| Article ID: | iaor20119903 |
| Volume: | 8 |
| Issue: | 4 |
| Start Page Number: | 371 |
| End Page Number: | 385 |
| Publication Date: | Nov 2011 |
| Journal: | Computational Management Science |
| Authors: | Rinaldi F, Piacentini M |
| Keywords: | networks |
Path loss prediction is a crucial task for the planning of networks in modern mobile communication systems. Learning machine‐based models seem to be a valid alternative to empirical and deterministic methods for predicting the propagation path loss. As learning machine performance depends on the number of input features, a good way to get a more reliable model can be to use techniques for reducing the dimensionality of the data. In this paper we propose a new approach combining learning machines and dimensionality reduction techniques. We report results on a real dataset showing the efficiency of the learning machine‐based methodology and the usefulness of dimensionality reduction techniques in improving the prediction accuracy.