Table of Ranks

(noun)

A formal list of positions and ranks in the military, government, and court of Imperial Russia. Peter the Great introduced the system in 1722 while engaged in a struggle with the existing hereditary nobility, or boyars. It was formally abolished in 1917 by the newly established Bolshevik government.

Related Terms

  • Holy S
  • Saint Petersbu
  • serfdom
  • Collegia
  • kholops
  • Saint Petersburg
  • Holy Synod
  • boyars

(noun)

A formal list of positions and ranks in the military, government, and court of Imperial Russia. Peter the Great introduced the system in 1722 while engaged in a struggle with the existing hereditary nobility, or boyars. It was formally abolished in 1917 by the newly established Bolshevik government.

Related Terms

  • Holy S
  • Saint Petersbu
  • serfdom
  • Collegia
  • kholops
  • Saint Petersburg
  • Holy Synod
  • boyars

Examples of Table of Ranks in the following topics:

  • The Westernization of Russia

    • Peter's distrust of the elitist and anti-reformist boyars culminated in 1722 with the creation of the Table of Ranks: a formal list of ranks in the Russian military, government, and royal court.
    • The Table of Ranks established a complex system of titles and honorifics, each classed with a number denoting a specific level of service or loyalty to the Tsar.
    • Previously, high-ranking state positions were hereditary, but with the establishment of the Table of Ranks, anyone, including a commoner, could work their way up the bureaucratic hierarchy with sufficient hard work and skill.
    • With minimal modifications, the Table of Ranks remained in effect until the Russian Revolution of 1917.
    • The establishment of the Table of Ranks was among the most audacious of Peter's reforms, a direct blow to the power of the boyars which changed Russian society significantly.
  • Rank Randomization for Association (Spearman's ρ)

    • Table 1 shows 5 values of X and Y.
    • Table 2 shows these same data converted to ranks (separately for X and Y).
    • The correlation of ranks is called "Spearman's ρ. "
    • There are also three other arrangements that produce an r of 0.90 (see Tables 4, 5, and 6).
    • Therefore, there are five arrangements of Y that lead to correlations as high or higher than the actual ranked data (Tables 2 through 6).
  • Rank Randomization: Two Conditions (Mann-Whitney U, Wilcoxon Rank Sum)

    • The primary advantage of rank randomization tests is that there are tables that can be used to determine significance.
    • The probability value is determined by computing the proportion of the possible arrangements of these ranks that result in a difference between ranks of as large or larger than those in the actual data (Table 2).
    • Tables 3-5 show three rearrangements that would lead to a rank sum of 24 or larger.
    • The beginning of this section stated that rank randomization tests were easier to compute than randomization tests because tables are available for rank randomization tests.
    • Table 6 can be used to obtain the critical values for equal sample sizes of 4-10.
  • Percentiles

    • Consider the 25th percentile for the 8 numbers in Table 1.
    • For a second example, consider the 20 quiz scores shown in Table 2.
    • Since the score with a rank of IR (which is 5) and the score with a rank of IR + 1 (which is 6) are both equal to 5, the 25th percentile is 5.
    • The score with a rank of 17 is 9 and the score with a rank of 18 is 10.
    • The score with a rank of IR is 3 and the score with a rank of IR + 1 is 5.
  • Wilcoxon t-Test

    • Ties receive a rank equal to the average of the ranks they span.
    • Let $R_i$ denote the rank.
    • Calculate the test statistic $W$, the absolute value of the sum of the signed ranks:
    • For $N_r < 10$, $W$ is compared to a critical value from a reference table.
    • Alternatively, a $p$-value can be calculated from enumeration of all possible combinations of $W$ given $N_r$.
  • Rank Correlation

    • A rank correlation is a statistic used to measure the relationship between rankings of ordinal variables or different rankings of the same variable.
    • A rank correlation is any of several statistics that measure the relationship between rankings of different ordinal variables or different rankings of the same variable.
    • A rank correlation coefficient measures the degree of similarity between two rankings and can be used to assess the significance of the relation between them.
    • $-1$ if the disagreement between the two rankings is perfect: one ranking is the reverse of the other;
    • This graph shows a Spearman rank correlation of 1 and a Pearson correlation coefficient of 0.88.
  • Distribution-Free Tests

    • Order statistics, which are based on the ranks of observations, are one example of such statistics.
    • Friedman two-way analysis of variance by ranks: tests whether $k$ treatments in randomized block designs have identical effects.
    • McNemar's test: tests whether, in $2 \times 2$ contingency tables with a dichotomous trait and matched pairs of subjects, row and column marginal frequencies are equal.
    • Squared ranks test: tests equality of variances in two or more samples.
    • This image shows a graphical representation of a ranked list of the highest rated cars in 2010.
  • Rank Correlation

    • A rank correlation is any of several statistics that measure the relationship between rankings.
    • In statistics, a rank correlation is any of several statistics that measure the relationship between rankings of different ordinal variables or different rankings of the same variable, where a "ranking" is the assignment of the labels (e.g., first, second, third, etc.) to different observations of a particular variable.
    • A rank correlation coefficient measures the degree of similarity between two rankings, and can be used to assess the significance of the relation between them.
    • where $n$ is the number of items or individuals being ranked and $d$ is $R_1 - R_2$ (where $R_1$ is the rank of items with respect to the first variable and $R_2$ is the rank of items with respect to the second variable).
    • Evaluate the relationship between rankings of different ordinal variables using rank correlation
  • Kruskal-Wallis H-Test

    • The Kruskal–Wallis one-way analysis of variance by ranks (named after William Kruskal and W.
    • Assign any tied values the average of the ranks would have received had they not been tied.
    • Note that the second line contains only the squares of the average ranks.
    • where $G$ is the number of groupings of different tied ranks, and $t_i$ is the number of tied values within group $i$ that are tied at a particular value.
    • If a table of the chi-squared probability distribution is available, the critical value of chi-squared, ${ \chi }_{ \alpha ,g-1' }^{ 2 }$, can be found by entering the table at $g − 1$ degrees of freedom and looking under the desired significance or alpha level.
  • Mann-Whitney U-Test

    • For each observation in sample 1, count the number of observations in sample 2 that have a smaller rank (count a half for any that are equal to it).
    • The sum of ranks in sample 2 is now determinate, since the sum of all the ranks equals:
    • where $n_1$ is the sample size for sample 1, and $R_1$ is the sum of the ranks in sample 1.
    • The smaller value of $U_1$ and $U_2$ is the one used when consulting significance tables.
    • As it compares the sums of ranks, the Mann–Whitney test is less likely than the $t$-test to spuriously indicate significance because of the presence of outliers (i.e., Mann–Whitney is more robust).
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