Publication | Open Access
Routing Networks and the Challenges of Modular and Compositional Computation
39
Citations
53
References
2019
Year
Artificial IntelligenceStructured PredictionEngineeringMachine LearningNetwork RoutingNetwork AnalysisEducationLarge Language ModelMixture Of ExpertModule CompositionNatural Language ProcessingData ScienceScalable RoutingMulti-task LearningParallel ComputingCombinatorial OptimizationRouting ProtocolLarge Ai ModelCombinatorial ComplexityKnowledge DiscoveryComputer EngineeringRoutingComputer ScienceCompositionalityDeep LearningNetwork Routing AlgorithmNetwork ScienceCompositional ComputationModule ParametersRobust Routing
Compositionality is a key strategy for addressing combinatorial complexity and the curse of dimensionality. Recent work has shown that compositional solutions can be learned and offer substantial gains across a variety of domains, including multi-task learning, language modeling, visual question answering, machine comprehension, and others. However, such models present unique challenges during training when both the module parameters and their composition must be learned jointly. In this paper, we identify several of these issues and analyze their underlying causes. Our discussion focuses on routing networks, a general approach to this problem, and examines empirically the interplay of these challenges and a variety of design decisions. In particular, we consider the effect of how the algorithm decides on module composition, how the algorithm updates the modules, and if the algorithm uses regularization.
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