Title: A NOVEL META-MACHINE LEARNING APPROACH TO DIAGNOSE
STRESS FROM ENVIRONMENTAL FACTORS USING AUTOMATED
KNOWLEDGE GRAPHS
Authors: John Leddo
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Nihal Boina, Jai Agarwal, Taruna Agrawal, John Leddo, Srihitha Somavarapu, Sophia Nasibdar,
Haasini Salimadugu, Nikhil Koluvailu, Shruthi Mandava, Vennela Mandava, Aaron Kai To,
Sanjit Pasumarthi, Helena Gabrial, Maita Levkov, Zunairah Khan, Tanishka Prasad, Harshish
Antham, Ashwin Menachery, Kunal Singhal, Maneesh Vaddi, Kharthik Uppalapati MyEdMaster, LLC, 13750 Sunrise Valley Drive, Herndon, VA, United States of America
MLA 8 Leddo, John. "A NOVEL META-MACHINE LEARNING APPROACH TO DIAGNOSE STRESS FROM ENVIRONMENTAL FACTORS USING AUTOMATED KNOWLEDGE GRAPHS." Int. j. of Social Science and Economic Research, vol. 6, no. 12, Dec. 2021, pp. 4961-4970, doi.org/10.46609/IJSSER.2021.v06i12.033. Accessed Dec. 2021.
APA 6 Leddo, J. (2021, December). A NOVEL META-MACHINE LEARNING APPROACH TO DIAGNOSE STRESS FROM ENVIRONMENTAL FACTORS USING AUTOMATED KNOWLEDGE GRAPHS. Int. j. of Social Science and Economic Research, 6(12), 4961-4970. Retrieved from doi.org/10.46609/IJSSER.2021.v06i12.033
Chicago Leddo, John. "A NOVEL META-MACHINE LEARNING APPROACH TO DIAGNOSE STRESS FROM ENVIRONMENTAL FACTORS USING AUTOMATED KNOWLEDGE GRAPHS." Int. j. of Social Science and Economic Research 6, no. 12 (December 2021), 4961-4970. Accessed December, 2021. doi.org/10.46609/IJSSER.2021.v06i12.033.
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[3]. Killingsworth, M. A. (2021). Experienced well-being rises with income, even above $75,000 per year. Proceedings of the National Academy of Sciences, 118(4). https://doi.org/10.1073/pnas.2016976118
[4]. Baum, A., Garofalo, J. P., & Yali, A. M. (1999). Socioeconomic status and chronic stress. Does stress account for SES effects on health? Annals of the New York Academy of Sciences, 896, 131–144. https://doi.org/10.1111/j.1749-6632.1999.tb08111.x
Abstract: One of the main goals of machine learning is to make a General Artificial Intelligence.
Currently, human artificial intelligence researchers work on meticulously manipulating model
parameters by hand in order to arrive at highly optimized machine learning models. In the future,
a system will be needed such that a software is able to completely arrive at an optimized model
to a specific topic all by itself. An increasingly aware human problem is stress, which can
oftentimes lead to a variety of health issues. In this study, a novel machine learning platform was
created that could learn how to assess the environmental factors relating to stress in a knowledge
graph all by itself. Deep learning algorithms, in particular Graph Convolutional Algorithms,
were employed to train the software on a small subset of topics in the aim of recreating
additional knowledge graphs through automated Internet searches. By using constructed
knowledge graphs with input plaintext for specific areas of environmental stressors as a dataset -
weather, income, and societal class-, the software was able to accurately train and predict
knowledge graphs for environmental stressors outside of its specific training domain for human
analysis. These knowledge graphs could then be used in order to diagnose the total
environmental stress through an analysis of how much a specific environment would traverse
down the constructed knowledge graph.
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