Smart Agriculture : A Novel Multilevel Approach for Agricultural Risk
Assessment over Unstructured Data
- URL: http://arxiv.org/abs/2211.12515v1
- Date: Tue, 22 Nov 2022 16:47:47 GMT
- Title: Smart Agriculture : A Novel Multilevel Approach for Agricultural Risk
Assessment over Unstructured Data
- Authors: Hasna Najmi and Mounia Mikram and Maryem Rhanoui and Siham Yousfi
- Abstract summary: Uncertainty refers to a state of not knowing what will happen in the future.
This paper aims to leverage natural language processing and machine learning techniques to model uncertainties and evaluate the risk level in each uncertainty cluster using massive text data.
- Score: 0.5735035463793008
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Detecting opportunities and threats from massive text data is a challenging
task for most. Traditionally, companies would rely mainly on structured data to
detect and predict risks, losing a huge amount of information that could be
extracted from unstructured text data. Fortunately, artificial intelligence
came to remedy this issue by innovating in data extraction and processing
techniques, allowing us to understand and make use of Natural Language data and
turning it into structures that a machine can process and extract insight from.
Uncertainty refers to a state of not knowing what will happen in the future.
This paper aims to leverage natural language processing and machine learning
techniques to model uncertainties and evaluate the risk level in each
uncertainty cluster using massive text data.
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