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Knockout: A simple way to handle missing inputs.

Minh Nguyen1, Batuhan K Karaman1, Heejong Kim2

  • 1Cornell University.

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|January 19, 2026
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Summary
This summary is machine-generated.

Knockout is an efficient deep learning method that handles missing multimodal inputs during inference. This approach trains models to learn both conditional and marginal distributions, improving deployment without costly alternatives.

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Area of Science:

  • Machine Learning
  • Artificial Intelligence
  • Data Science

Background:

  • Deep learning models excel with multimodal inputs but face deployment challenges due to potential missing data during inference.
  • Existing solutions like marginalization, imputation, and training multiple models have limitations, including computational cost, prediction inaccuracy, and the need for prior pattern knowledge.

Purpose of the Study:

  • To propose an efficient and effective method for training deep learning models that can handle missing multimodal inputs during inference.
  • To develop a technique that learns both conditional and marginal input distributions without requiring prior knowledge of missing data patterns.

Main Methods:

  • Introduced 'Knockout,' a novel training strategy that randomly replaces input features with placeholder values.
  • Provided theoretical justification for Knockout, demonstrating its interpretation as an implicit marginalization technique.
  • Evaluated Knockout's performance across diverse simulations and real-world datasets.

Main Results:

  • Knockout demonstrates strong empirical performance in handling missing multimodal data.
  • The method efficiently learns both conditional and marginal distributions, offering a viable alternative to existing approaches.
  • Knockout avoids the computational expense of marginalization and the potential inaccuracies of imputation.

Conclusions:

  • Knockout presents an efficient and effective solution for deploying multimodal deep learning models with missing inputs.
  • The method offers a robust alternative to traditional techniques, improving model generalizability and reducing deployment costs.
  • Further research can explore the application of Knockout in various domains requiring robust multimodal data handling.