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C-HDNet: A Fast Hyperdimensional Computing Based Method for Causal Effect Estimation from Networked Observational

Abhishek Dalvi1, Neil Ashtekar1, Vasant G Honavar1

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This summary is machine-generated.

We developed a new method to estimate causal effects from network data, addressing network confounding. Our approach improves accuracy and is significantly faster than current deep learning models.

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Area of Science:

  • Causal Inference
  • Network Analysis
  • Hyperdimensional Computing

Background:

  • Observational data analysis is challenged by network confounding, where network structures bias treatment and outcome assignments.
  • Traditional causal inference methods struggle with network interference, leading to inaccurate effect estimations.

Purpose of the Study:

  • To develop a novel method for estimating causal effects in the presence of network confounding.
  • To improve the reliability of causal effect estimates by incorporating network structure information.

Main Methods:

  • A novel matching-based approach utilizing hyperdimensional computing principles.
  • Encoding and incorporating structural network information for identifying comparable individuals.

Main Results:

  • The proposed method achieves performance comparable to or better than state-of-the-art approaches, including computationally intensive deep learning models.
  • Demonstrated significant reduction in runtime (nearly an order of magnitude) without compromising accuracy.

Conclusions:

  • The novel hyperdimensional computing-based matching approach effectively addresses network confounding in causal inference.
  • This method offers a computationally efficient and accurate solution for large-scale or time-sensitive causal effect estimation from observational network data.