Search Results for author: Yisong Wang

Found 6 papers, 1 papers with code

HAZARD Challenge: Embodied Decision Making in Dynamically Changing Environments

1 code implementation23 Jan 2024 Qinhong Zhou, Sunli Chen, Yisong Wang, Haozhe Xu, Weihua Du, Hongxin Zhang, Yilun Du, Joshua B. Tenenbaum, Chuang Gan

Recent advances in high-fidelity virtual environments serve as one of the major driving forces for building intelligent embodied agents to perceive, reason and interact with the physical world.

Common Sense Reasoning Decision Making +1

Quantum and Translation Embedding for Knowledge Graph Completion

no code implementations1 Jan 2021 Panfeng Chen, Yisong Wang, Renyan Feng, Xiaomin Yu, Quan Yu

The insight of this work enlightens the notion of dense feature model design for KGC which is a new alternative to Deep Neural networks (DNN) in this task or even a better choice.

Knowledge Graph Completion Translation

On Sufficient and Necessary Conditions in Bounded CTL: A Forgetting Approach

no code implementations13 Mar 2020 Renyan Feng, Erman Acar, Stefan Schlobach, Yisong Wang, Wanwei Liu

To address such a scenario in a principled way, we introduce a forgetting-based approach in CTL and show that it can be used to compute SNC and WSC of a property under a given model and over a given signature.

Semi-supervised Feature Learning For Improving Writer Identification

no code implementations15 Jul 2018 Shiming Chen, Yisong Wang, Chin-Teng Lin, Weiping Ding, Zehong Cao

In this study, a semi-supervised feature learning pipeline was proposed to improve the performance of writer identification by training with extra unlabeled data and the original labeled data simultaneously.

Data Augmentation

On Forgetting in Tractable Propositional Fragments

no code implementations10 Feb 2015 Yisong Wang

Distilling from a knowledge base only the part that is relevant to a subset of alphabet, which is recognized as forgetting, has attracted extensive interests in AI community.

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