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arxiv: 1904.03834 · v2 · pith:7O37LMW3new · submitted 2019-04-08 · 📊 stat.ML · cs.LG· cs.SD· eess.AS

A Statistical Investigation of Long Memory in Language and Music

classification 📊 stat.ML cs.LGcs.SDeess.AS
keywords datadeepframeworklearninglonglong-rangememoryapplications
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Representation and learning of long-range dependencies is a central challenge confronted in modern applications of machine learning to sequence data. Yet despite the prominence of this issue, the basic problem of measuring long-range dependence, either in a given data source or as represented in a trained deep model, remains largely limited to heuristic tools. We contribute a statistical framework for investigating long-range dependence in current applications of deep sequence modeling, drawing on the well-developed theory of long memory stochastic processes. This framework yields testable implications concerning the relationship between long memory in real-world data and its learned representation in a deep learning architecture, which are explored through a semiparametric framework adapted to the high-dimensional setting.

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