Saketh Kotamraju


2023

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Interpreting Answers to Yes-No Questions in User-Generated Content
Shivam Mathur | Keun Park | Dhivya Chinnappa | Saketh Kotamraju | Eduardo Blanco
Findings of the Association for Computational Linguistics: EMNLP 2023

Interpreting answers to yes-no questions in social media is difficult. Yes and no keywords are uncommon, and the few answers that include them are rarely to be interpreted what the keywords suggest. In this paper, we present a new corpus of 4,442 yes-no question-answer pairs from Twitter. We discuss linguistic characteristics of answers whose interpretation is yes or no, as well as answers whose interpretation is unknown. We show that large language models are far from solving this problem, even after fine-tuning and blending other corpora for the same problem but outside social media.

2021

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Written Justifications are Key to Aggregate Crowdsourced Forecasts
Saketh Kotamraju | Eduardo Blanco
Findings of the Association for Computational Linguistics: EMNLP 2021

This paper demonstrates that aggregating crowdsourced forecasts benefits from modeling the written justifications provided by forecasters. Our experiments show that the majority and weighted vote baselines are competitive, and that the written justifications are beneficial to call a question throughout its life except in the last quarter. We also conduct an error analysis shedding light into the characteristics that make a justification unreliable.