本文旨在通过介绍第一个中国数学预训练的语言模型〜(PLM)来提高机器的数学智能,以有效理解和表示数学问题。与其他标准NLP任务不同,数学文本很难理解,因为它们在问题陈述中涉及数学术语,符号和公式。通常,它需要复杂的数学逻辑和背景知识来解决数学问题。考虑到数学文本的复杂性质,我们设计了一种新的课程预培训方法,用于改善由基本和高级课程组成的数学PLM的学习。特别是,我们首先根据位置偏见的掩盖策略执行令牌级预训练,然后设计基于逻辑的预训练任务,旨在分别恢复改组的句子和公式。最后,我们介绍了一项更加困难的预训练任务,该任务强制执行PLM以检测和纠正其生成的解决方案中的错误。我们对离线评估(包括九个与数学相关的任务)和在线$ A/B $测试进行了广泛的实验。实验结果证明了与许多竞争基线相比,我们的方法的有效性。我们的代码可在:\ textColor {blue} {\ url {https://github.com/rucaibox/jiuzhang}}}中获得。
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会话推荐系统(CRS)旨在通过自然语言对话推荐给用户的合适项目。对于开发有效的CRSS,主​​要技术问题是如何准确地推断用户偏好从非常有限的对话环境。为了解决问题,有希望的解决方案是纳入外部数据以丰富上下文信息。然而,先前的研究主要集中在针对某些特定类型的外部数据量身定制的融合模型,这是不普遍的模型,并利用多型外部数据。为了有效利用多型外部数据,我们提出了一种新型粗对对比学习框架,以改善CRS的数据语义融合。在我们的方法中,我们首先从不同的数据信号中提取并代表多粒度语义单元,然后以粗略的方式对齐相关的多型语义单元。为了实现这一框架,我们设计了用于建模用户偏好的粗粒细粒和细粒度的程序,前者侧重于更通用,粗粒粗粒语义融合,后者侧重于更具体,细粒度的语义融合。可以扩展这样的方法以包含更多种类的外部数据。两个公共CRS数据集的大量实验已经证明了我们在两种建议和对话任务中的方法的有效性。
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在本文中,我们旨在提供有效的成对学习神经链路预测(PLNLP)框架。该框架将链路预测视为对等级问题的成对学习,包括四个主要组件,即邻域编码器,链路预测器,负采样器和目标函数组成。该框架灵活地,任何通用图形神经卷积或链路预测特定神经结构都可以作为邻域编码器。对于链路预测器,我们设计不同的评分功能,可以基于不同类型的图表来选择。在否定采样器中,我们提供了几种采样策略,这些策略是特定的问题。至于目标函数,我们建议使用有效的排名损失,这大约最大化标准排名度量AUC。我们在4个链路属性预测数据集上评估了开放图基准的4个链接属性预测数据集,包括\ texttt {ogbl-ddi},\ texttt {ogbl-collbab},\ texttt {ogbl-ppa}和\ texttt {ogbl-ciation2}。 PLNLP在\ TextTt {ogbl-ddi}上实现前1个性能,以及仅使用基本神经架构的\ texttt {ogbl-collab}和\ texttt {ogbl-ciation2}的前2个性能。该性能展示了PLNLP的有效性。
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With increasing privacy concerns on data, recent studies have made significant progress using federated learning (FL) on privacy-sensitive natural language processing (NLP) tasks. Much literature suggests fully fine-tuning pre-trained language models (PLMs) in the FL paradigm can mitigate the data heterogeneity problem and close the performance gap with centralized training. However, large PLMs bring the curse of prohibitive communication overhead and local model adaptation costs for the FL system. To this end, we introduce various parameter-efficient tuning (PETuning) methods into federated learning. Specifically, we provide a holistic empirical study of representative PLMs tuning methods in FL. The experimental results cover the analysis of data heterogeneity levels, data scales, and different FL scenarios. Overall communication overhead can be significantly reduced by locally tuning and globally aggregating lightweight model parameters while maintaining acceptable performance in various FL settings. To facilitate the research of PETuning in FL, we also develop a federated tuning framework FedPETuning, which allows practitioners to exploit different PETuning methods under the FL training paradigm conveniently. The source code is available at \url{https://github.com/iezhuozhuo/FedETuning/tree/deltaTuning}.
