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Unsupervised Cross-Domain Word Representation Learning

Unsupervised Cross-Domain Word Representation Learning

27 May 2015
Danushka Bollegala
Takanori Maehara
Ken-ichi Kawarabayashi
    SSL
    OOD
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Papers citing "Unsupervised Cross-Domain Word Representation Learning"

8 / 8 papers shown
Title
PERL: Pivot-based Domain Adaptation for Pre-trained Deep Contextualized
  Embedding Models
PERL: Pivot-based Domain Adaptation for Pre-trained Deep Contextualized Embedding Models
Eyal Ben-David
Carmel Rabinovitz
Roi Reichart
SSL
58
61
0
16 Jun 2020
Learning to Create Sentence Semantic Relation Graphs for Multi-Document
  Summarization
Learning to Create Sentence Semantic Relation Graphs for Multi-Document Summarization
Diego Antognini
Boi Faltings
27
22
0
20 Sep 2019
Neural Adaptation Layers for Cross-domain Named Entity Recognition
Neural Adaptation Layers for Cross-domain Named Entity Recognition
Bill Yuchen Lin
Wei Lu
21
92
0
15 Oct 2018
Double Embeddings and CNN-based Sequence Labeling for Aspect Extraction
Double Embeddings and CNN-based Sequence Labeling for Aspect Extraction
Hu Xu
Bing-Quan Liu
Lei Shu
Philip S. Yu
11
325
0
11 May 2018
Neural Structural Correspondence Learning for Domain Adaptation
Neural Structural Correspondence Learning for Domain Adaptation
Yftah Ziser
Roi Reichart
DRL
16
107
0
05 Oct 2016
Unsupervised Word and Dependency Path Embeddings for Aspect Term
  Extraction
Unsupervised Word and Dependency Path Embeddings for Aspect Term Extraction
Yichun Yin
Furu Wei
Li Dong
Kaimeng Xu
Ming Zhang
M. Zhou
27
187
0
25 May 2016
Joint Word Representation Learning using a Corpus and a Semantic Lexicon
Joint Word Representation Learning using a Corpus and a Semantic Lexicon
Danushka Bollegala
M. Alsuhaibani
Takanori Maehara
Ken-ichi Kawarabayashi
NAI
34
62
0
19 Nov 2015
From Frequency to Meaning: Vector Space Models of Semantics
From Frequency to Meaning: Vector Space Models of Semantics
Peter D. Turney
Patrick Pantel
110
2,982
0
04 Mar 2010
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