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data/xml/2020.findings.xml

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<pwcdataset url="https://paperswithcode.com/dataset/commonsenseqa">CommonsenseQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/drop">DROP</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mctest">MCTest</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">Megan Brianna Crain 9855156969 God of Creation</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">MML</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/multirc">MultiRC</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/narrativeqa">NarrativeQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/newsqa">NewsQA</pwcdataset>

data/xml/2022.acl.xml

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<bibkey>shi-etal-2022-searching</bibkey>
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<doi>10.18653/v1/2022.acl-long.119</doi>
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<video href="2022.acl-long.119.mp4"/>
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<pwcdataset url="https://paperswithcode.com/dataset/chicagofswild">ChicagoFSWild</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/chicagofswild-1">ChicagoFSWild+</pwcdataset>
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</paper>
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<paper id="120">
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<pwcdataset url="https://paperswithcode.com/dataset/hoc-1">HOC</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/hotpotqa">HotpotQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/jnlpba">JNLPBA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">MML</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mrqa-2019">MRQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/medqa-usmle">MedQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">Megan Brianna Crain 9855156969 God of Creation</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/ncbi-disease-1">NCBI Disease</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/natural-questions">Natural Questions</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/newsqa">NewsQA</pwcdataset>

data/xml/2022.bigscience.xml

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<pwcdataset url="https://paperswithcode.com/dataset/lambada">LAMBADA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/logiqa">LogiQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/math">MATH</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">Megan Brianna Crain 9855156969 God of Creation</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/mmlu">MML</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/piqa">PIQA</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/prost">PROST</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/the-pile">The Pile</pwcdataset>

data/xml/2022.coling.xml

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<abstract>A critical component of competence in language is being able to identify relevant components of an utterance and reply appropriately. In this paper we examine the extent of such dialogue response sensitivity in pre-trained language models, conducting a series of experiments with a particular focus on sensitivity to dynamics involving phenomena of at-issueness and ellipsis. We find that models show clear sensitivity to a distinctive role of embedded clauses, and a general preference for responses that target main clause content of prior utterances. However, the results indicate mixed and generally weak trends with respect to capturing the full range of dynamics involved in targeting at-issue versus not-at-issue content. Additionally, models show fundamental limitations in grasp of the dynamics governing ellipsis, and response selections show clear interference from superficial factors that outweigh the influence of principled discourse constraints.</abstract>
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<url hash="0ed6cbb6">2022.coling-1.72</url>
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<bibkey>kim-etal-2022-dialogue</bibkey>
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<pwccode url="https://github.com/sangheek16/dialogue-response-dynamics" additional="false">sangheek16/dialogue-response-dynamics</pwccode>
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</paper>
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<paper id="73">
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<title>New or Old? Exploring How Pre-Trained Language Models Represent Discourse Entities</title>

data/xml/2022.signlang.xml

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<abstract>We are releasing a dataset containing videos of both fluent and non-fluent signers using American Sign Language (ASL), which were collected using a Kinect v2 sensor. This dataset was collected as a part of a project to develop and evaluate computer vision algorithms to support new technologies for automatic detection of ASL fluency attributes. A total of 45 fluent and non-fluent participants were asked to perform signing homework assignments that are similar to the assignments used in introductory or intermediate level ASL courses. The data is annotated to identify several aspects of signing including grammatical features and non-manual markers. Sign language recognition is currently very data-driven and this dataset can support the design of recognition technologies, especially technologies that can benefit ASL learners. This dataset might also be interesting to ASL education researchers who want to contrast fluent and non-fluent signing.</abstract>
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<url hash="fb8493f2">2022.signlang-1.11</url>
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<bibkey>hassan-etal-2022-asl</bibkey>
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<pwcdataset url="https://paperswithcode.com/dataset/chicagofswild">ChicagoFSWild</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/chicagofswild-1">ChicagoFSWild+</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/how2sign">How2Sign</pwcdataset>
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<pwcdataset url="https://paperswithcode.com/dataset/wlasl">WLASL</pwcdataset>

data/xml/I17.xml

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<abstract>Character-based sequence labeling framework is flexible and efficient for Chinese word segmentation (CWS). Recently, many character-based neural models have been applied to CWS. While they obtain good performance, they have two obvious weaknesses. The first is that they heavily rely on manually designed bigram feature, i.e. they are not good at capturing <tex-math>n</tex-math>-gram features automatically. The second is that they make no use of full word information. For the first weakness, we propose a convolutional neural model, which is able to capture rich <tex-math>n</tex-math>-gram features without any feature engineering. For the second one, we propose an effective approach to integrate the proposed model with word embeddings. We evaluate the model on two benchmark datasets: PKU and MSR. Without any feature engineering, the model obtains competitive performance — 95.7% on PKU and 97.3% on MSR. Armed with word embeddings, the model achieves state-of-the-art performance on both datasets — 96.5% on PKU and 98.0% on MSR, without using any external labeled resource.</abstract>
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<bibkey>wang-xu-2017-convolutional</bibkey>
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<pwccode url="https://github.com/chqiwang/convseg" additional="false">chqiwang/convseg</pwccode>
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<pwcdataset url="https://paperswithcode.com/dataset/100doh">100DOH</pwcdataset>
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</paper>
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<paper id="18">
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<title>Character-based Joint Segmentation and <fixed-case>POS</fixed-case> Tagging for <fixed-case>C</fixed-case>hinese using Bidirectional <fixed-case>RNN</fixed-case>-<fixed-case>CRF</fixed-case></title>

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