TY - JOUR T1 - Inverted Encoding Models Assay Population-Level Stimulus Representations, Not Single-Unit Neural Tuning JF - eneuro JO - eNeuro DO - 10.1523/ENEURO.0098-18.2018 SP - ENEURO.0098-18.2018 AU - Thomas C. Sprague AU - Kirsten C. S. Adam AU - Joshua J. Foster AU - Masih Rahmati AU - David W. Sutterer AU - Vy A. Vo Y1 - 2018/05/11 UR - http://www.eneuro.org/content/early/2018/05/11/ENEURO.0098-18.2018.abstract N2 - Significance Statement Inverted encoding models (IEMs) are a powerful tool for reconstructing population-level stimulus representations from aggregate measurements of neural activity (e.g., fMRI or EEG). In a recent report, Liu et al., (2018) tested whether IEMs can provide information about the underlying tuning of single units. Here, we argue that using stimulus reconstructions to infer properties of single neurons, such as neural tuning bandwidth, is an ill-posed problem with no unambiguous solution. Instead of interpreting results from these methods as evidence about single-unit tuning, we emphasize the utility of these methods for assaying population-level stimulus representations. These can be compared across task conditions to better constrain theories of large-scale neural information processing across experimental manipulations, such as changing sensory input or attention. ER -