Harry00
: This work details how to perform "binding" of information (connecting concepts) using circular convolution, a technique Harry00 utilizes for bitwise reasoning without standard backpropagation.
: This paper outlines the "Map-Bind-Bundle" framework, which allows for the manipulation of symbolic structures within a continuous vector space—key to the MLE's ability to perform logical operations.
: It relies on pure bitwise operations, potentially making it much more efficient for memory and compute. harry00
: This modern paper connects traditional associative memories to the attention mechanisms used in current LLMs, providing the energy minimization framework that the MLE project aims to optimize. Key Technical Aspects
: This foundational paper introduces a mathematical model for human long-term memory using high-dimensional binary vectors and Hamming distance for addressing. : This work details how to perform "binding"
According to technical reviews on platforms like X (Twitter) , Harry00's approach is unique because it is:
: Unlike autoregressive LLMs, it uses energy minimization to "reason" through problems. harry00
The MLE-Morpho-Logic-Engine is built on several landmark papers in neural computing and vector logic: