Research Article
BibTex RIS Cite
Year 2020, , 121 - 130, 28.08.2020
https://doi.org/10.35377/saucis.03.02.727032

Abstract

References

  • S. Finger, Origins of neuroscience: a history of explorations into brain function. Oxford University Press, USA, 2001.
  • J. Ward, The student's guide to cognitive neuroscience. Psychology Press, 2015.
  • P. Dayan and F. A. Laurence,” Theoretical neuroscience: computational and mathematical modeling of neural systems”, Journal of Cognitive Neuroscience, vol.15, no.1, pp.154-155.
  • T. C. Napier, J. C. Corvol, A. A. Grace, J.D. Roitman, J. Rowe, J., V. Voon and A. P. Strafella,” Linking neuroscience with modern concepts of impulse control disorders in Parkinson's disease”, Movement Disorders, vol.30, pp.141-149, 2015.
  • M. Filippi, fMRI techniques and protocols. Humana press, 2016.
  • A. Poldrack Russell, “The role of fMRI in cognitive neuroscience: where do we stand?”, Current opinion in neurobiology, 18223-227, 2008.
  • U. Goswami, “Neuroscience, education and special education”, British Journal of Special Education, vol.31, pp.175-183, 2004.
  • Y. Immordino, M. Helen , A. Damasio, "We feel, therefore we learn: The relevance of affective and social neuroscience to education", Mind, brain, and education, vol.1, pp. 3-10, 2007.
  • B. Aberšek, Cognitive science in education and alternative teaching strategies. Cambridge Scholars Publishing, 2017.
  • B. Sung, N. J. Wilson, J. H. Yun, and E. J. LEE, “What can neuroscience offer marketing research?”, Asia Pacific Journal of Marketing and Logistics, pp. 4-23, 2019.
  • S. Ullman, “Using neuroscience to develop artificial intelligence”, Science, vol. 363, no. 6428, pp. 692-693, 2019.
  • G. Deco, E. T. Rolls, Computational neuroscience of vision. Oxford university press, 2007.
  • D. Dunning,” The Dunning–Kruger effect: On being ignorant of one's own ignorance”, In Advances in experimental social psychology, vol.44, pp. 247-296, 2011.
  • G. Pennycook, R. M. Ross, D. J. Koehler and J. A., Fugelsang,” Dunning–Kruger effects in reasoning: Theoretical implications of the failure to recognize incompetence”, Psychonomic Bulletin & Review, vol.24, no.6, pp. 1774-1784, 2017.
  • N. Altman, M. Krzywinski, ”The curse (s) of dimensionality”, Nat Methods, vol.15, pp. 399-400, 2018.
  • V. Zelenyuk, “Aggregation of inputs and outputs prior to Data Envelopment Analysis under big data”, European Journal of Operational Research, vol.282, no.1, pp. 172-187, 2020.
  • M. Ramscar, P. Hendrix, C. Shaoul, P. Milin, H. Baayen, “The myth of cognitive decline: Non‐linear dynamics of lifelong learning”, Topics in cognitive science, vol.6, no.1, pp.5-42, 2014.
  • Y. Wang, and V. Chiew, “On the cognitive process of human problem solving”, Cognitive systems research, vol.11, no.1, pp.81-92, 2010.
  • H. Kuai, X. Zhang, Y. Yang, J.Chen, B. Shi, N. Zhong, “THINKING-LOOP: The Semantic Vector Driven Closed-Loop Model for Brain Computing”, IEEE Access, vol.8, pp.4273-4288, 2020.
  • Y. Wang et al., “Brain-Inspired Systems: A Transdisciplinary Exploration on Cognitive Cybernetics, Humanity, and Systems Science Toward Autonomous Artificial Intelligence”, IEEE Systems, Man, and Cybernetics Magazine, vol. 6, no. 1, pp. 6-13, Jan. 2020
  • R. Shivhare, A. K.Cherukuri, and J. Li, ,”Establishment of cognitive relations based on cognitive informatics”, Cognitive Computation, vol.9, no.5, pp.721-729, 2017.
  • H. Faris, I. Aljarah and S. Mirjalili, Evolving radial basis function networks using moth–flame optimizer. In Handbook of neural computation, Academic Press, pp. 537-550, 2017.
  • C. Zhang, H. Wei, L. Xie, Y. Shen, and K. Zhang, “Direct interval forecasting of wind speed using radial basis function neural networks in a multi-objective optimization framework”, Neurocomputing, vol. 205, pp.53-63, 2016.
  • I.T. Jolliffe and J. Cadima, “Principal component analysis: a review and recent developments”, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol.374, no.2065, 20150202, 2016.
  • G. R. Naik, Advances in Principal Component Analysis: Research and Development. Springer, 2017.
  • I. Craw, The aberdeen set of Psychological Image Collection at Stirling (PICS) database (PICS), URL: http://pics.psych.stir.ac.uk/zips/Aberdeen.zip [Accessed: 19-July-2020].
  • N. Kriegeskorte,”Deep neural networks: a new framework for modeling biological vision and brain information processing”, Annual review of vision science, vol.1, pp.417-446, 2015.
  • J. C. Hong, , M. Y. Hwang, , K. H. Tai and C. R. Tsai, ”An exploration of students’ science learning interest related to their cognitive anxiety, cognitive load, self-confidence and learning progress using inquiry-based learning with an iPad”, Research in Science Education, vol.47, no.6, pp.1193-1212, 2017.

An Investigation into the Relationship between Curse of Dimensionality and Dunning-Kruger Effect

Year 2020, , 121 - 130, 28.08.2020
https://doi.org/10.35377/saucis.03.02.727032

Abstract

This study addresses a novel perspective for analyzing the source of confidence in human behavior. The concept of confidence was examined via the relationship between two phenomena in the area of machine learning and psychology, namely the Dunning-Kruger effect and the curse of dimensionality. A relationship was established between these two phenomena which were investigated in the light of neuroscience. This study claims that confidence is highly related with the total time it takes to reach specific information and this relationship is inversely proportional. Image gender classification algorithm was used to analyze this relationship for this study and the curves which were obtained as a result of this analysis was compared with the curve of Dunning-Kruger effect and curse of dimensionality. This relationship has been explained by the knowledge of human's problem-solving ability and mathematical models of memory.

References

  • S. Finger, Origins of neuroscience: a history of explorations into brain function. Oxford University Press, USA, 2001.
  • J. Ward, The student's guide to cognitive neuroscience. Psychology Press, 2015.
  • P. Dayan and F. A. Laurence,” Theoretical neuroscience: computational and mathematical modeling of neural systems”, Journal of Cognitive Neuroscience, vol.15, no.1, pp.154-155.
  • T. C. Napier, J. C. Corvol, A. A. Grace, J.D. Roitman, J. Rowe, J., V. Voon and A. P. Strafella,” Linking neuroscience with modern concepts of impulse control disorders in Parkinson's disease”, Movement Disorders, vol.30, pp.141-149, 2015.
  • M. Filippi, fMRI techniques and protocols. Humana press, 2016.
  • A. Poldrack Russell, “The role of fMRI in cognitive neuroscience: where do we stand?”, Current opinion in neurobiology, 18223-227, 2008.
  • U. Goswami, “Neuroscience, education and special education”, British Journal of Special Education, vol.31, pp.175-183, 2004.
  • Y. Immordino, M. Helen , A. Damasio, "We feel, therefore we learn: The relevance of affective and social neuroscience to education", Mind, brain, and education, vol.1, pp. 3-10, 2007.
  • B. Aberšek, Cognitive science in education and alternative teaching strategies. Cambridge Scholars Publishing, 2017.
  • B. Sung, N. J. Wilson, J. H. Yun, and E. J. LEE, “What can neuroscience offer marketing research?”, Asia Pacific Journal of Marketing and Logistics, pp. 4-23, 2019.
  • S. Ullman, “Using neuroscience to develop artificial intelligence”, Science, vol. 363, no. 6428, pp. 692-693, 2019.
  • G. Deco, E. T. Rolls, Computational neuroscience of vision. Oxford university press, 2007.
  • D. Dunning,” The Dunning–Kruger effect: On being ignorant of one's own ignorance”, In Advances in experimental social psychology, vol.44, pp. 247-296, 2011.
  • G. Pennycook, R. M. Ross, D. J. Koehler and J. A., Fugelsang,” Dunning–Kruger effects in reasoning: Theoretical implications of the failure to recognize incompetence”, Psychonomic Bulletin & Review, vol.24, no.6, pp. 1774-1784, 2017.
