Estevam Hruschka


2022

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Proceedings of the 2nd Workshop on Deriving Insights from User-Generated Text
Estevam Hruschka | Tom Mitchell | Dunja Mladenic | Marko Grobelnik | Nikita Bhutani
Proceedings of the 2nd Workshop on Deriving Insights from User-Generated Text

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Low-resource Entity Set Expansion: A Comprehensive Study on User-generated Text
Yutong Shao | Nikita Bhutani | Sajjadur Rahman | Estevam Hruschka
Findings of the Association for Computational Linguistics: NAACL 2022

Entity set expansion (ESE) aims at obtaining a more complete set of entities given a textual corpus and a seed set of entities of a concept. Although it is a critical task in many NLP applications, existing benchmarks are limited to well-formed text (e.g., Wikipedia) and well-defined concepts (e.g., countries and diseases). Furthermore, only a small number of predictions are evaluated compared to the actual size of an entity set. A rigorous assessment of ESE methods warrants more comprehensive benchmarks and evaluation. In this paper, we consider user-generated text to understand the generalizability of ESE methods. We develop new benchmarks and propose more rigorous evaluation metrics for assessing the performance of ESE methods. Additionally, we identify phenomena such as non-named entities, multifaceted entities, vague concepts that are more prevalent in user-generated text than well-formed text, and use them to profile ESE methods. We observe that the strong performance of state-of-the-art ESE methods does not generalize well to user-generated text. We conduct comprehensive empirical analysis and draw insights from the findings.

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Distilling Salient Reviews with Zero Labels
Chieh-Yang Huang | Jinfeng Li | Nikita Bhutani | Alexander Whedon | Estevam Hruschka | Yoshi Suhara
Proceedings of the Fifth Fact Extraction and VERification Workshop (FEVER)

Many people read online reviews to learn about real-world entities of their interest. However, majority of reviews only describes general experiences and opinions of the customers, and may not reveal facts that are specific to the entity being reviewed. In this work, we focus on a novel task of mining from a review corpus sentences that are unique for each entity. We refer to this task as Salient Fact Extraction. Salient facts are extremely scarce due to their very nature. Consequently, collecting labeled examples for training supervised models is tedious and cost-prohibitive. To alleviate this scarcity problem, we develop an unsupervised method, ZL-Distiller, which leverages contextual language representations of the reviews and their distributional patterns to identify salient sentences about entities. Our experiments on multiple domains (hotels, products, and restaurants) show that ZL-Distiller achieves state-of-the-art performance and further boosts the performance of other supervised/unsupervised algorithms for the task. Furthermore, we show that salient sentences mined by ZL-Distiller provide unique and detailed information about entities, which benefit downstream NLP applications including question answering and summarization.

2014

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Biocom Usp: Tweet Sentiment Analysis with Adaptive Boosting Ensemble
Nádia Silva | Estevam Hruschka | Eduardo Hruschka
Proceedings of the 8th International Workshop on Semantic Evaluation (SemEval 2014)

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Biocom Usp: Tweet Sentiment Analysis with Adaptive Boosting Ensemble
Nádia Silva | Estevam Hruschka | Eduardo Hruschka
Proceedings of the 8th International Workshop on Semantic Evaluation (SemEval 2014)

2011

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Discovering Relations between Noun Categories
Thahir Mohamed | Estevam Hruschka | Tom Mitchell
Proceedings of the 2011 Conference on Empirical Methods in Natural Language Processing