Search Results for author: Ye Ma

Found 14 papers, 1 papers with code

Neural Abstractive Multi-Document Summarization: Hierarchical or Flat Structure?

no code implementations AACL (iwdp) 2020 Ye Ma, Lu Zong

With regards to WikiSum (CITATION) that empowers applicative explorations of Neural Multi-Document Summarization (MDS) to learn from large scale dataset, this study develops two hierarchical Transformers (HT) that describe both the cross-token and cross-document dependencies, at the same time allow extended length of input documents.

Document Summarization Multi-Document Summarization +1

AutoPoster: A Highly Automatic and Content-aware Design System for Advertising Poster Generation

no code implementations2 Aug 2023 Jinpeng Lin, Min Zhou, Ye Ma, Yifan Gao, Chenxi Fei, Yangjian Chen, Zhang Yu, Tiezheng Ge

Meanwhile, to our knowledge, we propose the first poster generation dataset that includes visual attribute annotations for over 76k posters.

Attribute

A Semi-Autoregressive Graph Generative Model for Dependency Graph Parsing

no code implementations21 Jun 2023 Ye Ma, Mingming Sun, Ping Li

And the latter assumes these components to be independent so that they can be outputted in a one-shot manner.

Dependency Parsing Graph Generation

Geometry Aligned Variational Transformer for Image-conditioned Layout Generation

no code implementations2 Sep 2022 Yunning Cao, Ye Ma, Min Zhou, Chuanbin Liu, Hongtao Xie, Tiezheng Ge, Yuning Jiang

First, self-attention mechanism is adopted to model the contextual relationship within layout elements, while cross-attention mechanism is used to fuse the visual information of conditional images.

Layout Design Object Localization

Parallel Hierarchical Transformer with Attention Alignment for Abstractive Multi-Document Summarization

no code implementations16 Aug 2022 Ye Ma, Lu Zong

In comparison to single-document summarization, abstractive Multi-Document Summarization (MDS) brings challenges on the representation and coverage of its lengthy and linked sources.

Document Summarization Multi-Document Summarization

More Interpretable Graph Similarity Computation via Maximum Common Subgraph Inference

no code implementations9 Aug 2022 Zixun Lan, Binjie Hong, Ye Ma, Fei Ma

Our critical insight into INFMCS is the strong correlation between similarity score and Maximum Common Subgraph (MCS).

Graph Classification Graph Similarity

Composition-aware Graphic Layout GAN for Visual-textual Presentation Designs

no code implementations30 Apr 2022 Min Zhou, Chenchen Xu, Ye Ma, Tiezheng Ge, Yuning Jiang, Weiwei Xu

Through both quantitative and qualitative evaluations, we demonstrate that the proposed model can synthesize high-quality graphic layouts according to image compositions.

Boosting Image Outpainting with Semantic Layout Prediction

no code implementations18 Oct 2021 Ye Ma, Jin Ma, Min Zhou, Quan Chen, Tiezheng Ge, Yuning Jiang, Tong Lin

Secondly, another GAN model is trained to synthesize real images based on the extended semantic layouts.

Image Outpainting Semantic Segmentation

Global-aware Beam Search for Neural Abstractive Summarization

2 code implementations NeurIPS 2021 Ye Ma, Zixun Lan, Lu Zong, Kaizhu Huang

A global scoring mechanism is then developed to regulate beam search to generate summaries in a near-global optimal fashion.

Abstractive Text Summarization Document Summarization +2

Integrated Node Encoder for Labelled Textual Networks

no code implementations24 May 2020 Ye Ma, Lu Zong

Voluminous works have been implemented to exploit content-enhanced network embedding models, with little focus on the labelled information of nodes.

General Classification Network Embedding

A Novel Distributed Representation of News (DRNews) for Stock Market Predictions

no code implementations24 May 2020 Ye Ma, Lu Zong, Peiwan Wang

In this study, a novel Distributed Representation of News (DRNews) model is developed and applied in deep learning-based stock market predictions.

Stock Market Prediction

News2vec: News Network Embedding with Subnode Information

no code implementations IJCNLP 2019 Ye Ma, Lu Zong, Yikang Yang, Jionglong Su

With the development of NLP technologies, news can be automatically categorized and labeled according to a variety of characteristics, at the same time be represented as low dimensional embeddings.

Dimensionality Reduction Network Embedding +4

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