Nona Ghazizadeh
2026
The Subjectivity of Respect in Police Traffic Stops: Modeling Community Perspectives in Body-Worn Camera Footage
Preni Golazizian | Elnaz Rahmati | Jackson Trager | Zhivar Sourati | Nona Ghazizadeh | Georgios Chochlakis | Jose J. Alcocer | Kerby Bennett | Aarya Vijay Devnani | Parsa Hejabi | Harry G. Muttram | Akshay Kiran Padte | Mehrshad Saadatinia | Chenhao Wu | Alireza Salkhordeh Ziabari | Michael Sierra-Arévalo | Nicholas Weller | Shrikanth Narayanan | Benjamin A.t. Graham | Morteza Dehghani
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Preni Golazizian | Elnaz Rahmati | Jackson Trager | Zhivar Sourati | Nona Ghazizadeh | Georgios Chochlakis | Jose J. Alcocer | Kerby Bennett | Aarya Vijay Devnani | Parsa Hejabi | Harry G. Muttram | Akshay Kiran Padte | Mehrshad Saadatinia | Chenhao Wu | Alireza Salkhordeh Ziabari | Michael Sierra-Arévalo | Nicholas Weller | Shrikanth Narayanan | Benjamin A.t. Graham | Morteza Dehghani
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Traffic stops are among the most frequent police–civilian interactions, and body-worn cameras (BWCs) provide a unique record of how these encounters unfold. Respect is a central dimension of these interactions, shaping public trust and perceived legitimacy, yet its interpretation is inherently subjective and shaped by lived experience, rendering community-specific perspectives a critical consideration. Leveraging unprecedented access to Los Angeles Police Department BWC footage, we introduce the first large-scale traffic-stop dataset annotated with respect ratings and free-text rationales from multiple perspectives. By sampling annotators from police-affiliated, justice-system-impacted, and non-affiliated Los Angeles residents, we enable the systematic study of perceptual differences across diverse communities. To this end, (i) we develop a domain-specific evaluation rubric grounded in procedural justice theory, LAPD training materials, and extensive fieldwork; (ii) we introduce a criterion-driven preference data construction framework for perspective-consistent alignment, and (ii) we propose a perspective-aware modeling framework that predicts personalized respect ratings and generates annotator-specific rationales for both officers and civilian drivers from traffic-stop transcripts. Across all three annotator groups, our approach improves both rating prediction performance and rationale alignment. Our perspective-aware framework enables law enforcement to better understand diverse community expectations, providing a vital tool for building public trust and procedural legitimacy.
2024
AIMA at SemEval-2024 Task 10: History-Based Emotion Recognition in Hindi-English Code-Mixed Conversations
Mohammad Mahdi Abootorabi | Nona Ghazizadeh | Seyed Arshan Dalili | Alireza Ghahramani Kure | Mahshid Dehghani | Ehsaneddin Asgari
Proceedings of the 18th International Workshop on Semantic Evaluation (SemEval-2024)
Mohammad Mahdi Abootorabi | Nona Ghazizadeh | Seyed Arshan Dalili | Alireza Ghahramani Kure | Mahshid Dehghani | Ehsaneddin Asgari
Proceedings of the 18th International Workshop on Semantic Evaluation (SemEval-2024)
In this study, we introduce a solution to the SemEval 2024 Task 10 on subtask 1, dedicated to Emotion Recognition in Conversation (ERC) in code-mixed Hindi-English conversations. ERC in code-mixed conversations presents unique challenges, as existing models are typically trained on monolingual datasets and may not perform well on code-mixed data. To address this, we propose a series of models that incorporate both the previous and future context of the current utterance, as well as the sequential information of the conversation. To facilitate the processing of code-mixed data, we developed a Hinglish-to-English translation pipeline to translate the code-mixed conversations into English. We designed four different base models, each utilizing powerful pre-trained encoders to extract features from the input but with varying architectures. By ensembling all of these models, we developed a final model that outperforms all other baselines.
AIMA at SemEval-2024 Task 3: Simple Yet Powerful Emotion Cause Pair Analysis
Alireza Ghahramani Kure | Mahshid Dehghani | Mohammad Mahdi Abootorabi | Nona Ghazizadeh | Seyed Arshan Dalili | Ehsaneddin Asgari
Proceedings of the 18th International Workshop on Semantic Evaluation (SemEval-2024)
Alireza Ghahramani Kure | Mahshid Dehghani | Mohammad Mahdi Abootorabi | Nona Ghazizadeh | Seyed Arshan Dalili | Ehsaneddin Asgari
Proceedings of the 18th International Workshop on Semantic Evaluation (SemEval-2024)
The SemEval-2024 Task 3 presents two subtasks focusing on emotion-cause pair extraction within conversational contexts. Subtask 1 revolves around the extraction of textual emotion-cause pairs, where causes are defined and annotated as textual spans within the conversation. Conversely, Subtask 2 extends the analysis to encompass multimodal cues, including language, audio, and vision, acknowledging instances where causes may not be exclusively represented in the textual data. Our proposed model for emotion-cause analysis is meticulously structured into three core segments: (i) embedding extraction, (ii) cause-pair extraction & emotion classification, and (iii) cause extraction using QA after finding pairs. Leveraging state-of-the-art techniques and fine-tuning on task-specific datasets, our model effectively unravels the intricate web of conversational dynamics and extracts subtle cues signifying causality in emotional expressions. Our team, AIMA, demonstrated strong performance in the SemEval-2024 Task 3 competition. We ranked as the 10th in subtask 1 and the 6th in subtask 2 out of 23 teams.
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- Mohammad Mahdi Abootorabi 2
- Ehsaneddin Asgari 2
- Seyed Arshan Dalili 2
- Mahshid Dehghani 2
- Alireza Ghahramani Kure 2
- Jose J. Alcocer 1
- Kerby Bennett 1
- Georgios Chochlakis 1
- Morteza Dehghani 1
- Aarya Vijay Devnani 1
- Preni Golazizian 1
- Benjamin A.t. Graham 1
- Parsa Hejabi 1
- Harry G. Muttram 1
- Shrikanth Narayanan 1
- Akshay Kiran Padte 1
- Elnaz Rahmati 1
- Mehrshad Saadatinia 1
- Alireza Salkhordeh Ziabari 1
- Michael Sierra-Arévalo 1
- Zhivar Sourati 1
- Jackson Trager 1
- Nicholas Weller 1
- Chenhao Wu 1