AI RESEARCH
Structure and Scale in Simplicial Sequence Modelling
arXiv CS.LG
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ArXi:2606.01302v1 Announce Type: new Modern large-scale deep learning exhibits two striking empirical phenomena: behavioural scaling laws (predictable performance gains with increasing scale) and emergent mechanisms (structured internal representations and circuits in deep neural networks). We hypothesise that these two phenomena are connected: that predictable changes in behaviour are the result of predictable changes in internal computational structure. In this paper, we report preliminary evidence of such a connection.