Large data and Bayesian modeling—aging curves of NBA players

Researchers interested in changes that occur as people age are faced with a number of methodological problems, starting with the immense time scale they are trying to capture, which renders laboratory experiments useless and longitudinal studies rather rare. Fortunately, some people take part in particular activities and pastimes throughout their lives, and often these activities are systematically recorded. In this study, we use the wealth of data collected by the National Basketball Association to describe the aging curves of elite basketball players. We have developed a new approach rooted in the Bayesian tradition in order to understand the factors behind the development and deterioration of a complex motor skill. The new model uses Bayesian structural modeling to extract two latent factors, those of development and aging. The interaction of these factors provides insight into the rates of development and deterioration of skill over the course of a player’s life. We show, for example, that elite athletes have different levels of decline in the later stages of their career, which is dependent on their skill acquisition phase. The model goes beyond description of the aging function, in that it can accommodate the aging curves of subgroups (e.g., different positions played in the game), as well as other relevant factors (e.g., the number of minutes on court per game) that might play a role in skill changes. The flexibility and general nature of the new model make it a perfect candidate for use across different domains in lifespan psychology.

[1]  M. Bilalic,et al.  Restricting range restricts conclusions , 2014, Front. Psychol..

[2]  I M Franks,et al.  A systematic approach to analysing sports performance. , 1986, Journal of sports sciences.

[3]  Michael D. Lee,et al.  A Bayesian analysis of retention functions , 2004 .

[4]  K. A. Ericsson,et al.  Expert Performance in Sports: Advances in Research on Sport Expertise , 2003 .

[5]  R. Siegler,et al.  The relationship between age and major league baseball performance: implications for development. , 1994, Psychology and aging.

[6]  Scott D. Brown,et al.  The power law repealed: The case for an exponential law of practice , 2000, Psychonomic bulletin & review.

[7]  P. Baltes,et al.  Life-span Developmental Psychology: Introduction To Research Methods , 1977 .

[8]  Michaël A. Stevens,et al.  Word knowledge in the crowd: Measuring vocabulary size and word prevalence in a massive online experiment , 2015, Quarterly journal of experimental psychology.

[9]  J. Grusec Social learning theory and developmental psychology: The legacies of Robert Sears and Albert Bandura. , 2020 .

[10]  D. Simonton Thomas Edison’s creative career: The multilayered trajectory of trials, errors, failures, and triumphs. , 2015 .

[11]  Allen and Rosenbloom Paul S. Newell,et al.  Mechanisms of Skill Acquisition and the Law of Practice , 1993 .

[12]  U. Lindenberger,et al.  Cognitive and sensory declines in old age: gauging the evidence for a common cause. , 2009, Psychology and aging.

[13]  Fernand Gobet,et al.  Does chess need intelligence? – A study with young chess players , 2007 .

[14]  E. R. Crossman A THEORY OF THE ACQUISITION OF SPEED-SKILL∗ , 1959 .

[15]  R. Fair Estimated Age Effects in Athletic Events and Chess , 2006, Experimental aging research.

[16]  M. Lee,et al.  Bayesian Cognitive Modeling: A Practical Course , 2014 .

[17]  Kieran Smallbone,et al.  Playing off the curve - testing quantitative predictions of skill acquisition theories in development of chess performance , 2014, Front. Psychol..

[18]  S. Kritchevsky,et al.  The loss of skeletal muscle strength, mass, and quality in older adults: the health, aging and body composition study. , 2006, The journals of gerontology. Series A, Biological sciences and medical sciences.

[19]  Adrian Pagan,et al.  Econometric Issues in the Analysis of Regressions with Generated Regressors. , 1984 .

[20]  Merim Bilalić,et al.  The Neuroscience of Expertise , 2017 .

[21]  Caitlin Tenison,et al.  Modeling the distinct phases of skill acquisition. , 2016, Journal of experimental psychology. Learning, memory, and cognition.

[22]  Deana B. Davalos,et al.  Age differences in fluid intelligence: Contributions of general slowing and frontal decline , 2006, Brain and Cognition.

[23]  Christian P. Robert,et al.  Monte Carlo Statistical Methods , 2005, Springer Texts in Statistics.

[24]  D. Simonton Age and Creative Productivity , 2020, Encyclopedia of Creativity, Invention, Innovation and Entrepreneurship.

[25]  Alexander Wakim,et al.  Functional Data Analysis of Aging Curves in Sports , 2014, 1403.7548.

[26]  P. Baltes,et al.  Psychological perspectives on successful aging: The model of selective optimization with compensation. , 1990 .

[27]  Anique B. H. de Bruin,et al.  The influence of achievement motivation and chess-specific motivation on deliberate practice. , 2007, Journal of sport & exercise psychology.

[28]  Timothy A. Salthouse,et al.  Theoretical Perspectives on Cognitive Aging , 1991 .

[29]  T. Salthouse Structural models of the relations between age and measures of cognitive functioning , 2001 .

[30]  Joachim Vandekerckhove,et al.  A cognitive latent variable model for the simultaneous analysis of behavioral and personality data. , 2014 .

[31]  L. Cronbach The two disciplines of scientific psychology. , 1957 .

[32]  Robert J. Crutcher,et al.  The role of deliberate practice in the acquisition of expert performance. , 1993 .

[33]  Dean Keith Simonton,et al.  Creative productivity: A predictive and explanatory model of career trajectories and landmarks. , 1997 .

[34]  W. Meredith Measurement invariance, factor analysis and factorial invariance , 1993 .

[35]  Alan Y. Chiang,et al.  Generalized Additive Models: An Introduction With R , 2007, Technometrics.

[36]  U. Staudinger,et al.  Lifespan psychology: theory and application to intellectual functioning. , 1999, Annual review of psychology.

[37]  Fernand Gobet,et al.  Personality profiles of young chess players , 2007 .

[38]  Edward J. Egan,et al.  Estimating the effects of age on NHL player performance , 2014 .

[39]  T. Salthouse Selective review of cognitive aging , 2010, Journal of the International Neuropsychological Society.

[40]  Johannes J. F. Schroots,et al.  On the Dynamics of Active Aging , 2012, Current gerontology and geriatrics research.

[41]  James C. Anderson,et al.  STRUCTURAL EQUATION MODELING IN PRACTICE: A REVIEW AND RECOMMENDED TWO-STEP APPROACH , 1988 .

[42]  Paul B. Baltes,et al.  Theoretical propositions of life-span developmental psychology : On the dynamics between growth and decline , 1987 .

[43]  Nemanja Vaci,et al.  Chess databases as a research vehicle in psychology: Modeling large data , 2016, Behavior Research Methods.

[44]  D. Simonton,et al.  Age and Creative Productivity: Nonlinear Estimation of an Information-Processing Model , 1989, International journal of aging & human development.

[45]  M. Brown,et al.  Age-related changes in contractile properties of single skeletal fibers from the soleus muscle. , 1999, Journal of applied physiology.

[46]  Jacolien van RIJ,et al.  Alternative quantitative methods in psycholinguistics: Implications for theory and design , 2020, Word Knowledge and Word Usage.

[47]  D. Thelen Adjustment of muscle mechanics model parameters to simulate dynamic contractions in older adults. , 2003, Journal of biomechanical engineering.

[48]  S. Wood Generalized Additive Models: An Introduction with R , 2006 .

[49]  Neil Charness,et al.  The role of deliberate practice in chess expertise , 2005 .

[50]  D. Flora Specifying Piecewise Latent Trajectory Models for Longitudinal Data , 2008 .

[51]  M. Bilalic,et al.  Is age really cruel to experts? Compensatory effects of activity. , 2015, Psychology and aging.

[52]  Hoon Kim,et al.  Monte Carlo Statistical Methods , 2000, Technometrics.

[53]  W. Hopkins,et al.  Age of Peak Competitive Performance of Elite Athletes: A Systematic Review , 2015, Sports Medicine.

[54]  J. Gabrieli,et al.  Insights into the ageing mind: a view from cognitive neuroscience , 2004, Nature Reviews Neuroscience.

[55]  R. Lerner On The Nature Of Human Plasticity , 1984 .

[56]  R. Baayen,et al.  Mixed-effects modeling with crossed random effects for subjects and items , 2008 .

[57]  J. Bradbury Peak athletic performance and ageing: Evidence from baseball , 2009, Journal of sports sciences.

[58]  Lynn Kuo,et al.  Bayesian and profile likelihood change point methods for modeling cognitive function over time , 2003, Comput. Stat. Data Anal..

[59]  L. Jarvik,et al.  Intellectual performance of octogenarians as a function of education and initial ability. , 1974, Human development.

[60]  O. Wilhelm,et al.  Working memory capacity - facets of a cognitive ability construct , 2000 .

[61]  Sara Fripp A learning curve. , 2014, Midwives.

[62]  Jörg Rieskamp,et al.  Testing adaptive toolbox models: a Bayesian hierarchical approach. , 2013, Psychological review.

[63]  R. Leach The learning curve , 1992 .

[64]  Justin Kubatko,et al.  A Starting Point for Analyzing Basketball Statistics , 2007 .

[65]  J. Hardy,et al.  Piecewise power laws in individual learning curves , 2015, Psychonomic Bulletin & Review.

[66]  Seife Dendir,et al.  When do soccer players peak? A note , 2016 .

[67]  M. Kasumovic,et al.  TRAIT COMPENSATION AND SEX‐SPECIFIC AGING OF PERFORMANCE IN MALE AND FEMALE PROFESSIONAL BASKETBALL PLAYERS , 2014, Evolution; international journal of organic evolution.

[68]  N. Charness,et al.  A multilevel model analysis of expertise in chess across the life span. , 2007, Psychology and aging.

[69]  M. Lee Three case studies in the Bayesian analysis of cognitive models , 2008, Psychonomic bulletin & review.

[70]  John K. Kruschke,et al.  Doing Bayesian Data Analysis: A Tutorial with R, JAGS, and Stan , 2014 .

[71]  Udo Boehm,et al.  On the importance of avoiding shortcuts in applying cognitive models to hierarchical data , 2018, Behavior Research Methods.

[72]  F. E. Ritter,et al.  Learning Curve, The , 2001 .

[73]  M. McDaniel,et al.  The relationship between working memory capacity and executive functioning: evidence for a common executive attention construct. , 2010, Neuropsychology.

[74]  Jelena Radanović,et al.  Analiza vremena reakcije modelovanjem linearnih mešovitih efekata , 2013 .

[75]  T. Salthouse What and When of Cognitive Aging , 2004 .

[76]  A. Gelfand,et al.  Hierarchical Bayes Models for the Progression of HIV Infection Using Longitudinal CD4 T-Cell Numbers , 1992 .

[77]  R. Harald Baayen,et al.  The Myth of Cognitive Decline: Non-Linear Dynamics of Lifelong Learning , 2014, Top. Cogn. Sci..

[78]  W. Hopkins,et al.  Age at Peak Performance of Successful Track & Field Athletes , 2014 .

[79]  D. Simonton Career landmarks in science: Individual differences and interdisciplinary contrasts. , 1991 .

[80]  Fernand Gobet,et al.  The relationship between cognitive ability and chess skill: a comprehensive meta-analysis , 2016 .

[81]  F. Booth,et al.  Effect of aging on human skeletal muscle and motor function. , 1994, Medicine and science in sports and exercise.

[82]  J. Preston,et al.  The aging. , 1960, Journal of the South Carolina Medical Association.

[83]  R. Lerner On the nature of human plasticity: Author index , 1984 .

[84]  Roger Ratcliff,et al.  The Diffusion Decision Model: Theory and Data for Two-Choice Decision Tasks , 2008, Neural Computation.

[85]  J. Faulkner,et al.  AGE‐RELATED CHANGES IN THE STRUCTURE AND FUNCTION OF SKELETAL MUSCLES , 2007, Clinical and experimental pharmacology & physiology.

[86]  K. Berg,et al.  Physical and Performance Characteristics of NCAA Division I Male Basketball Players , 1994 .

[87]  S. Anton,et al.  Models of accelerated sarcopenia: Critical pieces for solving the puzzle of age-related muscle atrophy , 2010, Ageing Research Reviews.

[88]  J. Faulkner,et al.  The Aging of Elite Male Athletes: Age-Related Changes in Performance and Skeletal Muscle Structure and Function , 2008, Clinical journal of sport medicine : official journal of the Canadian Academy of Sport Medicine.

[89]  T. Salthouse,et al.  Meta-analyses of age-cognition relations in adulthood: estimates of linear and nonlinear age effects and structural models. , 1997, Psychological bulletin.

[90]  Paul B. Baltes,et al.  Successful aging: Perspectives from the behavioral sciences , 1990 .

[91]  W. Evans,et al.  Changes in Skeletal Muscle with Aging: Effects of Exercise Training , 1993, Exercise and sport sciences reviews.

[92]  R. Bracewell The Fourier Transform and Its Applications , 1966 .

[93]  Daniel E. Geer,et al.  Power. Law , 2012, IEEE Secur. Priv..