Будь ласка, використовуйте цей ідентифікатор, щоб цитувати або посилатися на цей матеріал:
http://elibrary.kdpu.edu.ua/xmlui/handle/123456789/2648
Повний запис метаданих
Поле DC | Значення | Мова |
---|---|---|
dc.contributor.author | Семеріков, Сергій Олексійович | - |
dc.contributor.author | Теплицький, Ілля Олександрович | - |
dc.contributor.author | Єчкало, Юлія Володимирівна | - |
dc.contributor.author | Ків, Арнольд Юхимович | - |
dc.date.accessioned | 2018-12-01T15:32:46Z | - |
dc.date.available | 2018-12-01T15:32:46Z | - |
dc.date.issued | 2018-11-30 | - |
dc.identifier.citation | Semerikov S. O. Computer Simulation of Neural Networks Using Spreadsheets: The Dawn of the Age of Camelot [Electronic resource] / Serhiy O. Semerikov, Illia O. Teplytskyi, Yuliia V. Yechkalo, Arnold E. Kiv // Augmented Reality in Education : Proceedings of the 1st International Workshop (AREdu 2018). Kryvyi Rih, Ukraine, October 2, 2018 / Edited by : Arnold E. Kiv, Vladimir N. Soloviev. – P. 122-147. – (CEUR Workshop Proceedings (CEUR-WS.org), Vol. 2257). – Access mode : http://ceur-ws.org/Vol-2257/paper14.pdf | uk |
dc.identifier.issn | 1613-0073 | - |
dc.identifier.uri | http://elibrary.kdpu.edu.ua/xmlui/handle/123456789/2648 | - |
dc.identifier.uri | https://doi.org/10.31812/123456789/2648 | - |
dc.description | 1. Abelson, H., Sussman, G.J., Sussman, J.: Structure and Interpretation of Computer Programs. 2nd edn. MIT Press, Cambridge (1996) 2. Abraham, T.H.: (Physio)logical circuits: The intellectual origins of the McCulloch-Pitts neural networks. Journal of the History of the Behavioral Sciences. 38(1), 3–25 (2002). doi:10.1002/jhbs.1094 3. Ayed, A.S.: Parametric Cost Estimating of Highway Projects using Neural Networks. Master thesis, Memorial University (1997) 4. Buergermeister, J.J.: Using Computer Spreadsheets for Instruction in Cost Control Curriculum at the Undergraduate Level. In: Dalton, D.W. (ed.) Restructuring Training and Education through Technology, Proceedings of the 32nd Annual Conference of the Association for the Development of Computer-Based Instructional Systems, San Diego, California, October 29-November 1, 1990, pp. 214–220. ADCIS International, Columbus (1990) 5. Cowan, J.D. Interview with J. A. Anderson and E. Rosenfeld. In: Anderson, J.A., Rosenfeld, E. (eds.) Talking nets: An oral history of neural networks, pp. 97–124. MIT Press, Cambridge (1998) 6. Cull P.: The mathematical biophysics of Nicolas Rashevsky. BioSystems. 88(3), 178–184 (2007). doi:10.1016/j.biosystems.2006.11.003 7. Eberhart, R.C., Dobbins, R.W.: CHAPTER 1 – Background and History. In: Eberhart, R.C., Dobbins, R.W. (eds.) Neural Network PC Tools: A Practical Guide, pp. 9–34. Academic Press, San Diego (1990) 8. Freedman, R.S., Frail, R.P., Schneider, F.T., Schnitta, B.: Expert Systems in Spreadsheets: Modeling the Wall Street User Domain. In: Proceedings First International Conference on Artificial Intelligence Applications on Wall Street, Institute of Electrical and Electronics Engineers, New York, 9–11 Oct. 1991 9. Hegazy, T., Ayed, A.: Neural Network Model for Parametric Cost Estimation of Highway Projects. Journal of Construction Engineering and Management. 124(3), 210–218 (1998). doi:10.1061/(ASCE)0733-9364(1998)124:3(210) 10. Hewett, T.T.: Teaching Students to Model Neural Circuits and Neural Networks Using an Electronic Spreadsheet Simulator. Behavior Research Methods, Instruments, & Computers. 17(2), 339–344 (1985). doi:10.3758/BF03214406 11. Hewett, T.T.: Using an Electronic Spreadsheet Simulator to Teach Neural Modeling of Visual Phenomena (Report No. MWPS-F-85-1). Drexel University, Philadelphia (1985) 12. Householder, A.S., Landahl, H.D.: Mathematical Biophysics of the Central Nervous System. Principia Press, Bloomington (1945) 13. Householder, A.S.: A neural mechanism for discrimination: II. Discrimination of weights. Bulletin of Mathematical Biophysics. 