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Capitol Clash SYC, RCC, Veteran ROC & Y8

Y-14 Women's Épée

Saturday, January 18, 2020 at 3:00 PM

National Harbor, MD - National Harbor, MD, USA

Probability density of pool victories

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Explore the pool victory probability density for each fencer, with their actual victories highlighted in a box. Learn more.

# Name Number of victories
0 1 2 3 4 5 6
1 WADE-CURRIE Ava S. - - - 1% 8% 37% 55%
2 TEMIRYAEV Anna M. - - 1% 9% 27% 40% 22%
3 KUZNETSOV Victoria - - - - 5% 29% 66%
3 XIAO Ruien - - 1% 8% 30% 47% 14%
5 DROVETSKY Alexandra M. - - - 1% 6% 35% 58%
6 REID Anousheh - - - 5% 25% 50% 20%
7 KHROL Caralina - - - 1% 9% 42% 47%
8 GU Sarah - - - 4% 22% 51% 24%
9 ZAFFT Tatiana M. - - - 1% 9% 37% 52%
10 GAJJALA Sharika R. - - - 4% 18% 42% 36%
11 ALEXANDROV Katherine S. - 1% 8% 25% 36% 24% 6%
12 SMITH Grace L. - - 1% 6% 26% 43% 24%
13 LUO Ashley - - 2% 10% 28% 40% 21%
14 CHIN Isabella - - - 3% 18% 43% 35%
15 LI Yuhe - 3% 14% 32% 34% 15% 2%
16 PAPADAKIS Lily - 3% 16% 37% 35% 8%
17 SEMIKIN Julia - - - - 4% 28% 67%
18 ZHANG Tina - - - 2% 15% 44% 39%
19 DESAI Meera P. - 2% 16% 38% 34% 11%
20 REMEZA Alissa - 1% 9% 30% 41% 19%
21 MING Cynthia - 1% 7% 23% 36% 27% 7%
22 GUMAGAY Erika L. - 1% 7% 24% 37% 25% 6%
23 LI Alisha - 3% 17% 38% 33% 9% 1%
24 HAFEEZ Hiba - 2% 12% 30% 36% 18% 2%
25 GLICK Nina 1% 8% 27% 36% 22% 6% 1%
26 JAKEL Sophia N. - - 1% 9% 37% 53%
27 ZIGALO Elizabeth - - 3% 15% 37% 36% 9%
28 XUAN Nicole J. - - 5% 23% 40% 27% 5%
29 YIN Julia - - 1% 8% 29% 44% 18%
30 SWENSON Nikita G. 1% 6% 21% 34% 27% 10% 1%
31 SUN XiaoQi (Angelica) - - - 1% 9% 41% 50%
32 MACEDON Gianna 10% 42% 36% 11% 1% - -
33 LU Samantha R. - 1% 9% 30% 40% 18% 2%
34 YAO KATHARINE - 4% 20% 39% 30% 8%
35 CHENG Ava - - 2% 13% 34% 38% 13%
36 CHISHOLM Phoebe C. 1% 9% 29% 38% 19% 4% -
37 SMOTRITSKY Mia 1% 8% 25% 37% 24% 5% -
38 YANG Alisa 1% 9% 29% 36% 19% 4% -
39 FURMAN Maria - 2% 10% 27% 37% 22% 3%
40 HU Chelsea 1% 12% 31% 34% 17% 4% -
41 JOYAL Anne-Sophie - 4% 21% 39% 29% 7% -
42 CHERNYSHOVA Victoria - 1% 6% 26% 40% 23% 4%
43 ZENG Katrina 5% 20% 33% 27% 12% 3% -
44 YAO Melinda - 2% 15% 35% 34% 13% 1%
45 BRUNSON Nile 1% 7% 24% 36% 25% 7%
46 LEE Yedda - 4% 22% 40% 28% 7%
47 HAFEEZ Hania 2% 14% 34% 35% 13% 1%
48 MAO Amy - 2% 12% 34% 38% 14%
49 NGUYEN Kira - - 5% 19% 36% 31% 9%
50 LIN Elaine 7% 31% 39% 19% 4% - -
51 LI Suri - 2% 12% 32% 36% 16% 2%
52 CASPAR Margot 6% 24% 35% 25% 9% 1% -
53 LEE Scarlett - 7% 27% 36% 22% 6% 1%
