Enhanced and Efficient Reasoning in Large Learning Models
Leslie G. Valiant

TL;DR
This paper introduces an efficient reasoning method for large language models that explicitly encodes object relationships, enabling more principled and computationally feasible inference.
Contribution
It proposes a recoding approach that explicitly encodes relationships, making relational rule learning polynomial time and improving reasoning in large models.
Findings
Recoding data into Unary Relational Integracode enhances explicit relationship representation.
The method enables polynomial time learning of relational rules from training data.
It supports sound reasoning within and across multiple inference calls.
Abstract
In current Large Language Models we can trust the production of smoothly flowing prose on the basis of the principles of machine learning. However, there is no comparably principled basis to justify trust in the content of the text produced. It appears to be conventional wisdom that addressing this issue by adding more principled reasoning is not computationally affordable. Here we propose a principled method of reasoning that is efficient enough to be practical for large language models. Further, the method allows the retention of much of the currently used software and hardware base. Our method for improving the functioning of large language models consists of a first stage of preprocessing that recodes the data to a Unary Relational Integracode that is more explicit about the relationships among the objects described in the text, followed as a second stage by a standard but…
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