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Editors contains: "Pustejovsky, James"

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  1. Xue, Nianwen; Croft, William; Hajic, Jan; Huang, Chu-Ren; Oepen, Stephan; Palmer, Martha; Pustejovsky, James (Ed.)
    Developers of cross-lingual semantic annotation schemes face a number of issues not encountered in monolingual annotation. This paper discusses four such issues, related to the establishment of annotation labels, and the treatment of languages with more fine-grained, more coarse-grained, and cross-cutting categories. We propose that a lattice-like architecture of the annotation categories can adequately handle all four issues, and at the same time remain both intuitive for annotators and faithful to typological insights. This position is supported by a brief annotation experiment. 
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  2. Xue, Nianwen; Croft, William; Hajic, Jan; Huang, Chu-Ren; Oepen, Stephan; Palmer, Martha; Pustejovsky, James (Ed.)
    This paper presents an annotation scheme for modality that employs a dependency structure. Events and sources (here, conceivers) are represented as nodes and epistemic strength relations characterize the edges. The epistemic strength values are largely based on Saurí and Pustejovsky’s (2009) FactBank, while the dependency structure mirrors Zhang and Xue’s (2018b) approach to temporal relations. Six documents containing 377 events have been annotated by two expert annotators with high levels of agreement. 
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  3. Calzolari, Nicoletta; Huang, Chu-Ren; Kim, Hansaem; Pustejovsky, James; Wanner, Leo; Choi, Key-Sun; Ryu, Pum-Mo; Chen, Hsin-Hsi; Donatelli, Lucia; Ji, Heng (Ed.)
    "Multilingual neural machine translation (MNMT) jointly trains a shared model for translation with multiple language pairs. However, traditional subword-based MNMT approaches suffer from out-of-vocabulary (OOV) issues and representation bottleneck, which often degrades translation performance on certain language pairs. While byte tokenization is used to tackle the OOV problems in neural machine translation (NMT), until now its capability has not been validated in MNMT. Additionally, existing work has not studied how byte encoding can benefit endangered language translation to our knowledge. We propose a byte-based multilingual neural machine translation system (BMNMT) to alleviate the representation bottleneck and improve translation performance in endangered languages. Furthermore, we design a random byte mapping method with an ensemble prediction to enhance our model robustness. Experimental results show that our BMNMT consistently and significantly outperforms subword/word-based baselines on twelve language pairs up to +18.5 BLEU points, an 840{\%} relative improvement.", 
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