2(1), 1–13 (1940). doi:10.1007/BF02478027 14. Householder, A.S.: A theory of steady-state activity in nerve-fiber networks III: The simple circuit in complete activity. Bulletin of Mathematical Biophysics. 3(4), 137–140 (1941). doi:10.1007/BF02477933 15. Householder, A.S.: A theory of steady-state activity in nerve-fiber networks IV. N circuits with a common synapse. Bulletin of Mathematical Biophysics. 4(1), 7–14 (1942). doi:10.1007/BF02477933 16. Householder, A.S.: A theory of steady-state activity in nerve-fiber networks I: Definitions and Preliminary Lemmas. Bulletin of Mathematical Biophysics. 3(2), 63–69 (1941). doi:10.1007/BF02478220 17. Householder, A.S.: A theory of steady-state activity in nerve-fiber networks II: The simple circuit. Bulletin of Mathematical Biophysics. 3(3), 105–112 (1941). doi:10.1007/BF02478168 18. Hryshchenko, N.V., Chernov, Ye.V., Semerikov, S.O.: Fizychni modeli v kursi “Osnovy kompiuternoho modeliuvannia” (Physical models in the course “Fundamentals of computer simulation”). In: Methodological and organizational aspects of the use of the INTERNET network in the institutions of science and education (INTERNET – EDUCATION – SCIENCE – 98), 1st international scientific and practical conference, Vinnytsia, 1998, vol. 2, pp. 341–348. UNIVERSUM-Vinnytsia, Vinnytsia (1998) 19. James W.: Psychology. Henry Holt and Company, New York (1892) 20. James W.: The Principles of Psychology. Henry Holt and Company, New York (1890) 21. Johnston S.J.: Promised Land Comes Through With Braincel for Excel 3.0. InfoWorld. 13(7), 14 (1991) 22. Kendrick, D.A., Mercado P.R., Amman H.M.: Computational Economics. Princeton University Press, Princeton (2006) 23. Landahl, H.D., McCulloch, W.S., Pitts W.: A statistical consequence of the logical calculus of nervous nets. Bulletin of Mathematical Biophysics. 5(4), 135–137 (1943). doi:10.1007/BF02478260 24. Landahl, H.D., Runge, R.: Outline of a matrix calculus for neural nets. Bulletin of Mathematical Biophysics. 8(2), 75–81 (1946). doi:10.1007/BF02478464 25. Landahl, H.D.: A matrix calculus for neural nets: II. Bulletin of Mathematical Biophysics. 9(2), 99–108 (1947). doi:10.1007/BF02478296 26. McCulloch, W.C., Pitts, W.: A logical calculus of the ideas immanent in nervous activity. Bulletin of Mathematical Biophysics. 5(4), 115–133 (1943). doi:10.1007/BF02478259 27. Mintii, I.S., Tarasov, I.V., Semerikov S.O.: Meta navchannia ta zmist kursu “Vstup do prohramuvannia” dlia maibutnikh uchyteliv informatyky (The purpose of the teaching and the contents of the course “Introduction in programming” for future computer science teacher). Visnyk Cherkaskoho universytetu. Seriia pedahohichni nauky. 279, 57–63 (2013) 28. Mintii, I.S., Tarasov, I.V., Semerikov S.O.: Metodyka formuvannia u maibutnikh uchyteliv informatyky kompetentnostei z prohramuvannia na prykladi temy “Ekspertna systema” (Methods of forming of future informatics teachers competencies in programming by example the theme “Expert system”). Naukovyi chasopys NPU im. M. P. Drahomanova. Seriia #2. Kompiuterno-oriientovani systemy navchannia. 14 (21), 91–96 (2014) 29. Permiakova, O.S., Semerikov, S.O.: Zastosuvannia neironnykh merezh u zadachakh prohnozuvannia (The use of neural networks in forecasting problems). In: Materials of the International Scientific and Practical Conference “Young scientist of the XXI century”, KTU, Kryviy Rih, 17–18 November 2008 30. Pitts, W., McCulloch, W.S.: How we know universals the perception of auditory and visual forms. Bulletin of Mathematical Biophysics. 9(3), 127–147 (1947). doi:10.1007/BF02478291 31. Pitts, W.: A general theory of learning and conditioning: Part I. Psychometrika. 8(1), 1–18 (1943). doi:10.1007/BF02288680 32. Pitts, W.: A general theory of learning and conditioning: Part II. Psychometrika. 