Mathematical Psychology

This project investigates mathematical psychology's historical and philosophical foundations to clarify its distinguishing characteristics and relationships to adjacent fields. Through gathering primary sources, histories, and interviews with researchers, author Prof. Colin Allen - University of Pittsburgh [1, 2, 3] and his students  Osman Attah, Brendan Fleig-Goldstein, Mara McGuire, and Dzintra Ullis have identified three central questions: 

  1. What makes the use of mathematics in mathematical psychology reasonably effective, in contrast to other sciences like physics-inspired mathematical biology or symbolic cognitive science? 
  2. How does the mathematical approach in mathematical psychology differ from other branches of psychology, like psychophysics and psychometrics? 
  3. What is the appropriate relationship of mathematical psychology to cognitive science, given diverging perspectives on aligning with this field? 

Preliminary findings emphasize data-driven modeling, skepticism of cognitive science alignments, and early reliance on computation. They will further probe the interplay with cognitive neuroscience and contrast rational-analysis approaches. By elucidating the motivating perspectives and objectives of different eras in mathematical psychology's development, they aim to understand its past and inform constructive dialogue on its philosophical foundations and future directions. This project intends to provide a conceptual roadmap for the field through integrated history and philosophy of science.



The Project: Integrating History and Philosophy of Mathematical Psychology



This project aims to integrate historical and philosophical perspectives to elucidate the foundations of mathematical psychology. As Norwood Hanson stated, history without philosophy is blind, while philosophy without history is empty. The goal is to find a middle ground between the contextual focus of history and the conceptual focus of philosophy.


The team acknowledges that all historical accounts are imperfect, but some can provide valuable insights. The history of mathematical psychology is difficult to tell without centering on the influential Stanford group. Tracing academic lineages and key events includes part of the picture, but more context is needed to fully understand the field's development.


The project draws on diverse sources, including research interviews, retrospective articles, formal histories, and online materials. More interviews and research will further flesh out the historical and philosophical foundations. While incomplete, the current analysis aims to identify important themes, contrasts, and questions that shaped mathematical psychology's evolution. Ultimately, the goal is an integrated historical and conceptual roadmap to inform contemporary perspectives on the field's identity and future directions.



The Rise of Mathematical Psychology



The history of efforts to mathematize psychology traces back to the quantitative imperative stemming from the Galilean scientific revolution. This imprinted the notion that proper science requires mathematics, leading to "physics envy" in other disciplines like psychology.


Many early psychologists argued psychology needed to become mathematical to be scientific. However, mathematizing psychology faced complications absent in the physical sciences. Objects in psychology were not readily present as quantifiable, provoking heated debates on whether psychometric and psychophysical measurements were meaningful.


Nonetheless, the desire to develop mathematical psychology persisted. Different approaches grappled with determining the appropriate role of mathematics in relation to psychological experiments and data. For example, Herbart favored starting with mathematics to ensure accuracy, while Fechner insisted experiments must come first to ground mathematics.


Tensions remain between data-driven versus theory-driven mathematization of psychology. Contemporary perspectives range from psychometric and psychophysical stances that foreground data to measurement-theoretical and computational approaches that emphasize formal models.


Elucidating how psychologists negotiated to apply mathematical methods to an apparently resistant subject matter helps reveal the evolving role and place of mathematics in psychology. This historical interplay shaped the emergence of mathematical psychology as a field.



The Distinctive Mathematical Approach of Mathematical Psychology



What sets mathematical psychology apart from other branches of psychology in its use of mathematics?


Several key aspects stand out:

  1. Advocating quantitative methods broadly. Mathematical psychology emerged partly to push psychology to embrace quantitative modeling and mathematics beyond basic statistics.
  2. Drawing from diverse mathematical tools. With greater training in mathematics, mathematical psychologists utilize more advanced and varied mathematical techniques like topology and differential geometry.
  3. Linking models and experiments. Mathematical psychologists emphasize tightly connecting experimental design and statistical analysis, with experiments created to test specific models.
  4. Favoring theoretical models. Mathematical psychology incorporates "pure" mathematical results and prefers analytic, hand-fitted models over data-driven computer models.
  5. Seeking general, cumulative theory. Unlike just describing data, mathematical psychology aspires to abstract, general theory supported across experiments, cumulative progress in models, and mathematical insight into psychological mechanisms.


So while not unique to mathematical psychology, these key elements help characterize how its use of mathematics diverges from adjacent fields like psychophysics and psychometrics. Mathematical psychology carved out an identity embracing quantitative methods but also theoretical depth and broad generalization.



Situating Mathematical Psychology Relative to Cognitive Science



What is the appropriate perspective on mathematical psychology's relationship to cognitive psychology and cognitive science? While connected historically and conceptually, essential distinctions exist.


