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Home / Proceedings / Proceedings of the International AAAI Conference on Web and Social Media, 16 / Vol. 16 (2022): Proceedings of the Sixteenth International AAAI Conference on Web and Social Media

Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild

February 1, 2023

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Abstract:

We argue that we need to evaluate model interpretability methods 'in the wild', i.e., in situations where professionals make critical decisions, and models can potentially assist them. We present an in-the-wild evaluation of token attribution based on Deep Taylor Decomposition, with professional journalists performing reliability assessments. We find that using this method in conjunction with RoBERTa-Large, fine-tuned on the Gossip Corpus, led to faster and better human decision-making, as well as a more critical attitude toward news sources among the journalists. We present a comparison of human and model rationales, as well as a qualitative analysis of the journalists' experiences with machine-in-the-loop decision making.

Authors

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard

University of Copenhagen,University of Copenhagen,University of Copenhagen


DOI:

10.1609/icwsm.v16i1.19389


Topics: ICWSM

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HOW TO CITE:

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild (2022) 1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild ICWSM 2022, 1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard (2022). Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild. , 1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild. 2022 p.1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. 2022. Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild. "". 1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. (2022) "Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild", , p.1368-1372

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard, "Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild", ICWSM, p.1368-1372, 2022.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. "Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild". , 2022, p.1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. "Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild". , (2022): 1368-1372.

Stephanie Brandl,Daniel Hershcovich,Anders Søgaard. Evaluating Deep Taylor Decomposition for Reliability Assessment in the Wild. ICWSM[Internet]. 2022[cited 2023]; 1368-1372.


ISSN: 2334-0770


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