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LAWDR: Language-Agnostic Weighted Document Representations from
  Pre-trained Models

LAWDR: Language-Agnostic Weighted Document Representations from Pre-trained Models

7 June 2021
Hongyu Gong
Vishrav Chaudhary
Yuqing Tang
Francisco Guzmán
ArXivPDFHTML

Papers citing "LAWDR: Language-Agnostic Weighted Document Representations from Pre-trained Models"

2 / 2 papers shown
Title
Mitigating Semantic Leakage in Cross-lingual Embeddings via
  Orthogonality Constraint
Mitigating Semantic Leakage in Cross-lingual Embeddings via Orthogonality Constraint
Dayeon Ki
Cheonbok Park
H. Kim
FedML
31
0
0
24 Sep 2024
Efficient Vector Representation for Documents through Corruption
Efficient Vector Representation for Documents through Corruption
Minmin Chen
46
117
0
08 Jul 2017
1