Search Results for author: Martin Szummer

Found 4 papers, 0 papers with code

Balance Regularized Neural Network Models for Causal Effect Estimation

no code implementations23 Nov 2020 Mehrdad Farajtabar, Andrew Lee, Yuanjian Feng, Vishal Gupta, Peter Dolan, Harish Chandran, Martin Szummer

Estimating individual and average treatment effects from observational data is an important problem in many domains such as healthcare and e-commerce.

Representation Learning

Amortized learning of neural causal representations

no code implementations21 Aug 2020 Nan Rosemary Ke, Jane. X. Wang, Jovana Mitrovic, Martin Szummer, Danilo J. Rezende

The CRN represent causal models using continuous representations and hence could scale much better with the number of variables.

Towards Verified Robustness under Text Deletion Interventions

no code implementations ICLR 2020 Johannes Welbl, Po-Sen Huang, Robert Stanforth, Sven Gowal, Krishnamurthy (Dj) Dvijotham, Martin Szummer, Pushmeet Kohli

Neural networks are widely used in Natural Language Processing, yet despite their empirical successes, their behaviour is brittle: they are both over-sensitive to small input changes, and under-sensitive to deletions of large fractions of input text.

Natural Language Inference

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