Local optimization on token windows plus a continuity loss lets autoregressive video models train on fewer frames with less error accumulation, cutting training cost in half while matching baseline quality.
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Accelerating Training of Autoregressive Video Generation Models via Local Optimization with Representation Continuity
Local optimization on token windows plus a continuity loss lets autoregressive video models train on fewer frames with less error accumulation, cutting training cost in half while matching baseline quality.