The future of US Fencing is at stake!

For transparency, fairness, and athlete support, VOTE NOW for:
(1) Maria Panyi, (2) Andrey Geva, (3) Igor Chirashnya, and (4) Sue Moheb.

January NAC

Junior Women's Foil

Sunday, January 9, 2022 at 10:30 AM

San Jose, CA, USA

Probability density of pool victories

Reset

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 RHODES Zander - - - - 4% 27% 69%
2 WEINTRAUB Maia M. - - - - 4% 26% 70%
3 GUO Jessica Zi Jia - - - - 1% 15% 84%
3 CAO Arianna L. - - 1% 7% 27% 43% 22%
5 LEE Brianna J. - - 2% 12% 33% 39% 14%
6 HE Elizabeth W. - - - 1% 12% 43% 43%
7 HORSLEY Asherah - - 1% 9% 30% 41% 19%
8 JING Emily - - 2% 14% 36% 35% 12%
9 TAN Helen - - - 1% 8% 35% 56%
10 FANG Sabrina - - 1% 15% 40% 35% 8%
11 CATANTAN Samantha Kyle - - - - 4% 26% 70%
12 KONG Chin-Yi - - 1% 8% 31% 42% 19%
13 QIAN Crystal - - 1% 6% 24% 42% 27%
14 LESLIE Ryanne T. - - 1% 6% 23% 42% 29%
14 GEBALA Gabrielle Grace A. - - 3% 16% 35% 34% 12%
16 KOKES Gabrielle - 1% 9% 29% 37% 21% 4%
17 SCRUGGS Lauren S. - - - - 2% 24% 74%
18 CHO Sabrina N. - - - 4% 22% 43% 30%
19 HO Brianna W. - - 3% 14% 32% 35% 15%
20 KIM Rachael - - 4% 18% 36% 31% 10%
21 WANG Ellen - - 1% 11% 33% 39% 15%
22 CHENG Evelyn - - - 1% 9% 39% 51%
22 SHEN Sophia H. - - 2% 12% 32% 38% 16%
24 LIU Jaelyn A. - - 3% 17% 38% 33% 9%
25 LEE Alina - - - 4% 23% 46% 27%
26 STAMOS Maria - - 1% 14% 37% 36% 11%
27 PETROVA Kristina - - - 5% 22% 45% 28%
28 APELIAN Katherine - - - 5% 27% 45% 22%
29 ZHENG Vivian - - 1% 9% 29% 42% 19%
30 OH Erin H. - 2% 12% 29% 34% 19% 4%
31 KOENIG Charlotte R. - - 2% 15% 39% 34% 10%
32 KNIGHT Skylar - - 2% 14% 40% 35% 9%
33 LUNG Katerina - - 4% 20% 44% 32%
34 CHEN Jessie S. - 2% 12% 32% 37% 15% 2%
35 HOOSHI Erica S. - - 1% 7% 29% 47% 16%
36 LEE Allison (Allie) - - 2% 15% 40% 39% 4%
37 JING Alexandra - - 1% 7% 33% 50% 9%
38 GOMES Rafaella T. - 2% 11% 30% 36% 18% 3%
39 ZHANG Alina C. - 1% 7% 27% 41% 22% 2%
40 CHUSID Mikayla - 2% 11% 32% 40% 15%
41 LEE Annora Y. - - 2% 12% 34% 38% 14%
42 FREEDMAN Miranda W. - 1% 9% 31% 43% 15% 1%
43 CHUSID Renata M. - - 1% 6% 24% 43% 26%
44 TALAVERA Daena - 1% 7% 24% 37% 25% 6%
45 DAVIA Daniella V. - 1% 9% 29% 37% 20% 4%
46 GRIFFIN Emma G. - - 3% 15% 34% 34% 13%
47 CASTANEDA Erika L. - 4% 20% 38% 28% 9% 1%
48 GAYDOS Sofia C. - 1% 7% 25% 37% 24% 6%
49 CHEN Jia P. - 1% 10% 38% 37% 13% 2%
50 KHOO Lauren A. - 1% 9% 29% 39% 20% 2%
