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RepL4NLP@ACL 2018 Melbourne, Australia
- Isabelle Augenstein, Kris Cao, He He, Felix Hill, Spandana Gella, Jamie Kiros, Hongyuan Mei, Dipendra Misra:

Proceedings of The Third Workshop on Representation Learning for NLP, Rep4NLP@ACL 2018, Melbourne, Australia, July 20, 2018. Association for Computational Linguistics 2018, ISBN 978-1-948087-43-8 - Edgar Altszyler, Mariano Sigman, Diego Fernández Slezak:

Corpus Specificity in LSA and Word2vec: The Role of Out-of-Domain Documents. 1-10 - Shang Gao, Arvind Ramanathan, Georgia D. Tourassi:

Hierarchical Convolutional Attention Networks for Text Classification. 11-23 - Hwiyeol Jo, Stanley Jungkyu Choi:

Extrofitting: Enriching Word Representation and its Vector Space with Semantic Lexicons. 24-29 - Dennis Singh Moirangthem, Minho Lee:

Chat Discrimination for Intelligent Conversational Agents with a Hybrid CNN-LMTGRU Network. 30-40 - Amr Rekaby Salama, Özge Alaçam, Wolfgang Menzel:

Text Completion using Context-Integrated Dependency Parsing. 41-49 - Qiuchi Li, Sagar Uprety, Benyou Wang, Dawei Song:

Quantum-Inspired Complex Word Embedding. 50-57 - Kosuke Nishida, Kyosuke Nishida, Hisako Asano, Junji Tomita:

Natural Language Inference with Definition Embedding Considering Context On the Fly. 58-63 - Lidia Pivovarova, Roman Yangarber:

Comparison of Representations of Named Entities for Document Classification. 64-68 - Shuai Tang, Hailin Jin, Chen Fang, Zhaowen Wang, Virginia R. de Sa:

Speeding up Context-based Sentence Representation Learning with Non-autoregressive Convolutional Decoding. 69-78 - Gil Levi:

Connecting Supervised and Unsupervised Sentence Embeddings. 79-83 - Weiguo Sheng:

A Hybrid Learning Scheme for Chinese Word Embedding. 84-90 - Kawin Ethayarajh:

Unsupervised Random Walk Sentence Embeddings: A Strong but Simple Baseline. 91-100 - Yadollah Yaghoobzadeh, Katharina Kann, Hinrich Schütze:

Evaluating Word Embeddings in Multi-label Classification Using Fine-Grained Name Typing. 101-106 - Ade Romadhony, Alfan Farizki Wicaksono, Ayu Purwarianti, Dwi Hendratmo Widyantoro:

A Dense Vector Representation for Open-Domain Relation Tuples. 107-112 - Jilei Wang, Shiying Luo, Weiyan Shi, Tao Dai, Shu-Tao Xia:

Exploiting Common Characters in Chinese and Japanese to Learn Cross-Lingual Word Embeddings via Matrix Factorization. 113-121 - Chakaveh Saedi, António Branco, João António Rodrigues, João Silva

:
WordNet Embeddings. 122-131 - Yanrong Wu, Zhichun Wang:

Knowledge Graph Embedding with Numeric Attributes of Entities. 132-136 - Ivan Vulic:

Injecting Lexical Contrast into Word Vectors by Guiding Vector Space Specialisation. 137-143 - Ahmet Üstün, Murathan Kurfali, Burcu Can:

Characters or Morphemes: How to Represent Words? 144-153 - Athul Paul Jacob, Zhouhan Lin, Alessandro Sordoni, Yoshua Bengio:

Learning Hierarchical Structures On-The-Fly with a Recurrent-Recursive Model for Sequences. 154-158 - Mareike Hartmann, Anders Søgaard:

Limitations of Cross-Lingual Learning from Image Search. 159-163 - Yinfei Yang, Steve Yuan, Daniel Cer, Sheng-yi Kong, Noah Constant, Petr Pilar, Heming Ge, Yun-Hsuan Sung, Brian Strope, Ray Kurzweil:

Learning Semantic Textual Similarity from Conversations. 164-174 - Katherine Yu, Haoran Li, Barlas Oguz:

Multilingual Seq2seq Training with Similarity Loss for Cross-Lingual Document Classification. 175-179 - Nelson F. Liu, Omer Levy, Roy Schwartz

, Chenhao Tan, Noah A. Smith:
LSTMs Exploit Linguistic Attributes of Data. 180-186 - Samuel Broscheit:

Learning Distributional Token Representations from Visual Features. 187-194 - Denis Newman-Griffis

, Albert M. Lai, Eric Fosler-Lussier:
Jointly Embedding Entities and Text with Distant Supervision. 195-206 - Angel Daza, Anette Frank:

A Sequence-to-Sequence Model for Semantic Role Labeling. 207-216 - Nikola Ljubesic, Darja Fiser, Anita Peti-Stantic:

Predicting Concreteness and Imageability of Words Within and Across Languages via Word Embeddings. 217-222

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