FunctionClassesforIdentifiableNonlinear IndependentComponentAnalysis
–Neural Information Processing Systems
An important result is that for linear functionsf it is possible to recovers from observationsx up to certain symmetries, i.e., the model isidentifiable [8].
Neural Information Processing Systems
Feb-9-2026, 15:25:36 GMT
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