  • N. Altman, M. Krzywinski, ”The curse (s) of dimensionality”, Nat Methods, vol.15, pp. 399-400, 2018.
  • V. Zelenyuk, “Aggregation of inputs and outputs prior to Data Envelopment Analysis under big data”, European Journal of Operational Research, vol.282, no.1, pp. 172-187, 2020.
  • M. Ramscar, P. Hendrix, C. Shaoul, P. Milin, H. Baayen, “The myth of cognitive decline: Non‐linear dynamics of lifelong learning”, Topics in cognitive science, vol.6, no.1, pp.5-42, 2014.
  • Y. Wang, and V. Chiew, “On the cognitive process of human problem solving”, Cognitive systems research, vol.11, no.1, pp.81-92, 2010.
  • H. Kuai, X. Zhang, Y. Yang, J.Chen, B. Shi, N. Zhong, “THINKING-LOOP: The Semantic Vector Driven Closed-Loop Model for Brain Computing”, IEEE Access, vol.8, pp.4273-4288, 2020.
  • Y. Wang et al., “Brain-Inspired Systems: A Transdisciplinary Exploration on Cognitive Cybernetics, Humanity, and Systems Science Toward Autonomous Artificial Intelligence”, IEEE Systems, Man, and Cybernetics Magazine, vol. 6, no. 1, pp. 6-13, Jan. 2020
  • R. Shivhare, A. K.Cherukuri, and J. Li, ,”Establishment of cognitive relations based on cognitive informatics”, Cognitive Computation, vol.9, no.5, pp.721-729, 2017.
  • H. Faris, I. Aljarah and S. Mirjalili, Evolving radial basis function networks using moth–flame optimizer. In Handbook of neural computation, Academic Press, pp. 537-550, 2017.
  • C. Zhang, H. Wei, L. Xie, Y. Shen, and K. Zhang, “Direct interval forecasting of wind speed using radial basis function neural networks in a multi-objective optimization framework”, Neurocomputing, vol. 205, pp.53-63, 2016.
  • I.T. Jolliffe and J. Cadima, “Principal component analysis: a review and recent developments”, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol.374, no.2065, 20150202, 2016.
  • G. R. Naik, Advances in Principal Component Analysis: Research and Development. Springer, 2017.
  • I. Craw, The aberdeen set of Psychological Image Collection at Stirling (PICS) database (PICS), URL: http://pics.psych.stir.ac.uk/zips/Aberdeen.zip [Accessed: 19-July-2020].
  • N. Kriegeskorte,”Deep neural networks: a new framework for modeling biological vision and brain information processing”, Annual review of vision science, vol.1, pp.417-446, 2015.
  • J. C. Hong, , M. Y. Hwang, , K. H. Tai and C. R. Tsai, ”An exploration of students’ science learning interest related to their cognitive anxiety, cognitive load, self-confidence and learning progress using inquiry-based learning with an iPad”, Research in Science Education, vol.47, no.6, pp.1193-1212, 2017.
There are 28 citations in total.

Details

Primary Language English
Subjects Artificial Intelligence
Journal Section Articles
Authors

Dr. Mehmet Cem Çatalbaş 0000-0002-9291-1180

Publication Date August 28, 2020
Submission Date April 26, 2020
Acceptance Date July 24, 2020
Published in Issue Year 2020

Cite

IEEE D. M. C. Çatalbaş, “An Investigation into the Relationship between Curse of Dimensionality and Dunning-Kruger Effect”, SAUCIS, vol. 3, no. 2, pp. 121–130, 2020, doi: 10.35377/saucis.03.02.727032.

Cited By

29070    The papers in this journal are licensed under a Creative Commons Attribution-NonCommercial 4.0 International License