Aman Ahuja
2022
Parsing Electronic Theses and Dissertations Using Object Detection
Aman Ahuja
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Alan Devera
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Edward Alan Fox
Proceedings of the first Workshop on Information Extraction from Scientific Publications
Electronic theses and dissertations (ETDs) contain valuable knowledge that can be useful for a wide range of purposes. To effectively utilize the knowledge contained in ETDs for downstream tasks such as search and retrieval, question-answering, and summarization, the data first needs to be parsed and stored in a format such as XML. However, since most of the ETDs available on the web are PDF documents, parsing them to make their data useful for downstream tasks is a challenge. In this work, we propose a dataset and a framework to help with parsing long scholarly documents such as ETDs. We take the Object Detection approach for document parsing. We first introduce a set of objects that are important elements of an ETD, along with a new dataset ETD-OD that consists of over 25K page images originating from 200 ETDs with bounding boxes around each of the objects. We also propose a framework that utilizes this dataset for converting ETDs to XML, which can further be used for ETD-related downstream tasks. Our code and pre-trained models are available at: https://github.com/Opening-ETDs/ETD-OD.
2021
The First Workshop on Evaluations and Assessments of Neural Conversation Systems
Wei Wei
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Bo Dai
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Tuo Zhao
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Lihong Li
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Diyi Yang
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Yun-Nung Chen
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Y-Lan Boureau
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Asli Celikyilmaz
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Alborz Geramifard
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Aman Ahuja
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Haoming Jiang
The First Workshop on Evaluations and Assessments of Neural Conversation Systems
2020
Question Answering with Long Multiple-Span Answers
Ming Zhu
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Aman Ahuja
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Da-Cheng Juan
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Wei Wei
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Chandan K. Reddy
Findings of the Association for Computational Linguistics: EMNLP 2020
Answering questions in many real-world applications often requires complex and precise information excerpted from texts spanned across a long document. However, currently no such annotated dataset is publicly available, which hinders the development of neural question-answering (QA) systems. To this end, we present MASH-QA, a Multiple Answer Spans Healthcare Question Answering dataset from the consumer health domain, where answers may need to be excerpted from multiple, non-consecutive parts of text spanned across a long document. We also propose MultiCo, a neural architecture that is able to capture the relevance among multiple answer spans, by using a query-based contextualized sentence selection approach, for forming the answer to the given question. We also demonstrate that conventional QA models are not suitable for this type of task and perform poorly in this setting. Extensive experiments are conducted, and the experimental results confirm the proposed model significantly outperforms the state-of-the-art QA models in this multi-span QA setting.
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