Mathematical psychology draws from diverse disciplines that are also influential in cognitive science, like computer science, psychology, linguistics, and neuroscience. However, mathematical psychology appears more skeptical of alignments with cognitive science.


For example, cognitive science prominently adopted the computer as a model of the human mind, while mathematical psychology focused more narrowly on computers as modeling tools.


Additionally, mathematical psychology seems to take a more critical stance towards purely simulation-based modeling in cognitive science, instead emphasizing iterative modeling tightly linked to experimentation.


Overall, mathematical psychology exhibits significant overlap with cognitive science but strongly asserts its distinct mathematical orientation and modeling perspectives. Elucidating this complex relationship remains an ongoing project, but preliminary analysis suggests mathematical psychology intentionally diverged from cognitive science in its formative development.


This establishes mathematical psychology's separate identity while retaining connections to adjacent disciplines at the intersection of mathematics, psychology, and computation.



Looking Ahead: Open Questions and Future Research



This historical and conceptual analysis of mathematical psychology's foundations has illuminated key themes, contrasts, and questions that shaped the field's development. Further research can build on these preliminary findings.

Additional work is needed to flesh out the fuller intellectual, social, and political context driving the evolution of mathematical psychology. Examining the influences and reactions of key figures will provide a richer picture.

Ongoing investigation can probe whether the identified tensions and contrasts represent historical artifacts or still animate contemporary debates. Do mathematical psychologists today grapple with similar questions on the role of mathematics and modeling?

Further analysis should also elucidate the nature of the purported bidirectional relationship between modeling and experimentation in mathematical psychology. As well, clarifying the diversity of perspectives on goals like generality, abstraction, and cumulative theory-building would be valuable.

Finally, this research aims to spur discussion on philosophical issues such as realism, pluralism, and progress in mathematical psychology models. Is the accuracy and truth value of models an important consideration or mainly beside the point? And where is the field headed - towards greater verisimilitude or an indefinite balancing of complexity and abstraction?

By spurring reflection on this conceptual foundation, this historical and integrative analysis hopes to provide a roadmap to inform constructive dialogue on mathematical psychology's identity and future trajectory.


The SDTEST® 



The SDTEST® is a simple and fun tool to uncover our unique motivational values that use mathematical psychology of varying complexity.



The SDTEST® helps us better understand ourselves and others on this lifelong path of self-discovery.


Here are reports of polls which SDTEST® makes:


1) Działania firm w odniesieniu do personelu w ostatnim miesiącu (tak / nie)

2) Działania firm w odniesieniu do personelu w ostatnim miesiącu (fakt w%)

3) Obawy

4) Największe problemy stojące przed moim krajem

5) Jakie cechy i umiejętności korzystają dobrzy liderzy przy budowaniu udanych zespołów?

6) Google. Czynniki, które wpływają na skuteczność zespołu

7) Główne priorytety osób poszukujących pracy

8) Co sprawia, że ​​szef jest świetnym liderem?

9) Co sprawia, że ​​ludzie odnoszą sukcesy w pracy?

10) Czy jesteś gotowy, aby uzyskać mniejszą wynagrodzenie za pracę zdalnie?

11) Czy istnieje wiek?

12) Ageizm w karierze

13) Ageizm w życiu

14) Przyczyny starzenia

15) Powody, dla których ludzie się poddają (Anna Vital)

16) ZAUFANIE (#WVS)

17) Oxford Happiness Survey

18) Samopoczucie psychiczne

19) Gdzie byłaby Twoja kolejna najbardziej ekscytująca okazja?

20) Co zrobisz w tym tygodniu, aby opiekować się zdrowiem psychicznym?

21) Żyję myśląc o mojej przeszłości, teraźniejszości lub przyszłości

22) Merytokracja

23) Sztuczna inteligencja i koniec cywilizacji

24) Dlaczego ludzie zwlekają?

25) Różnica płci w budowaniu pewności siebie (IFD Allensbach)

26) Xing.com Ocena kultury

27) „Pięć dysfunkcji zespołu Patricka Lencioni'ego”

28) Empatia to ...

29) Co jest niezbędne dla specjalistów IT w wyborze oferty pracy?

30) Dlaczego ludzie opierają się zmianom (Siobhán McHale)

31) Jak regulujesz swoje emocje? (Nawal Mustafa M.A.)

32) 21 umiejętności, które płacą ci na zawsze (Jeremiah Teo / 赵汉昇)

33) Prawdziwa wolność jest ...

34) 12 sposobów budowania zaufania z innymi (Justin Wright)

35) Charakterystyka utalentowanego pracownika (przez Talent Management Institute)

36) 10 kluczy do motywowania twojego zespołu


Below you can read an abridged version of the results of our VUCA poll “Fears“. The full version of the results is available for free in the FAQ section after login or registration.

