Towards Better Representation Learning in the Absence of Sufficient Supervision
Licentiatavhandling, 2022
First, we assume there is some knowledge already available from a different but related task or model, and aim at using that knowledge in our task of interest. We perform this form of knowledge transfer in two different but related ways: i. using the knowledge available in kernel embeddings to improve the training properties of a neural network, and ii. transferring the knowledge available in a large model to a smaller one. In the former case, we use the recent theoretical results on training of neural networks and a multiple kernel learning algorithm to achieve a high performance in terms of both optimization and generalization in a neural network.
Next, we tackle the problem of learning appropriate data representations from an online learning point of view in which one should learn incrementally from an incoming source of data. We assume that the whole feature set of a data input is not always available, and seek a way to learn efficiently from a smaller set of feature values. We propose a novel online learning framework which builds a decision tree from a data stream, and yields highly accurate predictions, competitive with classical online decision tree learners but with a significantly lower cost.
Online learning
Neural network
Decision tree
Representation learning
Kernel embedding
Supervision
Knowledge transfer
Feature acquisition
Författare
Arman Rahbar
Chalmers, Data- och informationsteknik, Data Science och AI
Do Kernel and Neural Embeddings Help in Training and Generalization?
Neural Processing Letters,;Vol. 55(2023)p. 1681-1695
Artikel i vetenskaplig tidskrift
Analysis of Knowledge Transfer in Kernel Regime
International Conference on Information and Knowledge Management, Proceedings,;(2022)p. 1615-1624
Paper i proceeding
Arman Rahbar, Ziyu Ye, Chaoqi Wang, Yuxin Chen, Morteza Haghir Chehreghani. Efficient Online Decision Tree Learning by Utility of Features
Styrkeområden
Informations- och kommunikationsteknik
Ämneskategorier
Systemvetenskap
Datavetenskap (datalogi)
Utgivare
Chalmers
Rännvägen 6B, Analysen
Opponent: Prof. Josephine Sullivan, DIVISION OF ROBOTICS, PERCEPTION AND LEARNING, KTH Royal Institute of Technology, Sweden