AI RESEARCH

Gradient-Based Program Synthesis with Neurally Interpreted Languages

arXiv CS.AI

ArXi:2604.18907v1 Announce Type: cross A central challenge in program induction has long been the trade-off between symbolic and neural approaches. Symbolic methods offer compositional generalisation and data efficiency, yet their scalability is constrained by formalisms such as domain-specific languages (DSLs), which are labour-intensive to create and may not transfer to new domains. In contrast, neural networks flexibly learn from data but tend to generalise poorly in compositional and out-of-distribution settings.