Skip to yearly menu bar Skip to main content


Poster

Top-Down Neural Model For Formulae

Karel Chvalovský

Great Hall BC #8

Keywords: [ recurrent neural networks ] [ recursive neural networks ] [ logic ] [ formula ]


Abstract:

We present a simple neural model that given a formula and a property tries to answer the question whether the formula has the given property, for example whether a propositional formula is always true. The structure of the formula is captured by a feedforward neural network recursively built for the given formula in a top-down manner. The results of this network are then processed by two recurrent neural networks. One of the interesting aspects of our model is how propositional atoms are treated. For example, the model is insensitive to their names, it only matters whether they are the same or distinct.

Live content is unavailable. Log in and register to view live content