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hi everyone welcome to our paper is relating simple sentence representations in deep neural networks and the cream I am sure missed her from Indian history of Science Bangalore this is joint work with how thang from Carnegie Mellon University and pathos althought from iousy and Tom Mitchell from Sealy in our work we try to understand relationships between language representations in deepen the networks and the brain we know that brain is the best language processing machine currently deeply Network models are doing very well in understanding language as well me gives both these models the same input a simple sentence of the form the dog ear the bone and then study relationships between the representations of the two models in the past Layla in her seminal work in immunity 2014 showed that there is panel ISM between brain activations and the deep neural network context later presentations we extend her work by comparing multiple deep unit of models with the brain in addition we do deta