Modular Neural Computer
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces the Modular Neural Computer (MNC), a memory-augmented neural architecture designed for exact algorithmic computation on inputs of varying length.
- MNC combines an external associative memory with explicit read/write heads, a controller MLP, and a homogeneous set of modular neural components to achieve deterministic, programmable behavior.
- Rather than learning an algorithm end-to-end from data, MNC realizes algorithms through analytically specified neural components with fixed interfaces and exact behavior, using one-hot module gates to control computation flow.
- The architecture is demonstrated via three case studies (minimum of an array, in-place sorting, and A* search on a fixed instance) showing deterministic state evolution and explicit intermediate results.
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