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What are the Goals of Distributional Semantics?

What are the Goals of Distributional Semantics?

6 May 2020
Guy Edward Toh Emerson
ArXivPDFHTML

Papers citing "What are the Goals of Distributional Semantics?"

8 / 8 papers shown
Title
Language Models, Graph Searching, and Supervision Adulteration: When More Supervision is Less and How to Make More More
Language Models, Graph Searching, and Supervision Adulteration: When More Supervision is Less and How to Make More More
Arvid Frydenlund
LRM
65
0
0
13 Mar 2025
Agentività e telicità in GilBERTo: implicazioni cognitive
Agentività e telicità in GilBERTo: implicazioni cognitive
A. Lombardi
Alessandro Lenci
33
1
0
06 Jul 2023
Empirical Sufficiency Lower Bounds for Language Modeling with
  Locally-Bootstrapped Semantic Structures
Empirical Sufficiency Lower Bounds for Language Modeling with Locally-Bootstrapped Semantic Structures
Jakob Prange
Emmanuele Chersoni
47
0
0
30 May 2023
Using dependency parsing for few-shot learning in distributional
  semantics
Using dependency parsing for few-shot learning in distributional semantics
S. Preda
Guy Edward Toh Emerson
32
0
0
12 May 2022
Signal in Noise: Exploring Meaning Encoded in Random Character Sequences
  with Character-Aware Language Models
Signal in Noise: Exploring Meaning Encoded in Random Character Sequences with Character-Aware Language Models
Mark Chu
Bhargav Srinivasa Desikan
E. Nadler
Ruggerio L. Sardo
Elise Darragh-Ford
Douglas Guilbeault
25
0
0
15 Mar 2022
Explainable Semantic Space by Grounding Language to Vision with
  Cross-Modal Contrastive Learning
Explainable Semantic Space by Grounding Language to Vision with Cross-Modal Contrastive Learning
Yizhen Zhang
Minkyu Choi
Kuan Han
Zhongming Liu
VLM
28
15
0
13 Nov 2021
A Mutual Information Maximization Perspective of Language Representation
  Learning
A Mutual Information Maximization Perspective of Language Representation Learning
Lingpeng Kong
Cyprien de Masson dÁutume
Wang Ling
Lei Yu
Zihang Dai
Dani Yogatama
SSL
228
167
0
18 Oct 2019
Bayesian Neural Word Embedding
Bayesian Neural Word Embedding
Oren Barkan
BDL
144
87
0
21 Mar 2016
1