The Statistics of q-Statistics
<p><b>Cumulative number of published papers per year.</b> The cumulative number of papers related to <span class="html-italic">q</span>-Statistics published each year (as of December 2023) is depicted, where the data follows two distinct <span class="html-italic">q</span>-exponential regimes (<math display="inline"><semantics> <mrow> <mi>f</mi> <mrow> <mo>(</mo> <mi>t</mi> <mo>)</mo> </mrow> <mo>=</mo> <mi>A</mi> <msub> <mo form="prefix">exp</mo> <mi>q</mi> </msub> <mrow> <mo>(</mo> <msub> <mi>λ</mi> <mi>q</mi> </msub> <mi>t</mi> <mo>)</mo> </mrow> </mrow> </semantics></math>) for two different time spans. (<b>Top Panel</b>) The red dashed line represents the regime from 1992 to 2004 (<math display="inline"><semantics> <mrow> <mi>q</mi> <mo>=</mo> <mn>0.625</mn> </mrow> </semantics></math>), and the black dashed line represents the regime from 2004 to the present (<math display="inline"><semantics> <mrow> <mi>q</mi> <mo>=</mo> <mn>0.75</mn> </mrow> </semantics></math>). Each regime’s trend is well-approximated by a <span class="html-italic">q</span>-exponential with the parameters provided in the figure. (<b>Bottom Panel</b>) The top panel is in linear–linear scale, while the bottom panel is in mono-<span class="html-italic">q</span>-log scale: the ordinate is represented in <span class="html-italic">q</span>-log scale, with the <span class="html-italic">q</span>-values 0.625 (yellow triangles) and 0.75 (blue squares). The same <span class="html-italic">q</span>-log functions are applied to the fitting curves in the top panel, represented again by dashed red and black lines in the bottom one.</p> "> Figure 2
<p><b>National researcher contributions to <span class="html-italic">q</span>-Statistics.</b> The collective involvement and impact of researchers from different countries in the field of <span class="html-italic">q</span>-Statistics, as reflected by the number of scientists with published papers in the field. The figure illustrates the ranking of countries by the total number of scientists with published papers on <span class="html-italic">q</span>-Statistics. The dashed line corresponds to the fitting of the data with a (<span class="html-italic">q</span>,<span class="html-italic">r</span>)-exponential (see text), with the parameters indicated in the figure. The figure highlights the varying levels of participation and influence of researchers from different nations in advancing the understanding and development of <span class="html-italic">q</span>-Statistics. As of December 2023, the USA, Brazil, and Italy are the three major contributors to the field.</p> "> Figure 3
<p><b>Ranking of journals with publications in <span class="html-italic">q</span>-Statistics.</b> This figure presents the arrangement of journals based on the number of articles that they have published related to <span class="html-italic">q</span>-Statistics. The data exhibit two distinct power-law regimes: one for journals with a relatively small number of papers (slope = −0.85) and another for journals with a higher number of papers on <span class="html-italic">q</span>-Statistics (slope = −1.16). This offers an overview of the distribution of publications across different journals in the field. As of January 2024, among 91 journals, Physical Review E, Physica A, and Physics Letters A have the highest number of published papers on <span class="html-italic">q</span>-Statistics.</p> "> Figure 4
<p><b>Constantino Tsallis’ collaboration network.</b> Illustration of Constantino Tsallis’ collaboration network, encompassing all researchers (included in the Scopus database) who collaborated with him throughout his research career. The network comprises 236 researchers with 436 publications and 543 edges linking authors who have joint papers within the network. Node sizes are proportional to the number of citations of coauthored papers, reflecting the impact of researchers on the scientific community through their collaboration with C. Tsallis. Notably, the network reveals the presence of 11 distinct communities, each denoted by a unique color.</p> "> Figure 5
<p><b>Constantino Tsallis’ Publications and Citations.</b> Illustrations depict the cumulative number of publications (orange) and citations (red) throughout the academic career of C. Tsallis, spanning from 1970 to the present. Cumulative plots of the total number of citations for papers published in each respective year are also provided (blue). The seminal article by C. Tsallis on <span class="html-italic">q</span>-Statistics, published in 1988, stands out as a highly cited paper, marked by the arrow denoted “Tsallis 1988”.</p> "> Figure 6
