Automated Assessment of Multimodal Answer Sheets in the STEM domain
In the domain of education, the integration of,technology has led to a transformative era, reshaping traditional,learning paradigms. Central to this evolution is the automation,of grading processes, particularly within the STEM domain encompassing Science, Technology, Engineering, and Mathematics.,W...
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Zusammenfassung: | In the domain of education, the integration of,technology has led to a
transformative era, reshaping traditional,learning paradigms. Central to this
evolution is the automation,of grading processes, particularly within the STEM
domain encompassing Science, Technology, Engineering, and Mathematics.,While
efforts to automate grading have been made in subjects,like Literature, the
multifaceted nature of STEM assessments,presents unique challenges, ranging
from quantitative analysis,to the interpretation of handwritten diagrams. To
address these,challenges, this research endeavors to develop efficient and
reliable grading methods through the implementation of automated,assessment
techniques using Artificial Intelligence (AI). Our,contributions lie in two key
areas: firstly, the development of a,robust system for evaluating textual
answers in STEM, leveraging,sample answers for precise comparison and grading,
enabled by,advanced algorithms and natural language processing
techniques.,Secondly, a focus on enhancing diagram evaluation,
particularly,flowcharts, within the STEM context, by transforming diagrams,into
textual representations for nuanced assessment using a,Large Language Model
(LLM). By bridging the gap between,visual representation and semantic meaning,
our approach ensures accurate evaluation while minimizing manual
intervention.,Through the integration of models such as CRAFT for
text,extraction and YoloV5 for object detection, coupled with LLMs,like
Mistral-7B for textual evaluation, our methodology facilitates,comprehensive
assessment of multimodal answer sheets. This,paper provides a detailed account
of our methodology, challenges,encountered, results, and implications,
emphasizing the potential,of AI-driven approaches in revolutionizing grading
practices in,STEM education. |
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DOI: | 10.48550/arxiv.2409.15749 |