51 SARTORI Taylor M. - 4% 23% 39% 26% 7% -
52 LI Rachel Y. - 5% 22% 36% 26% 8% 1%
53 KOO Rachel A. - - 5% 22% 39% 28% 6%
54 NEWHARD Zelia "Zizi" 2% 13% 33% 35% 15% 2%
55 LI Phoebe J. - 1% 7% 25% 39% 25% 3%
56 KORABLINA Aleksandra - - - 4% 20% 44% 32%
57 RENTON Samantha 1% 11% 32% 37% 17% 3% -
58 SEAL Grace (Gracie) C. - 3% 20% 39% 29% 9% 1%
59 PEVZNER Victoria - 1% 8% 27% 39% 22% 3%
60 WALKER Mayah J. - 5% 27% 38% 23% 6% 1%
61 JO Mia C. - 3% 20% 36% 29% 10% 1%
62 WU Kyra 3% 19% 38% 30% 9% 1% -
63 DE LA CRUZ Eden 1% 12% 34% 34% 15% 3% -
64 KOROL Neta - 4% 22% 39% 27% 6% -
65 BREKER Anika - - - 7% 28% 43% 21%
66 HE Fenghuan - 4% 19% 36% 29% 10% 1%
67 TORRES JIMENA - - 1% 8% 27% 40% 23%
68 MILLER Naomi E. - 2% 18% 38% 31% 10% 1%
69 TAN Kaitlyn N. - 1% 7% 27% 39% 22% 4%
70 YAROSHENKO Karina - - - 5% 24% 48% 22%
71 ZHENG Ivy - - 5% 21% 38% 29% 7%
72 SENIC Adeline - 2% 14% 34% 35% 13% 1%
73 CONWAY Josephina (JoJo) J. - - 1% 6% 26% 44% 23%
74 SUN Ruoxi - 5% 25% 40% 25% 5% -
75 KIM Katherine - 1% 6% 23% 37% 27% 7%
76 WU Renee 1% 16% 36% 32% 13% 2% -
77 EYER Hailey M. - 2% 15% 34% 33% 14% 2%
78 CHO Rebecca H. - 1% 9% 37% 37% 14% 2%
79 YU Seneca - 3% 19% 39% 30% 7% -
79 OUYANG Bridgette Z. - 2% 11% 30% 36% 19% 3%
81 KOROL Dana 10% 52% 30% 7% 1% - -
82 LUU Shanon K. 1% 16% 37% 32% 12% 2% -
83 GALAVOTTI Claire Teresa - 1% 11% 32% 37% 17% 1%
84 ZHAO Sophie L. - 3% 17% 37% 32% 10% 1%
85 PARK Rowan M. - - 7% 27% 40% 23% 3%
86 TALWALKAR Apoorva 1% 16% 38% 32% 11% 1% -
87 CHO Cameron S. - 4% 20% 34% 28% 11% 2%
88 RANDOLPH Piper 1% 9% 30% 38% 19% 4% -
89 LUO Sandra J. 11% 37% 36% 14% 3% - -
90 PANT Anisha 3% 24% 39% 26% 8% 1% -
91 HOSONO Rei W. - - 2% 14% 36% 36% 11%
92 LOCKE Savannah - 4% 18% 33% 30% 13% 2%
93 SHAW Kayla M. - 4% 23% 39% 27% 7% -
94 SOOD Ishani S. - 1% 7% 23% 37% 26% 7%
95 TAKAGI Hikaru G. - 2% 12% 29% 34% 20% 4%
96 CHENG Lydia A. 1% 10% 29% 36% 19% 4% -
97 XUE Alanna L. - 7% 29% 39% 20% 4% -
98 CHO Gracie L. - 3% 17% 37% 33% 10% 1%
99 LEE Ji Ahn 39% 42% 16% 3% - - -
100 SHITAMOTO Audrey F. 3% 21% 40% 27% 8% 1% -
101 DRAGNE Alexis D. 7% 37% 38% 15% 3% - -
102 DEBACK Greta I. - 4% 21% 40% 29% 7% -
102 SHEN Lydia - 1% 9% 30% 39% 20% 2%
104 KONG Olivia - 3% 17% 39% 30% 9% 1%
105 DUAN Konnie 2% 33% 43% 19% 3% - -
106 FERNANDES Thea 28% 43% 23% 6% 1% -
107 KOO Haley B. - - 1% 5% 22% 43% 28%
108 LAURIA Mariavittoria 24% 42% 26% 7% 1% - -