8(2), 131– 140 (1943). doi:10.1007/BF02288697 33. Pitts, W.: Some observations on the simple neuron circuit. Bulletin of Mathematical Biophysics. 4(3), 121–129 (1942). doi:10.1007/BF02477942 34. Pitts, W.: The linear theory of neuron networks: The dynamic problem. Bulletin of Mathematical Biophysics. 5(1), 23–31 (1943). doi:10.1007/BF02478116 35. Pitts, W.: The linear theory of neuron networks: The static problem. Bulletin of Mathematical Biophysics. 4(4), 169–175 (1942). doi:10.1007/BF02478112 36. Polishchuk, O.P., Teplytskyi, I.O., Semerikov, S.O.: Systematychne navchannia modeliuvanniu v pidhotovtsi maibutnoho vchytelia (Systematic training simulation in training future teachers). In: Abstracts of the All-Ukrainian scientific and methodical workshop on the Computer modeling in education, KSPU, Kryvyi Rih, 26 April 2006 37. Rapoport, A., Shimbel, A.: Steady states in random nets: I. Bulletin of Mathematical Biophysics. 10(4), 211–220 (1948). doi:10.1007/BF02477503 38. Rapoport, A.: Contribution to the probabilistic theory of neural nets: I. Randomization of refractory periods and of stimulus intervals. Bulletin of Mathematical Biophysics. 12(2), 109–121 (1950). doi:10.1007/BF02478248 39. Rapoport, A.: Contribution to the probabilistic theory of neural nets: II. Facilitation and threshold phenomena. Bulletin of Mathematical Biophysics. 12(3), 187–197 (1950). doi:10.1007/BF02478318 40. Rapoport, A.: Contribution to the probabilistic theory of neural nets: III. Specific inhibition. Bulletin of Mathematical Biophysics. 12(4), 317–325 (1950). doi:10.1007/BF02477902 41. Rapoport, A.: Contribution to the probabilistic theory of neural nets: IV. Various models for inhibition. Bulletin of Mathematical Biophysics. 12(4), 327–337 (1950). doi:10.1007/BF02477903 42. Rapoport, A.: Steady states in random nets: II. Bulletin of Mathematical Biophysics. 10(4), 221–226 (1948). doi:10.1007/BF02477504 43. Rashevsky, N.: Mathematical biophysics of abstraction and logical thinking. Bulletin of Mathematical Biophysics. 7(3), 133–148 (1945). doi:10.1007/BF02478314 44. Rashevsky, N.: Outline of a physico-mathematical theory of excitation and inhibition. Protoplasma. 20(1), 42–56 (1933). doi:10.1007/BF02674811 45. Rashevsky, N.: Some remarks on the boolean algebra of nervous nets in mathematical biophysics. Bulletin of Mathematical Biophysics. 7(4), 203–211 (1945). doi:10.1007/BF02478425 46. Rashevsky, N.: The neural mechanism of logical thinking. Bulletin of Mathematical Biophysics. 8(1), 29–40 (1946). doi:10.1007/BF02478425 47. Rienzo, T.F., Athappilly, K.K.: Introducing Artificial Neural Networks through a Spreadsheet Model. Decision Sciences Journal of Innovative Education. 10(4), 515–520 (2012). doi:10.1111/j.1540-4609.2012.00363.x 48. Ruggiero M.A.: Cybernetic Trading Strategies: Developing a Profitable Trading System with State-of-the-Art Technologies. John Wiley & Sons, New York (1997) 49. Ruggiero, M.: Embedding neural networks into spreadsheet applications. US Patent 5,241,620, 31 Aug 1993 50. Semerikov, S.O., Teplytskyi I.O.: Shtuchnyi intelekt v kursi informatyky pedahohichnoho VNZ (Artificial intelligence in teaching informatics at pedagogical university). In: Materials of the 4th All-Ukrainian Conference of Young Scientists on the Information Technologies in Education, Science and Technology ITONT-2004, Cherkasy, 28-30 April 2004 51. Shimbel, A., Rapoport, A.: A statistical approach to the theory of the central nervous system. Bulletin of Mathematical Biophysics. 