TY - JOUR T1 - Your favorite color makes learning more precise and adaptable JF - bioRxiv DO - 10.1101/097741 SP - 097741 AU - Shiva Farashahi AU - Katherine Rowe AU - Zohra Aslami AU - Daeyeol Lee AU - Alireza Soltani Y1 - 2017/01/01 UR - http://biorxiv.org/content/early/2017/08/29/097741.abstract N2 - Learning from reward feedback is essential for survival but can become extremely challenging with myriad choice options. Here, we propose that learning reward values of individual features can provide a heuristic for estimating reward values of choice options in dynamic, multidimensional environments. We hypothesized that this feature-based learning occurs not just because it can reduce dimensionality, but more importantly because it can increase adaptability without compromising precision of learning. We experimentally tested this hypothesis and found that in dynamic environments, human subjects adopted feature-based learning even when this approach does not reduce dimensionality. Even in static, low-dimensional environments, subjects initially adopted feature-based learning and gradually switched to learning reward values of individual options, depending on how accurately objects’ values can be predicted by combining feature values. Our computational models reproduced these results and highlight the importance of neurons coding feature values for parallel learning of values for features and objects. ER -