When we say parametric assumptions, we are referring to base assumptions that algorithms make about the shape of the data. In the previous chapter, while exploring principal component analysis (PCA), we discovered that the end result of the algorithm produced components that we could use to transform data through a single matrix multiplication. The assumption that we were making was that the original data took on a shape that could be decomposed and represented by a single linear transformation (the matrix operation). But what if that is not true? What if PCA is unable to extract useful features from the original dataset? Algorithms such as PCA and linear discriminate analysis (LDA) will always be able to find features, but they may not be useful at all. Moreover, these algorithms rely on a predetermined equation and will always output...
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