Title :
Valid interpretation of feature relevance for linear data mappings
Author :
Frenay, Benoit ; Hofmann, Daniela ; Schulz, Alexander ; Biehl, Michael ; Hammer, Barbara
Author_Institution :
Machine Learning Group, Univ. Catholique de Louvain, Louvain-la-Neuve, Belgium
Abstract :
Linear data transformations constitute essential operations in various machine learning algorithms, ranging from linear regression up to adaptive metric transformation. Often, linear scalings are not only used to improve the model accuracy, rather feature coefficients as provided by the mapping are interpreted as an indicator for the relevance of the feature for the task at hand. This principle, however, can be misleading in particular for high-dimensional or correlated features, since it easily marks irrelevant features as relevant or vice versa. In this contribution, we propose a mathematical formalisation of the minimum and maximum feature relevance for a given linear transformation which can efficiently be solved by means of linear programming. We evaluate the method in several benchmarks, where it becomes apparent that the minimum and maximum relevance closely resembles what is often referred to as weak and strong relevance of the features; hence unlike the mere scaling provided by the linear mapping, it ensures valid interpretability.
Keywords :
data handling; learning (artificial intelligence); linear programming; regression analysis; adaptive metric transformation; linear data mappings; linear data transformations; linear programming; linear regression; machine learning algorithms; mathematical formalisation; maximum feature relevance; minimum feature relevance; Accuracy; Biological system modeling; Data models; Eigenvalues and eigenfunctions; Niobium; Upper bound; Vectors;
Conference_Titel :
Computational Intelligence and Data Mining (CIDM), 2014 IEEE Symposium on
Conference_Location :
Orlando, FL
DOI :
10.1109/CIDM.2014.7008661