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1
Not All Layers of LLMs Are Necessary During Inference
我们提出了 AdaInfer,一种基于统计特征自适应提前终止 LLM 推理的轻量算法,可在不修改模型的情况下减少 最高 43% 的计算量,性能下降不足 1%。
Siqi Fan
,
Xin Jiang
,
Xuying Meng
,
Peng Han
,
Shuo Shang
,
Aixin Sun
,
Yequan Wang
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项目
项目
Few-Shot Learner Generalizes Across AI-Generated Image Detection
我们提出了 Few-Shot Detector (FSD),一种通过学习度量空间、仅需少量样本即可识别未见伪造图像的检测器,能在无需再训练的情况下实现 准确率提升 11.6% 并保持强泛化能力。
Shiyu Wu
,
Jing Liu
,
Jing Li
,
Yequan Wang
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项目
Masked Structural Growth for 2x Faster Language Model Pre-training
To lower the computional cost of training large model, we focus on speeding up pre-training by progressively growing from a small Transformer structure to a large one.
Yiqun Yao
,
Zheng Zhang
,
Jing Li
,
Yequan Wang
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项目
项目
CORT: A New Baseline for Comparative Opinion Classification by Dual Prompts
We approach comparative opinion classification through prompt learning, taking the advantage of embedded knowledge in pre-trained language model. We design a twin framework with dual prompts, named CORT. This extremely simple model delivers state-of-the-art and robust performance on all benchmark datasets for comparative opinion classification. We believe CORT well serves as a new baseline for comparative opinion classification.
Yequan Wang
,
Hengran Zhang
,
Aixin Sun
,
Xuying Meng
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CofeNet: Context and Former-Label Enhanced Net for Complicated Quotation Extraction
We propose the Context and Former-Label Enhanced Net (CofeNet) for quotation extraction. CofeNet is able to extract complicated quotations with components of variable lengths and complicated structures. On two public datasets and one proprietary dataset, we show that our achieves state-of-the-art performance on complicated quotation extraction.
Yequan Wang
,
Xiang Li
,
Aixin Sun
,
Xuying Meng
,
Huaming Liao
,
Jiafeng Guo
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Packet Representation Learning for Traffic Classification
We propose a novel framework to tackle the problem of packet representation learning for various traffic classification tasks. We learn packet representation, preserving both semantic and byte patterns of each packet, and utilize contrastive loss with a sample selector to optimize the learned representations so that similar packets are closer in the latent semantic space.
Xuying Meng
,
Yequan Wang
,
Runxin Ma
,
Haitong Luo
,
Xiang Li
,
Yujun Zhang
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DOI
Interactive Information Extraction by Semantic Information Graph
We propose an Interactive Information Extraction (InterIE) with a novel Semantic Information Graph (SIG) to guide the IE subtasks jointly.
Siqi Fan
,
Yequan Wang
,
Jing Li
,
Zheng Zhang
,
Shuo Shang
,
Peng Han
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A Dual-Channel Framework for Sarcasm Recognition by Detecting Sentiment Conflict
In this paper, we propose a Dual-Channel Framework by modeling both literal and implied sentiments separately. Based on this dual-channel framework, we design the Dual-Channel Network (DC-Net) to recognize sentiment conflict.
Yiyi Liu
,
Yequan Wang
,
Aixin Sun
,
Xuying Meng
,
Jing Li
,
Jiafeng Guo
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数据集
Path Travel Time Estimation using Attribute-related Hybrid Trajectories Network
In this paper, we propose Attribute-related Hybrid Trajectories Network~(AtHy-TNet), a neural model that effectively utilizes the attribute correlations, as well as the spatial and temporal relationships across hybrid trajectory data.
Xi Lin
,
Yequan Wang
,
Xiaokui Xiao
,
Zengxiang Li
,
Sourav S. Bhowmick
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DOI
Aspect-level Sentiment Analysis using AS-Capsules
In this paper, we propose the aspect-level sentiment capsules model (AS-Capsules), which is capable of performing aspect detection and sentiment classification simultaneously, in a joint manner.
Yequan Wang
,
Aixin Sun
,
Minlie Huang
,
Xiaoyan Zhu
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