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随着视频数量的越来越多,对技术的需求很大,可以帮助人们迅速导航到他们感兴趣的视频片段。但是,当前的视频理解主要理解主要是视频内容摘要,而几乎没有努力,而对探索视频的结构。受文本轮廓生成的启发,我们介绍了一项新颖的视频理解任务,即视频大纲生成(VOG)。该任务定义为包含两个子任务:(1)首先根据内容结构对视频进行分割,然后(2)为每个段生成一个标题。要学习和评估VOG,我们注释了一个10K+数据集,称为Duvog。具体来说,我们使用OCR工具来识别视频的字幕。然后,要求注释者将字幕分为章节,并将每个章节分为标题。在视频中,突出显示的文本往往是标题,因为它更有可能引起人们的注意。因此,我们提出了一个视觉字幕功能增强的视频大纲生成模型(VSENET),该模型将文本字幕及其视觉字体大小和位置作为输入。我们将VOG任务视为一个序列标记问题,该问题提取了跨标题的位置,然后将其重写以形成最终大纲。此外,基于视频概述和文本概述之间的相似性,我们使用大量文章带有章节标题来预先我们的模型。 Duvog上的实验表明,我们的模型在很大程度上胜过其他基线方法,对于视频分割水平达到了77.1的F1得分,对于标题生成级别的Rouge-L_F0.5的85.0。
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预训练模型已在许多代码智能任务中有效。这些模型在大规模未标记的语料库中进行了预训练,然后在下游任务中进行了微调。但是,由于预训练和下游任务的输入是不同的形式,因此很难充分探索预训练模型的知识。此外,微调的性能强烈依赖于下游数据的量,而实际上,具有稀缺数据的场景很常见。自然语言处理(NLP)领域的最新研究表明,迅速调整,一种调整的新范式,减轻上述问题并在各种NLP任务中实现了有希望的结果。在迅速调整中,在调整过程中插入的提示提供了特定于任务的知识,这对于具有相对较少数据的任务特别有益。在本文中,我们凭经验评估了代码智能任务中迅速调整的用法和效果。我们对流行的预训练模型Codebert和codet5进行及时调整,并尝试三个代码智能任务,包括缺陷预测,代码摘要和代码翻译。我们的实验结果表明,在所有三个任务中,迅速调整始终优于微调。此外,及时调整在低资源场景中显示出很大的潜力,例如,对于代码摘要,平均将微调的BLEU分数提高了26%以上。我们的结果表明,我们可以调整代码智能任务的迅速调整,以实现更好的性能,尤其是在缺乏特定于任务的数据时,我们可以调整及时调整。
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本报告简要说明了我们对AVA主动扬声器检测(ASD)任务的获胜解决方案,在ActivityNet Challenge 2022.我们的基础模型Unicon+继续建立在我们先前的工作,统一的上下文网络(UNICON)和扩展Unicon的基础上对于强大的场景级ASD。我们使用一个简单的基于GRU的模块来增强体系结构,该模块允许重复身份的信息通过阅读和更新操作在场景中流动。我们报告了Ava-Activespeaker测试集94.47%的地图的最佳结果,该测试套件在今年的挑战排行榜上继续排名第一,并显着推动了最新的成绩。
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Transfer learning increasingly becomes an important tool in handling data scarcity often encountered in machine learning. In the application of high-throughput thickness as a downstream process of the high-throughput optimization of optoelectronic thin films with autonomous workflows, data scarcity occurs especially for new materials. To achieve high-throughput thickness characterization, we propose a machine learning model called thicknessML that predicts thickness from UV-Vis spectrophotometry input and an overarching transfer learning workflow. We demonstrate the transfer learning workflow from generic source domain of generic band-gapped materials to specific target domain of perovskite materials, where the target domain data only come from limited number (18) of refractive indices from literature. The target domain can be easily extended to other material classes with a few literature data. Defining thickness prediction accuracy to be within-10% deviation, thicknessML achieves 92.2% (with a deviation of 3.6%) accuracy with transfer learning compared to 81.8% (with a deviation of 3.6%) 11.7% without (lower mean and larger standard deviation). Experimental validation on six deposited perovskite films also corroborates the efficacy of the proposed workflow by yielding a 10.5% mean absolute percentage error (MAPE).
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Benefiting from the intrinsic supervision information exploitation capability, contrastive learning has achieved promising performance in the field of deep graph clustering recently. However, we observe that two drawbacks of the positive and negative sample construction mechanisms limit the performance of existing algorithms from further improvement. 1) The quality of positive samples heavily depends on the carefully designed data augmentations, while inappropriate data augmentations would easily lead to the semantic drift and indiscriminative positive samples. 2) The constructed negative samples are not reliable for ignoring important clustering information. To solve these problems, we propose a Cluster-guided Contrastive deep Graph Clustering network (CCGC) by mining the intrinsic supervision information in the high-confidence clustering results. Specifically, instead of conducting complex node or edge perturbation, we construct two views of the graph by designing special Siamese encoders whose weights are not shared between the sibling sub-networks. Then, guided by the high-confidence clustering information, we carefully select and construct the positive samples from the same high-confidence cluster in two views. Moreover, to construct semantic meaningful negative sample pairs, we regard the centers of different high-confidence clusters as negative samples, thus improving the discriminative capability and reliability of the constructed sample pairs. Lastly, we design an objective function to pull close the samples from the same cluster while pushing away those from other clusters by maximizing and minimizing the cross-view cosine similarity between positive and negative samples. Extensive experimental results on six datasets demonstrate the effectiveness of CCGC compared with the existing state-of-the-art algorithms.
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As one of the prevalent methods to achieve automation systems, Imitation Learning (IL) presents a promising performance in a wide range of domains. However, despite the considerable improvement in policy performance, the corresponding research on the explainability of IL models is still limited. Inspired by the recent approaches in explainable artificial intelligence methods, we proposed a model-agnostic explaining framework for IL models called R2RISE. R2RISE aims to explain the overall policy performance with respect to the frames in demonstrations. It iteratively retrains the black-box IL model from the randomized masked demonstrations and uses the conventional evaluation outcome environment returns as the coefficient to build an importance map. We also conducted experiments to investigate three major questions concerning frames' importance equality, the effectiveness of the importance map, and connections between importance maps from different IL models. The result shows that R2RISE successfully distinguishes important frames from the demonstrations.
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