10(2), 41–55 (1948). doi:10.1007/BF02478329 52. Soloviov, V.M., Semerikov, S.O., Teplytskyi, I.O.: Instrumentalne zabezpechennia kursu kompiuternoho modeliuvannia (Instrumental computer simulation courseware). Kompiuter u shkoli ta simi. 4, 28–31 (2000) 53. Soloviov, V.M., Semerikov, S.O., Teplytskyi, I.O.: Osnovy kompiuternoho modeliuvannia v serednii shkoli ta pedahohichnomu vuzi (Fundamentals of computer simulation in secondary school and higher pedagogical institutions). In: Collection of scientific and practical materials of the All-Ukrainian conference on the Pre-professional training of pupils in the context of the implementation of the target comprehensive program “Teacher”, vol. 2, pp. 53–56. Dnipropetrovsk (1997) 54. Sussman, G.J., Wisdom, J.: Structure and interpretation of classical mechanics. 2nd edn. MIT Press, Cambridge (2015) 55. Teplytskyi, I., Semerikov, S.: Kompiuterne modeliuvannia mekhanichnykh rukhiv u seredovyshchi elektronnykh tablyts (Computer modeling of mechanical movements in an spreadsheets environment). Fizyka ta astronomiia v shkoli. 5, 41–46 (2002) 56. Teplytskyi, I.O., Semerikov, S.O.: Kompiuterna navchalna fizychna hra “Miaka posadka” (Computer training physical game “Soft landing”). Naukovi zapysky: zbirnyk naukovykh statei Natsionalnoho pedahohichnoho universytetu imeni M.P. Drahomanova. 53, 347–355 (2003) 57. Teplytskyi, I.O., Semerikov, S.O.: Kompiuterne modeliuvannia absoliutnykh ta vidnosnykh rukhiv planet Soniachnoi systemy (Computer simulation of absolute and relative motions of the planets the Solar system). Zbirnyk naukovykh prats Kamianets-Podilskoho natsionalnoho universytetu. Seriia pedahohichna. 13, 211–214 (2007) 58. Teplytskyi, I.O., Semerikov, S.O.: Modeliuvannia za dopomohoiu vypadkovykh chysel (Simulation using random numbers). Zbirnyk naukovykh prats Kamianets-Podilskoho natsionalnoho universytetu. Seriia pedahohichna. 17, 248–252 (2011) 59. Teplytskyi, I.O., Semerikov, S.O.: Na perekhresti ekolohii, matematyky, informatyky y fizyky (At the intersection of ecology, mathematics, computer science and physics). Zbirnyk naukovykh prats Kamianets-Podilskoho natsionalnoho universytetu. Seriia pedahohichna. 18, 34–37 (2012) 60. Teplytskyi, I.O.: Elementy kompiuternoho modeliuvannia (Elements of computer simulation). 2nd edn. KSPU, Kryvyi Rih (2010) 61. Teplytskyi, I.O.: Kompiuterne modeliuvannia v shkilnomu kursi informatyky (Computer simulation in the school informatics course). Nyva znan. Informatsiini tekhnolohii v osviti. 1, 63–74 (1994) 62. Teplytskyi, I.O.: Vykorystannia elektronnykh tablyts u kompiuternomu modeliuvanni (Using spreadsheets in computer simulation). Kompiuter u shkoli ta simi. 2, 27–32 (1999) 63. Wei, T.: On matrices of neural nets. Bulletin of Mathematical Biophysics. 10(2), 63–67 (1948). doi:10.1007/BF02477433 64. Weinberg, A.M.: Gale J. Young. Physics Today. 45(1), 84 (1992). doi:10.1063/1.2809507 65. Werbos, P.J.: Maximizing long-term gas industry profits in two minutes in Lotus using neural network methods. Transactions on Systems Man and Cybernetics. 19(2), 315–333 (1989). doi:10.1109/21.31036 66. Yechkalo, Yu.V., Teplytskyi, I.O.: Kompiuterne modeliuvannia doslidu Rezerforda v seredovyshchi elektronnykh tablyts (Computer simulation of Rutherford's experiment in a spreadsheet environment). In: Collection of scientific papers on the Modern technologies in science and education, vol. 2, pp. 56–59. KSPU Publishing department, Kryvyi Rih (2003) 67. Yechkalo, Yu.V.: Kompiuterne modeliuvannia brounivskoho rukhu (Computer simulation of the Brownian motion). Pedahohichnyi poshuk. 5, 97–100 (2010) 68. Yechkalo, Yu.V.: Kompiuterne modeliuvannia rukhu zariadzhenoi chastynky v mahnitnomu poli v seredovyshchi elektronnykh tablyts (Computer simulation of motion of a charged particle in a magnetic field in the environment of spreadsheets). Problemy suchasnoho pidruchnyka. 5(2), 66–72 (2004) 69. Yechkalo, Yu.V.: Kompiuterne modeliuvannia yak zasib realizatsii mizhpredmetnykh zviazkiv kursu fizyky (Computer modeling as a means of realizing interdisciplinary connections in the physics course). Theory and methods of learning mathematics, physics, informatics. 