Obawy

Kraj
Język
-
Mail
Ponownie obliczyć
Istnieje statystycznie istotna korelacja
Dystrybucja normalna, autor: William Sealy Gosset (Student) r = 3.53
Dystrybucja normalna, autor: William Sealy Gosset (Student) r = 3.53
Dystrybucja nie normalna przez Spearmana r = 0.14
Pytania do ankiety
Wszystkie pytania
Wszystkie pytania
Moim największym strachem jest
Dystrybucja
Pozytywna korelacja,% Ujemna korelacja,%
Normalna
-15.6
Answer 1
-10.1
Answer 2
-2.7
Answer 3
-9.2
Answer 4
-16.9
Answer 5
-4.2
Answer 6
-6
Answer 7
-13.4
Answer 8
-17.5
Answer 9
-12.7
Answer 10
-12.5
Answer 11
-14.8
Answer 12
-15.6
Answer 13
-11.6
Answer 14
-12
Answer 15
-7
Answer 16
Normalna
0.8
Answer 2
8.1
Answer 3
1.1
Answer 4
8.3
Answer 6
5.7
Answer 7
1.4
Answer 8
3.2
Answer 11
3.7
Answer 12
2.4
Answer 13
1.6
Answer 15
1.9
Answer 16
-0.2
Answer 1
-0.8
Answer 5
-5
Answer 9
-1.6
Answer 10
Normalna
3.3
Answer 1
3.9
Answer 2
5.5
Answer 3
2.8
Answer 4
0.6
Answer 5
2.1
Answer 6
4
Answer 7
3
Answer 8
3.6
Answer 10
1.6
Answer 11
2.8
Answer 12
4.3
Answer 13
7.5
Answer 16
-1.4
Answer 9
-0.9
Answer 14
-0.9
Answer 15
Normalna
9.7
Answer 1
7.1
Answer 2
1.6
Answer 4
7.2
Answer 5
1.4
Answer 8
7.7
Answer 9
2.5
Answer 10
0.8
Answer 11
3.6
Answer 12
2.4
Answer 13
1.6
Answer 15
-4.6
Answer 3
-2.3
Answer 7
-0.6
Answer 14
-5.2
Answer 16
Normalna
1
Answer 5
1.3
Answer 9
0.9
Answer 11
1.5
Answer 14
-1.1
Answer 1
-3.6
Answer 2
-4.4
Answer 3
-0.1
Answer 4
-5.8
Answer 6
-5.2
Answer 7
-2.4
Answer 8
-1.3
Answer 10
-3.3
Answer 12
-4.2
Answer 13
-3.8
Answer 15
-3.1
Answer 16
Nie
normalne
3
Answer 1
0.8
Answer 2
2.9
Answer 4
11.9
Answer 5
0.1
Answer 6
3.7
Answer 7
7.8
Answer 8
15.3
Answer 9
7
Answer 10
4.9
Answer 11
9.3
Answer 12
9.2
Answer 13
10.2
Answer 14
13
Answer 15
2.2
Answer 16
-1.7
Answer 3
Normalna
3
Answer 1
1.9
Answer 2
0.3
Answer 3
3.3
Answer 4
1.2
Answer 5
0.4
Answer 6
2.4
Answer 7
7.1
Answer 8
5.6
Answer 9
7.1
Answer 10
5.4
Answer 11
2.8
Answer 12
6.4
Answer 13
7
Answer 14
6
Answer 15
6.9
Answer 16


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[1] https://twitter.com/wileyprof
[2] https://colinallen.dnsalias.org
[3] https://philpeople.org/profiles/colin-allen

2023.10.13
Valerii Kosenko
Właściciel produktu Saas Pet Project Sdtest®

Valerii został zakwalifikowany jako pedagog społeczny w 1993 roku i od tego czasu zastosował swoją wiedzę w zakresie zarządzania projektami.
Valerii uzyskał tytuł magistra oraz kwalifikacje Project and Program Manager w 2013 roku. Podczas swojego programu magisterskiego zapoznał się z projektem Project Roadmap (GPM Deutsche Gesellschaft Für ProjektManagement E. V.) i Dynamics Spiral Dynamics.
Valerii wziął różne testy dynamiki spiralnej i wykorzystał swoją wiedzę i doświadczenie, aby dostosować obecną wersję SDTest.
Valerii jest autorem eksploracji niepewności V.U.C.A. Koncepcja wykorzystująca spiralną dynamikę i statystyki matematyczne w psychologii, ponad 20 międzynarodowych sondaży.
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Cześć! Pozwól, że cię zapytam, czy znasz już spiralną dynamikę?