values; and iii) constraints underlying economic phenomena. These challenges hinder traditional event forecasting models from being applied effectively. This paper proposes a novel spatiotemporal event forecasting model that concurrently addresses the above challenges. Specifically, given continuous price data, a new soft time-lagged model is designed to select temporally dependent features. To handle missing values, we propose a data tensor completion method based on price domain knowledge. The parameters of the new model are optimized using a novel algorithm based on the Alternative Direction Methods of Multipliers (ADMM). Extensive experimental evaluations on multiple datasets demonstrate the effectiveness of our proposed approach.


international joint conference on artificial intelligence | 2018

Distributed Self-Paced Learning in Alternating Direction Method of Multipliers

Xuchao Zhang; Liang Zhao; Zhiqian Chen; Chang-Tien Lu

Self-paced learning (SPL) mimics the cognitive process of humans, who generally learn from easy samples to hard ones. One key issue in SPL is the training process required for each instance weight depends on the other samples and thus cannot easily be run in a distributed manner in a large-scale dataset. In this paper, we reformulate the self-paced learning problem into a distributed setting and propose a novel Distributed Self-Paced Learning method (DSPL) to handle large-scale datasets. Specifically, both the model and instance weights can be optimized in parallel for each batch based on a consensus alternating direction method of multipliers. We also prove the convergence of our algorithm under mild conditions. Extensive experiments on both synthetic and real datasets demonstrate that our approach is superior to those of existing methods.


international conference on big data | 2016

Storytelling in heterogeneous Twitter entity network based on hierarchical cluster routing

Xuchao Zhang; Zhiqian Chen; Weisheng Zhong; Arnold P. Boedihardjo; Chang-Tien Lu

Connecting the dots between diverse entities such as people and organizations is a vital task for forming hypotheses and uncovering latent relationships among complex and large datasets. Most existing approaches are designed to address the relationship of entities in news reports, documents and abstracts, but such approaches are not suitable for Twitter data streams due to their unstructured languages, short-length messages, heterogeneous features and massive size. The sheer size of Twitter data requires more efficient algorithms to connect the dots within a short period of time. We present a system that automatically constructs stories by connecting entities in Twitter datasets. An entity similarity model is designed that combines both traditional entity-related features and social network attributes and a novel story generation algorithm applied on the similarity model is proposed to cope with the massive Twitter datasets. Extensive experimental evaluations were conducted to demonstrate the effectiveness of this new approach.


arXiv: Learning | 2018

Water Disaggregation via Shape Features based Bayesian Discriminative Sparse Coding.

Bingsheng Wang; Xuchao Zhang; Chang-Tien Lu; Feng Chen


arXiv: Learning | 2018

Rational Neural Networks for Approximating Jump Discontinuities of Graph Convolution Operator.

Zhiqian Chen; Feng Chen; Rongjie Lai; Xuchao Zhang; Chang-Tien Lu


international conference on data mining | 2017

Online and Distributed Robust Regressions Under Adversarial Data Corruption

Xuchao Zhang; Liang Zhao; Arnold P. Boedihardjo; Chang-Tien Lu


international conference on big data | 2017

TRACES: Generating Twitter stories via shared subspace and temporal smoothness

Xuchao Zhang; Zhiqian Chen; Liang Zhao; Arnold P. Boedihardjo; Chang-Tien Lu

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Arnold P. Boedihardjo

United States Army Corps of Engineers

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Liang Zhao

George Mason University

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Rongjie Lai

University of Southern California

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