1. Aliperti, G., Sandholz, S., Hagenlocher, M., Rizzi, F., Frey, M., and Garschagen, M., (2019). Tourism, crisis, disaster: An interdisciplinary approach. Annals of Tourism Research, 79, (p.102808).
2. Amatriain, X., Lathia, N., Pujol, J.M., Kwak, H., and Oliver, N., (2009). The wisdom of the few: a collaborative filtering approach based on expert opinions from the web. In Proceedings of the 32nd international ACM SIGIR conference on Research and development in information retrieval (pp. 532-539).
3. Bell, R.M., and Koren, Y., (2007). Improved neighborhood-based collaborative filtering. In KDD cup and workshop at the 13th ACM SIGKDD international conference on knowledge discovery and data mining (pp. 7-14).
4. Bengio, Y., (2009). Learning deep architectures for AI. Foundations and trends® in Machine Learning, 2(1), (pp.1-127).
5. Breiman, L., and Cutler, A., (2012). State of the art of data mining using Random forest. In Proceedings of the Salford Data Mining Conference, San Diego, USA (pp. 24-25).