Annotating videos that teach MS Excel and predicting mouse / keyboard actions
This research paper explores the extraction of specific sentences from natural language as a foundational step towards building an Artificial Intelligence system for automating Microsoft Excel. The focus is on leveraging language models with the capability to extract intention and procedure sente...
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2024
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sg-ntu-dr.10356-1752332024-04-26T15:41:54Z Annotating videos that teach MS Excel and predicting mouse / keyboard actions Tan, Genson Yao Jie Li Boyang School of Computer Science and Engineering boyang.li@ntu.edu.sg Computer and Information Science Large language models Prompt engineering This research paper explores the extraction of specific sentences from natural language as a foundational step towards building an Artificial Intelligence system for automating Microsoft Excel. The focus is on leveraging language models with the capability to extract intention and procedure sentences from transcript collected on YouTube. Utilizing such model can significantly alleviate the laborious process of manual annotations, and consequently, this approach can enable us to acquire a sufficiently large dataset for training a model tailored to the specific domain of procedure prediction. The research methodology involves exploring the limitations of fine-tuning Flan-T5 for this task, while also utilizing prompt engineering on Large Language Model (LLM) such as Llama 2 as an alternative method. The experimentations are conducted on Google Colab platform which offers access up to only 15GB of VRAM. This paper is centred around understanding the behaviour of Llama2 and how it responds towards different prompting techniques for information extraction. Data extracted from individual transcripts can be returned as English sentences or in a structured format, such as JSON format. The model is then evaluated against a manually annotated dataset labelled by human annotators for its extraction quality. This approach offers a straightforward and accessible way to acquire large databases of structured knowledge derived from unstructured text with very limited computational resource. Bachelor's degree 2024-04-21T23:42:30Z 2024-04-21T23:42:30Z 2024 Final Year Project (FYP) Tan, G. Y. J. (2024). Annotating videos that teach MS Excel and predicting mouse / keyboard actions. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175233 https://hdl.handle.net/10356/175233 en SCSE23-0709 application/pdf Nanyang Technological University |
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Computer and Information Science Large language models Prompt engineering Tan, Genson Yao Jie Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
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This research paper explores the extraction of specific sentences from natural language as a
foundational step towards building an Artificial Intelligence system for automating Microsoft
Excel. The focus is on leveraging language models with the capability to extract intention and
procedure sentences from transcript collected on YouTube. Utilizing such model can
significantly alleviate the laborious process of manual annotations, and consequently, this
approach can enable us to acquire a sufficiently large dataset for training a model tailored to
the specific domain of procedure prediction.
The research methodology involves exploring the limitations of fine-tuning Flan-T5 for this
task, while also utilizing prompt engineering on Large Language Model (LLM) such as Llama
2 as an alternative method. The experimentations are conducted on Google Colab platform
which offers access up to only 15GB of VRAM.
This paper is centred around understanding the behaviour of Llama2 and how it responds
towards different prompting techniques for information extraction. Data extracted from
individual transcripts can be returned as English sentences or in a structured format, such as
JSON format. The model is then evaluated against a manually annotated dataset labelled by
human annotators for its extraction quality. This approach offers a straightforward and
accessible way to acquire large databases of structured knowledge derived from unstructured
text with very limited computational resource. |
author2 |
Li Boyang |
author_facet |
Li Boyang Tan, Genson Yao Jie |
format |
Final Year Project |
author |
Tan, Genson Yao Jie |
author_sort |
Tan, Genson Yao Jie |
title |
Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
title_short |
Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
title_full |
Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
title_fullStr |
Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
title_full_unstemmed |
Annotating videos that teach MS Excel and predicting mouse / keyboard actions |
title_sort |
annotating videos that teach ms excel and predicting mouse / keyboard actions |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/175233 |
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1814047274226941952 |