“…Merz et al (2013) have classified these parameters into flood intensity factors including depth of water, flow velocity, return period, duration, and contamination of water; and building flood-resistant indicators including material and characteristics of property, individual precaution and emergency actions, early warning time and preparedness, former flood experience of residents, and residents' socio-economic situations (Merz et al 2013). Accordingly, data mining techniques, as effective alternatives to traditional stage-damage functions, have recently been used for exploring the interaction and the importance of different damage-influencing parameters in Germany, the Mekong Delta, and Australia (Merz et al 2013;Chinh et al 2015;Hasanzadeh Nafari et al 2016c;Kreibich et al 2016). These studies show that the impacts of different affecting factors can be studied effectively with the treebased data mining technique, which is mostly utilized in water resource studies and hydrology science, but rarely in flood-loss modelling (Merz et al 2013).…”