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Shiliang Sun

Researcher at East China Normal University

Publications -  249
Citations -  8613

Shiliang Sun is an academic researcher from East China Normal University. The author has contributed to research in topics: Support vector machine & Computer science. The author has an hindex of 41, co-authored 224 publications receiving 6466 citations. Previous affiliations of Shiliang Sun include Tongji University & Zhejiang Normal University.

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A survey of multi-view machine learning

TL;DR: This paper reviews theories developed to understand the properties and behaviors of multi-view learning and gives a taxonomy of approaches according to the machine learning mechanisms involved and the fashions in which multiple views are exploited.
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Multi-view learning overview

TL;DR: This overview reviews theoretical underpinnings of multi-view learning and attempts to identify promising venues and point out some specific challenges which can hopefully promote further research in this rapidly developing field.
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A bayesian network approach to traffic flow forecasting

TL;DR: Comprehensive experiments on urban vehicular traffic flow data of Beijing and comparisons with several other methods show that the Bayesian network is a very promising and effective approach for traffic flow modeling and forecasting, both for complete data and incomplete data.
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A review of natural language processing techniques for opinion mining systems

TL;DR: This paper introduces general NLP techniques which are required for text preprocessing, and investigates the approaches of opinion mining for different levels and situations, and introduces comparative opinion mining and deep learning approaches for opinion mining.
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A Survey of Optimization Methods From a Machine Learning Perspective

TL;DR: A systematic retrospect and summary of the optimization methods from the perspective of machine learning can be found in this article, which can offer guidance for both developments of optimization and machine learning research.