Machine Learning

Combining Symbolic and Function Evaluation Expressions In Neural Programs

Tagged: , ,

This topic contains 0 replies, has 1 voice, and was last updated by  arXiv 11 months ago.


  • arXiv
    5 pts

    Combining Symbolic and Function Evaluation Expressions In Neural Programs

    Neural programming involves training neural networks to learn programs from data. Previous works have failed to achieve good generalization performance, especially on programs with high complexity or on large domains. This is because they mostly rely either on black-box function evaluations that do not capture the structure of the program, or on detailed execution traces that are expensive to obtain, and hence the training data has poor coverage of the domain under consideration. We present a novel framework that utilizes black-box function evaluations, in conjunction with symbolic expressions that integrate relationships between the given functions. We employ tree LSTMs to incorporate the structure of the symbolic expression trees. We use tree encoding for numbers present in function evaluation data, based on their decimal representation. We present an evaluation benchmark for this task to demonstrate our proposed model combines symbolic reasoning and function evaluation in a fruitful manner, obtaining high accuracies in our experiments. Our framework generalizes significantly better to expressions of higher depth and is able to fill partial equations with valid completions.

    Combining Symbolic and Function Evaluation Expressions In Neural Programs
    by Forough Arabshahi, Sameer Singh, Animashree Anandkumar
    https://arxiv.org/pdf/1801.04342v1.pdf

You must be logged in to reply to this topic.