Can meta-learning discover generic ways of processing time series (TS) from a diverse dataset so as to greatly improve generalization on new TS coming from different datasets? This work provides positive evidence to this using a broad meta-learning framework which we show subsumes many existing meta-learning algorithms. Our theoretical analysis suggests that residual connections act as a meta-learning adaptation mechanism, generating a subset of task-specific parameters based on a given TS input, thus gradually expanding the expressive power of the architecture on-the-fly. The same mechanism is shown via linearization analysis to have the interpretation of a sequential update of the final linear layer. Our empirical results on a wide range ...
Real-world time-series datasets often violate the assumptions of standard supervised learning for fo...
Deep learning models perform well when there is enough data available for training, but otherwise th...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
One of the challenging questions in time series forecasting is how to find the best algorithm. In re...
There are many algorithms that can be used for the time-series forecasting problem, ranging from sim...
© 2018 The Author(s). There are many algorithms that can be used for the time-series forecasting pro...
This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We...
The importance of an interference-less machine learning scheme in time series prediction is crucial,...
Dynamic real-world applications that generate data continuously have introduced new challenges for t...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
A natural progression in machine learning research is to automate and learn from data increasingly m...
Multi-variable time series (MTS) information is a typical type of data inference in the real world. ...
Techniques of hybridisation and ensemble learning are popular model fusion techniques for improving ...
Real-world time-series datasets often violate the assumptions of standard supervised learning for fo...
Deep learning models perform well when there is enough data available for training, but otherwise th...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...
One of the challenging questions in time series forecasting is how to find the best algorithm. In re...
There are many algorithms that can be used for the time-series forecasting problem, ranging from sim...
© 2018 The Author(s). There are many algorithms that can be used for the time-series forecasting pro...
This paper introduces a new framework for data efficient and versatile learning. Specifically: 1) We...
The importance of an interference-less machine learning scheme in time series prediction is crucial,...
Dynamic real-world applications that generate data continuously have introduced new challenges for t...
Although artificial neural networks are occasionally used in forecasting future sales for manufactur...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
A natural progression in machine learning research is to automate and learn from data increasingly m...
Multi-variable time series (MTS) information is a typical type of data inference in the real world. ...
Techniques of hybridisation and ensemble learning are popular model fusion techniques for improving ...
Real-world time-series datasets often violate the assumptions of standard supervised learning for fo...
Deep learning models perform well when there is enough data available for training, but otherwise th...
One of the fundamental assumptions of machine learning is that learnt models are applied to data th...