5(2), 125–128 (2005) 70. Yechkalo, Yu.V.: Tekhnolohiia navchannia kompiuternoho modeliuvannia fizychnykh protsesiv i yavyshch u starshii shkoli (Tech of learning of computer simulation of physical processes and phenomena in school). In: Abstracts of the 6th All-Ukrainian scientific and methodical workshop on the Computer modeling in education, Kryvyi Rih, 12 April 2013 71. Yechkalo, Yu.V.: Vybir seredovyshcha modeliuvannia fizychnykh protsesiv (Selection of environment for simulation of physical processes). Theory and methods of learning mathematics, physics, informatics. 7(2), 11–14 (2008) 72. Yechkalo, Yu.V.: Vykorystannia Dokumentiv Google dlia orhanizatsii spilnoi roboty zi stvorennia kompiuternoi modeli (The use of Google Docs to collaborate on the creation of computer model). In: Abstracts of the 5th All-Ukrainian scientific and methodical workshop on the Computer modeling in education, Kryvyi Rih, 6 April 2012 73. Young, G.: On reinforcement and interference between stimuli. Bulletin of Mathematical Biophysics. 3(1), 5–12 (1941). doi:10.1007/BF02478102 74. Zaremba T.: CHAPTER 12 – Case Study III: Technology in Search of a Buck. In: Eberhart, R.C., Dobbins, R.W. (eds.) Neural Network PC Tools: A Practical Guide, pp. 251–283. Academic Press, San Diego (1990) | - |
dc.description.abstract | The article substantiates the necessity to develop training methods of computer simulation of neural networks in the spreadsheet environment. The systematic review of their application to simulating artificial neural networks is performed. The authors distinguish basic approaches to solving the problem of network computer simulation training in the spreadsheet environment, joint application of spreadsheets and tools of neural network simulation, application of third-party add-ins to spreadsheets, development of macros using the embedded languages of spreadsheets; use of standard spreadsheet add-ins for non-linear optimization, creation of neural networks in the spreadsheet environment without add-ins and macros. After analyzing a collection of writings of 1890-1950, the research determines the role of the scientific journal “Bulletin of Mathematical Biophysics”, its founder Nicolas Rashevsky and the scientific community around the journal in creating and developing models and methods of computational neuroscience. There are identified psychophysical basics of creating neural networks, mathematical foundations of neural computing and methods of neuroengineering (image recognition, in particular). The role of Walter Pitts in combining the descriptive and quantitative theories of training is discussed. It is shown that to acquire neural simulation competences in the spreadsheet environment, one should master the models based on the historical and genetic approach. It is indicated that there are three groups of models, which are promising in terms of developing corresponding methods – the continuous two-factor model of Rashevsky, the discrete model of McCulloch and Pitts, and the discrete-continuous models of Householder and Landahl. | uk |
dc.language.iso | en | uk |
dc.publisher | CEUR-WS.org | uk |
dc.subject | computer simulation | uk |
dc.subject | neural networks | uk |
dc.subject | spreadsheets | uk |
dc.subject | neural computing | uk |
dc.subject | neuroengineering | uk |
dc.subject | computational neuroscience | uk |
dc.title | Computer Simulation of Neural Networks Using Spreadsheets: The Dawn of the Age of Camelot | uk |
dc.type | Article | uk |
Розташовується у зібраннях: | Кафедра інформатики та прикладної математики |
Файли цього матеріалу:
Файл | Опис | Розмір | Формат | |
---|---|---|---|---|
paper14.pdf | Article | 1.58 MB | Adobe PDF | Переглянути/Відкрити |
Усі матеріали в архіві електронних ресурсів захищені авторським правом, всі права збережені.