Property Invariant Embedding for Automated Reasoning

11/27/2019
by   Miroslav Olšák, et al.
0

Automated reasoning and theorem proving have recently become major challenges for machine learning. In other domains, representations that are able to abstract over unimportant transformations, such as abstraction over translations and rotations in vision, are becoming more common. Standard methods of embedding mathematical formulas for learning theorem proving are however yet unable to handle many important transformations. In particular, embedding previously unseen labels, that often arise in definitional encodings and in Skolemization, has been very weak so far. Similar problems appear when transferring knowledge between known symbols. We propose a novel encoding of formulas that extends existing graph neural network models. This encoding represents symbols only by nodes in the graph, without giving the network any knowledge of the original labels. We provide additional links between such nodes that allow the network to recover the meaning and therefore correctly embed such nodes irrespective of the given labels. We test the proposed encoding in an automated theorem prover based on the tableaux connection calculus, and show that it improves on the best characterizations used so far. The encoding is further evaluated on the premise selection task and a newly introduced symbol guessing task, and shown to correctly predict 65

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/22/2021

A Study of Continuous Vector Representationsfor Theorem Proving

Applying machine learning to mathematical terms and formulas requires a ...
research
06/07/2021

Learning to Guide a Saturation-Based Theorem Prover

Traditional automated theorem provers have relied on manually tuned heur...
research
04/02/2020

Fundamental Limits of Distributed Encoding

In general coding theory, we often assume that error is observed in tran...
research
07/21/2021

Learning Theorem Proving Components

Saturation-style automated theorem provers (ATPs) based on the given cla...
research
05/15/2023

An Ensemble Approach for Automated Theorem Proving Based on Efficient Name Invariant Graph Neural Representations

Using reinforcement learning for automated theorem proving has recently ...
research
06/14/2016

DeepMath - Deep Sequence Models for Premise Selection

We study the effectiveness of neural sequence models for premise selecti...
research
09/28/2017

Premise Selection for Theorem Proving by Deep Graph Embedding

We propose a deep learning-based approach to the problem of premise sele...

Please sign up or login with your details

Forgot password? Click here to reset