54 GUJJA Misha 3% 18% 35% 30% 12% 2% -
55 ZHU Serene M. 1% 6% 21% 34% 28% 9% 1%
56 NIEMAN Aubrey 1% 12% 32% 34% 17% 3% -
57 ZHANG Victoria R. - - 2% 13% 34% 38% 14%
58 WAN Runxi - 8% 30% 39% 20% 3% -
59 KORFONTA Jolie 1% 15% 37% 33% 12% 2%
60 CALDERA Lexi I. - 1% 12% 34% 37% 14%
61 MUELLER Emma M. 1% 12% 31% 35% 17% 3% -
62 JAKEL Alysa C. 7% 27% 37% 22% 6% 1% -
63 CHEN yue 3% 16% 31% 30% 16% 4% -
64 ALEXANDER Amelia 3% 21% 41% 27% 7% 1% -
65 FAN Elizabeth - 7% 37% 38% 15% 3% -
66 MOON Seojung 1% 11% 33% 37% 16% 3% -
67 PRIHODKO Nina 4% 20% 35% 28% 10% 1% -
68 HAYNES Antonia 6% 24% 35% 25% 9% 1% -
69 ERDMAN Giselle 14% 39% 33% 11% 2% - -
70 JOSEPH mikayla 9% 31% 37% 19% 4% -
71 BENZAN India 6% 26% 39% 23% 6% - -
72 CANNING Charlotte 2% 16% 36% 33% 12% 2% -
73 YOU Emily 6% 25% 36% 24% 8% 1% -
74 BARCLAY Khyri 2% 12% 31% 34% 17% 3% -
75 RAUSCH Juliana 1% 7% 23% 34% 25% 9% 1%
76 TSIPORUKHA Mia 42% 43% 13% 2% - - -
77 HOFFMAN Ivy - 4% 21% 41% 28% 5% -
78 HSU Adele Y. 7% 36% 38% 16% 3% -
79 CHEN Carolyn 13% 45% 35% 6% - -
80 PEELER Julia 7% 29% 38% 21% 4% -
81 HOSANAGAR Inchara 24% 42% 26% 7% 1% -
82 PENHOET Evelyn 47% 40% 11% 1% - -
83 LIU Nicole 1% 11% 32% 37% 17% 2% -
84 AZMEH nour 1% 12% 34% 36% 14% 2% -
85 DREFKE Sigrid 6% 23% 35% 25% 9% 1% -
85 SANTA Bianca Estefania - 5% 18% 32% 30% 13% 2%
87 BROWN Hannah 9% 31% 37% 19% 4% - -
88 MAGALSKI Mary - 4% 20% 37% 29% 10% 1%
89 WONG Bella 19% 45% 28% 7% 1% - -
90 WITTER Catherine A. 1% 7% 25% 39% 24% 4% -
90 BECKMAN Ana 18% 38% 31% 11% 2% - -
92 PAN Iris 35% 44% 18% 3% - - -
93 PULLEN Ayah 17% 37% 31% 12% 2% - -
94 NIEMAN Anjolie 11% 38% 36% 13% 2% - -
94 SHIN Jihyo 60% 33% 7% 1% - - -
96 KRUMHOLZ Nicole 5% 22% 35% 26% 10% 1% -
97 IVY Zhao 1% 7% 22% 34% 26% 9% 1%
98 LEE Olivia 8% 34% 37% 17% 3% - -
98 KEE Bea Isabelle 3% 17% 35% 31% 12% 2% -
100 CHEN Vivian 8% 30% 38% 19% 4% - -
101 DOLAN Lucy 62% 33% 5% - - - -
102 ROMERO KURI Celeste 60% 33% 6% - - -
103 PINNAMANENI Drithi 19% 43% 29% 8% 1% - -
104 RABASCO Lexi 56% 36% 7% 1% - - -
105 ROBINSON Lola 9% 31% 36% 19% 4% - -
106 LE BORGNE Clea 27% 44% 23% 5% 1% - -
107 YAN Claire 43% 40% 14% 2% - - -
108 ZBOICHYK Thais 8% 35% 42% 14% 1% - -
109 NIKOLIC DE JACINTO Alix P. 39% 42% 16% 2% - - -

Explanation

The heatmap in this table provides a visual representation of the victory probability distribution for each fencer in their respective pools:

This heatmap visualization offers an immediate understanding of each fencer's expected performance compared to their actual results.