As we mentioned in the introduction, the goal of meta learning is to allow an ML algorithm (in our case, NN) to learn from relatively fewer training samples compared to standard supervised training. Some meta learning algorithms try to achieve this goal by finding a mapping between their existing knowledge of the domain of a well-known task to the domain of a new task. Other algorithms are simply designed from scratch to learn from fewer training samples. Yet another category of algorithms introduce new optimization training techniques, designed specifically with meta learning in mind. But before we discuss these topics, let's introduce some basic meta learning paradigms. In a standard ML supervised learning task, we aim to minimize the cost function J(θ) across a training dataset D by updating the model parameters θ (network weights...
United States
United Kingdom
India
Germany
France
Canada
Russia
Spain
Brazil
Australia
Argentina
Austria
Belgium
Bulgaria
Chile
Colombia
Cyprus
Czechia
Denmark
Ecuador
Egypt
Estonia
Finland
Greece
Hungary
Indonesia
Ireland
Italy
Japan
Latvia
Lithuania
Luxembourg
Malaysia
Malta
Mexico
Netherlands
New Zealand
Norway
Philippines
Poland
Portugal
Romania
Singapore
Slovakia
Slovenia
South Africa
South Korea
Sweden
Switzerland
Taiwan
Thailand
Turkey
Ukraine