109 SABATINI Isabella Ravenne - 4% 23% 40% 26% 7% 1%
109 YIN Helen 3% 19% 42% 29% 7% 1% -
111 CHO Taylor S. 1% 9% 32% 38% 17% 3% -
112 YHIP Mikaela M. - 4% 26% 40% 24% 6% -
113 LEE Allison 37% 45% 16% 2% - - -
114 CHOI Lenna K. - 1% 10% 30% 36% 19% 4%
115 SERBAN Samantha M. - 1% 5% 20% 37% 30% 8%
116 TRAN Ava D. - 6% 29% 39% 21% 5% -
117 CHON Samantha 1% 7% 25% 37% 24% 7% 1%
118 WONG Sophia M. 3% 22% 38% 27% 9% 1% -
119 DU Hannah 1% 19% 36% 29% 12% 2% -
119 HWANG Alison 3% 38% 40% 16% 3% - -
121 TAN Clarisse 8% 30% 38% 19% 4% - -
122 DAVIS Bonnie Z. 4% 26% 48% 19% 3% - -
123 YE Eileen - 17% 41% 30% 9% 1% -
124 CHEN Chloe I. 2% 23% 40% 27% 7% 1% -
125 WU Julianna Y. 1% 10% 34% 39% 14% 2% -
126 PENG Amber L. 4% 24% 40% 24% 7% 1% -
127 CHEW Alexis T. 12% 37% 34% 14% 3% - -
128 GUERRA Sofia E. - 8% 28% 37% 21% 5% -
129 HSIUNG Samantha 18% 56% 23% 4% - - -
130 UYANIK Nerine 2% 16% 40% 31% 10% 1% -
131 YEH Marissa E. 6% 27% 39% 22% 5% - -
132 MORADI Raiyan N. 4% 27% 49% 18% 2% - -
133 PERLMAN Talia 4% 20% 38% 29% 9% 1%
134 XIANG Emma 6% 34% 39% 17% 3% - -
135 YU Lauren C. 1% 10% 31% 37% 18% 3% -
136 LIPKOVITZ Rivka 37% 44% 17% 3% - - -
137 CHANG Elizabeth 26% 47% 23% 4% - - -
138 FUNG Emma 33% 46% 18% 3% - - -
139 HAN Ashley 57% 34% 8% 1% - - -
140 ZHENG Zoe 91% 9% - - - - -
141 PATTERSON Natalia 62% 33% 5% - - - -
141 ASCHETTINO Aurora 20% 46% 28% 6% - - -
143 FUNG Vera 20% 45% 27% 7% 1% - -
143 ZAMELIS Madelyn 55% 38% 7% - - - -
145 HOBSON Ava 25% 54% 18% 2% - - -
146 OLIVEIRA Lavinia M. 18% 51% 27% 4% - - -
146 WANG Zoie Z. 13% 47% 31% 8% 1% - -
146 HAN Crystal 29% 47% 20% 3% - - -
149 WEINTRAUB Io H. 9% 54% 31% 6% 1% - -
150 SUN Emily 21% 46% 27% 5% - - -
151 SUN Chien-Yu 13% 37% 34% 13% 2% -
152 KETTELLE Molly 53% 39% 7% - - - -
153 PENG Serena 33% 47% 17% 3% - - -
154 BOLES Amanda X. 18% 53% 26% 3% - - -
155 ZHANG Eunice 8% 33% 41% 16% 2% - -
155 CABALU Alaina 70% 26% 4% - - - -
157 KO Claire 75% 23% 3% - - - -
158 LUH Mia P. 60% 34% 6% 1% - - -
158 MU Allison 64% 31% 5% - - - -
158 ZHANG Selena 54% 40% 6% - - - -
161 MEYER Claudia 64% 32% 4% - - - -
161 GRAFLUND Ashley L. 80% 19% 1% - - - -
163 CASTANEDA Keira 28% 43% 23% 5% - - -
163 WELBORN Calissa 43% 42% 14% 2% - - -
165 MORALES Paulina 85% 14% 1% - - - -
166 QUINN Anna 82% 16% 1% - - - -
167 WANG Celine S. 75% 23% 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.