Browsing by Author "Muhundan, Sushmethaa"
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- Collection Management Tobacco Settlement Documents (CMT) CS5604 Fall 2019Muhundan, Sushmethaa; Bendelac, Alon; Zhao, Yan; Svetovidov, Andrei; Biswas, Debasmita; Marin Thomas, Ashin (Virginia Tech, 2019-12-11)Consumption of tobacco causes health issues, both mental and physical. Despite this widely known fact, tobacco companies had sustained their huge presence in the market over the past century owing to a variety of successful marketing strategies. This report documents the work of the Collection Management Tobacco Settlement Documents (CMT) team, the data ingestion team for the tobacco documents. We deal with an archive of tobacco documents that were produced during litigation between the United States and seven major tobacco industry organizations. Our aim is to process these documents and assist Dr. David M. Townsend, an assistant professor at Virginia Polytechnic Institute and State University (Virginia Tech) Pamplin College of Business, in his research towards understanding the marketing strategies of the tobacco companies. The team is part of a larger initiative: to build a state-of-the-art information retrieval and analysis system. We handle over 14 million tobacco settlement documents as part of this project. Our tasks include extracting the data as well as metadata from these documents. We cater to the needs of the ElasticSearch (ELS) team and the Text Analytics and Machine Learning (TML) team. We provide tobacco settlement data in suitable formats to enable them to process and feed the data into the information retrieval system. We have successfully processed both the metadata and the document texts into a usable format. For metadata, this involved collaborating with the above-mentioned teams to come up with a suitable format. We retrieved the metadata from a MySQL database and converted it into a JSON for Elasticsearch ingestion. For the data, this involved lemmatization, tokenization, and text cleaning. We have supplied the entire dataset to the ELS and TML teams. Data, as well as metadata of these documents, were cleaned and provided. Python scripts were used to query the database and output the results in the required format. We also closely interacted with Dr. Townsend to understand his research needs in order to guide the Front-end and Kibana (FEK) team in terms of insights about features that can be used for visualizations. This way, the information retrieval system we build would add more value to our client.
- Effects of Language on Angry drivers' Situation Awareness, Driving Performance, and Subjective Perception in Level 3 Automated VehiclesMuhundan, Sushmethaa; Jeon, Myounghoon (Taylor & Francis, 2023-07-18)Research shows that anger has a negative impact on cognition due to the rumination effect and in the context of driving, anger negatively impacts situation awareness, driving performance, and road safety. In-vehicle agents are capable of mitigating the effects of anger and subsequent effects on driving behavior. Language is another important aspect that influences information processing and human behavior during social interactions. This study aimed to explore the effects of the language of in-vehicle agents on angry drivers’ situation awareness, driving performance, and subjective perception by conducting a within-subject driving simulator study. Twenty four young drivers drove three different laps in a level 3 automated vehicle with a native-language speaking agent (Hindi or Chinese), second-language speaking agent (English) and no agent. The results of this study are indicative of the importance of native language processing in the context of driving. The use of the participants’ native language resulted in improved driving performance and heightened situation awareness. The participants preferred the native language agent over the other conditions and also expressed the need to control the state of the in-vehicle agent. The study results and discussions have theoretical and practical design implications and are expected to help foster future work in this domain.
- Exploring the Effects of Language on Angry Drivers' Situation Awareness, Driving Performance, and Subjective PerceptionMuhundan, Sushmethaa (Virginia Tech, 2021-04-28)Research shows that anger has a negative impact on cognition due to the rumination effect and in the context of driving, anger negatively impacts situation awareness, driving performance, and road safety. In-vehicle agents are capable of mitigating the effects of anger and subsequent effects on driving behavior. Language is another important aspect that influences information processing and human behavior during social interactions. This thesis aims to explore the effects of the language of in-vehicle agents on angry drivers' situation awareness, driving performance, and subjective perception. The three conditions explored are the native language agent condition (Hindi or Chinese), secondary language agent condition (English), and no agent condition. Results indicate that driving performance is better in the case of the native language agent condition when compared to the no agent condition. Higher levels of situational awareness were affected by the agent condition, favoring the native language condition over the secondary language condition. The participants preferred native language agents over the other conditions and the perceived workload was higher in the no-agent condition than the native agent condition. Drivers also expressed the need to control the state of the in-vehicle agent. The study results have practical design implications and the results are expected to help foster future work in this domain.