A Computational Theory for Life-Long Learning of Semantics

06/28/2018
by   Peter Sutor Jr., et al.
2

Semantic vectors are learned from data to express semantic relationships between elements of information, for the purpose of solving and informing downstream tasks. Other models exist that learn to map and classify supervised data. However, the two worlds of learning rarely interact to inform one another dynamically, whether across types of data or levels of semantics, in order to form a unified model. We explore the research problem of learning these vectors and propose a framework for learning the semantics of knowledge incrementally and online, across multiple mediums of data, via binary vectors. We discuss the aspects of this framework to spur future research on this approach and problem.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/27/2017

KeyVec: Key-semantics Preserving Document Representations

Previous studies have demonstrated the empirical success of word embeddi...
research
05/26/2022

HIRL: A General Framework for Hierarchical Image Representation Learning

Learning self-supervised image representations has been broadly studied ...
research
02/01/2022

HCSC: Hierarchical Contrastive Selective Coding

Hierarchical semantic structures naturally exist in an image dataset, in...
research
10/29/2017

Personalized word representations Carrying Personalized Semantics Learned from Social Network Posts

Distributed word representations have been shown to be very useful in va...
research
10/06/2021

Semantic Prediction: Which One Should Come First, Recognition or Prediction?

The ultimate goal of video prediction is not forecasting future pixel-va...
research
10/21/2014

Towards a Model Theory for Distributed Representations

Distributed representations (such as those based on embeddings) and disc...
research
05/06/2020

What are the Goals of Distributional Semantics?

Distributional semantic models have become a mainstay in NLP, providing ...

Please sign up or login with your details

Forgot password? Click here to reset