# A system for the 2019 Sentiment, Emotion and Cognitive State Task of   DARPAs LORELEI project

**Authors:** Victor R Martinez, Anil Ramakrishna, Ming-Chang Chiu, Karan Singla,, Shrikanth Narayanan

arXiv: 1905.00472 · 2020-02-18

## TL;DR

This paper presents a sentiment analysis system developed for the 2019 LORELEI project, demonstrating effective performance in low-resource language crisis scenarios, especially in English and Spanish.

## Contribution

The work introduces a sentiment analysis system tailored for low-resource languages in humanitarian crises, achieving top results in the 2019 SEC pilot task.

## Key findings

- Achieved best results in English and Spanish evaluations.
- Developed a collection of sentiment analysis systems with feature extraction.
- Contributed to language processing for low-resource languages in crisis contexts.

## Abstract

During the course of a Humanitarian Assistance-Disaster Relief (HADR) crisis, that can happen anywhere in the world, real-time information is often posted online by the people in need of help which, in turn, can be used by different stakeholders involved with management of the crisis. Automated processing of such posts can considerably improve the effectiveness of such efforts; for example, understanding the aggregated emotion from affected populations in specific areas may help inform decision-makers on how to best allocate resources for an effective disaster response. However, these efforts may be severely limited by the availability of resources for the local language. The ongoing DARPA project Low Resource Languages for Emergent Incidents (LORELEI) aims to further language processing technologies for low resource languages in the context of such a humanitarian crisis. In this work, we describe our submission for the 2019 Sentiment, Emotion and Cognitive state (SEC) pilot task of the LORELEI project. We describe a collection of sentiment analysis systems included in our submission along with the features extracted. Our fielded systems obtained the best results in both English and Spanish language evaluations of the SEC pilot task.

## Full text

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## Figures

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## References

46 references — full list in the complete paper: https://tomesphere.com/paper/1905.00472/full.md

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Source: https://tomesphere.com/paper/1905.00472