Standard inductive learning requires that training and test instances come from the same distribution. Transfer learning seeks to remove this restriction. In shallow trans- fer, test instances are from the same domain, but have a different distribution. In deep transfer, test instances are from a different domain entirely (i.e., described by different predicates). Humans routinely perform deep transfer, but few learning systems, if any, are capable of it. In this paper we propose an approach based on a form of second-order Markov logic. Our algorithm discovers structural regularities in the source domain in the form of Markov logic formulas with predicate variables, and instantiates these formulas with predicates from the target domain. Usi...
This research project addresses the problem of statistical predicate invention in machine learning. ...
AbstractIn transfer learning the aim is to solve new learning tasks using fewer examples by using in...
Transfer learning, which is to improve the learning performance in the target domain by leveraging u...
This article argues that currently the largest gap between human and machine learning is learning al...
This article argues that currently the largest gap between human and machine learning is learning al...
Markov logic networks (MLNs) generalize first-order logic and probabilistic graphical models, using ...
The traditional way of obtaining models from data, inductive learning, has proved itself both in the...
The traditional way of obtaining models from data, inductive learning, has proved itself both in the...
We propose a new algorithm for transfer learning of Markov Logic Network (MLN) structure. An importa...
Abstract—Transfer learning is typically performed between problem instances within the same domain. ...
The problem of transfer learning, where information gained in one learning task is used to improve p...
textTraditionally, machine learning algorithms assume that training data is provided as a set of ind...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
In this work we seek to realize a new kind of social network platform which could automatically make...
In transfer learning the aim is to solve new learning tasks using fewer examples by using informatio...
This research project addresses the problem of statistical predicate invention in machine learning. ...
AbstractIn transfer learning the aim is to solve new learning tasks using fewer examples by using in...
Transfer learning, which is to improve the learning performance in the target domain by leveraging u...
This article argues that currently the largest gap between human and machine learning is learning al...
This article argues that currently the largest gap between human and machine learning is learning al...
Markov logic networks (MLNs) generalize first-order logic and probabilistic graphical models, using ...
The traditional way of obtaining models from data, inductive learning, has proved itself both in the...
The traditional way of obtaining models from data, inductive learning, has proved itself both in the...
We propose a new algorithm for transfer learning of Markov Logic Network (MLN) structure. An importa...
Abstract—Transfer learning is typically performed between problem instances within the same domain. ...
The problem of transfer learning, where information gained in one learning task is used to improve p...
textTraditionally, machine learning algorithms assume that training data is provided as a set of ind...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
In this work we seek to realize a new kind of social network platform which could automatically make...
In transfer learning the aim is to solve new learning tasks using fewer examples by using informatio...
This research project addresses the problem of statistical predicate invention in machine learning. ...
AbstractIn transfer learning the aim is to solve new learning tasks using fewer examples by using in...
Transfer learning, which is to improve the learning performance in the target domain by leveraging u...