<p><b>Ranking of Tsallis’ citations with coauthors.</b> The analysis of citations received by articles authored by Tsallis in collaboration with other researchers. This figure displays the unnormalized decreasing cumulative distribution of citations for papers with coauthors. The data are fitted with a (<span class="html-italic">q</span>,<span class="html-italic">r</span>)-exponential model, with parameters indicated by Equations (<a href="#FD3-entropy-26-00554" class="html-disp-formula">3</a>) and (<a href="#FD4-entropy-26-00554" class="html-disp-formula">4</a>). The figure involves ranking these citations based on the number of times they have been cited, providing insights into the impact and influence of Tsallis’ collaborative work. The top-three most-cited coauthors with joint papers, Mendes, Plastino and Gell-Mann, are indicated.</p> "> Figure 7
<p><b>Ranking of Tsallis’ papers with coauthors.</b> This analysis focuses on articles authored by Tsallis in collaboration with other researchers, specifically examining the frequency of coauthorship. The figure illustrates the unnormalized decreasing cumulative distribution of the number of papers authored by Tsallis in collaboration with others. It identifies two distinct power-law regimes, with a transition regime between them (slopes indicated). This ranking offers insights into the collaborative research efforts involving Tsallis. Additionally, the figure highlights the top-three most-frequent collaborators: da Silva, Nobre, and Tirnakli.</p> "> Figure 8
<p><b>Ranking of citations of Tsallis’ papers.</b> This figure presents an analysis of the citations received by papers authored by Tsallis. It illustrates the unnormalized decreasing cumulative distribution of citations for Tsallis’ papers, effectively fitted with a <span class="html-italic">q</span>-exponential distribution (<math display="inline"><semantics> <mrow> <mi>A</mi> <msub> <mo form="prefix">exp</mo> <mi>q</mi> </msub> <mrow> <mo>(</mo> <mo>−</mo> <msub> <mi>β</mi> <mi>q</mi> </msub> <mi>x</mi> <mo>)</mo> </mrow> </mrow> </semantics></math>). The displayed index <math display="inline"><semantics> <mrow> <mi>h</mi> <mo>=</mo> <mn>67</mn> </mrow> </semantics></math> indicates the citation count at which the papers achieve an <span class="html-italic">h</span>-index of 67. This ranking offers insights into the impact and influence of Tsallis’ publications based on their citation counts. Furthermore, Tsallis’ seminal paper from 1988 stands out as an outlier, significantly contributing to the ankle point shown in the figure, which highlights its exceptionally high citation impact.</p> "> Figure 9
<p><b>Nominal citations in thermal physics: Comparison with titans.</b> A comparison of nominal citations is conducted for a non-exhaustive list of scientists with remarkable contributions to thermal physics throughout history and other relatively well-known scientists within the current statistical mechanics community. The numbers presented here are obtained from WoS by employing a search of each name in “All Databases”, including “Preprint Citation Index” in “Topic”. Tsallis is among the most-cited scientists in the field of thermal physics, providing insights into his relative impact and influence compared to other luminaries in the field.</p> ">
Abstract
:1. Introduction
2. Diffusion of q-Statistics Ideas
- (i)
- The distribution of the number of citations of scientific papers. In ref. [17], this scientometric feature was addressed, and it was concluded that highly cited papers follow a power-law distribution, while low-cited papers follow a stretched exponential distribution, suggesting that different phenomena govern these two regimes. In ref. [18], it was found that the same data could be represented by a single distribution, namely, a q-exponential distribution:
- (ii)
- The distribution of the number of weeks that pop musicians stay in Britain’s top-selling lists. In ref. [19], the top-75 best-selling musicians on a week-by-week basis from 1950 to 2000 in the UK were analyzed, and it was found that a stretched exponential can fit the data. In ref. [20], it was shown that the same data could be equally well-fitted with a function that displays an intermediate power-law regime and presents a crossover to an exponential tail. This function, introduced by [21] within a different context (reassociation of carbon monoxide in folded myoglobin), is given by
3. Collaboration Network of C. Tsallis
4. Concluding Remarks
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Eroglu, D.; Boghosian, B.M.; Borges, E.P.; Tirnakli, U. The Statistics of q-Statistics. Entropy 2024, 26, 554. https://doi.org/10.3390/e26070554
Eroglu D, Boghosian BM, Borges EP, Tirnakli U. The Statistics of q-Statistics. Entropy. 2024; 26(7):554. https://doi.org/10.3390/e26070554
Chicago/Turabian StyleEroglu, Deniz, Bruce M. Boghosian, Ernesto P. Borges, and Ugur Tirnakli. 2024. "The Statistics of q-Statistics" Entropy 26, no. 7: 554. https://doi.org/10.3390/e26070554
APA StyleEroglu, D., Boghosian, B. M., Borges, E. P., & Tirnakli, U. (2024). The Statistics of q-Statistics. Entropy, 26(7), 554. https://doi.org/10.3390/e26070554