“…When the PC/BC algorithm (with appropriate learning rules) is trained on natural images, it learns a dictionary of basis vectors (i.e., synaptic weights) that resemble the RFs of V1 cells (Spratling, 2012b). Many other algorithms, when trained on natural images, have also been shown to be able to learn basis sets that resemble the RFs of cells in primary visual cortex (e.g., Bell and Sejnowski, 1997;Falconbridge et al, 2006;Hamker and Wiltschut, 2007;Harpur, 1997;Hoyer, 2003Hoyer, , 2004Hoyer and Hyvärinen, 2000;Jehee and Ballard, 2009;Lücke, 2009;Olshausen and Field, 1996;Perrinet, 2010;Ranzato et al, 2007;Rehn and Sommer, 2007;Van Hateren and van der Schaaf, 1998;Weber and Triesch, 2008;Wiltschut and Hamker, 2009). A common feature of all these algorithms is that the learnt representation is sparse.…”