Abstract
Independent Component Analysis (ICA) is a technique for blind source separation and is also useful in regression (prediction) task when only a subset of random variables is observed. Local independent component analysis (Local ICA) is a non-linear extension of linear ICA models that extracts local feature values by applying linear ICA in conjunction with suitable clustering algorithms. This paper proposes a switching regression model, in which local linear structure is first captured by fuzzy c-regression, and then a non-linear regression model is estimated by a modified ICA model considering fuzzy memberships in each cluster.