X-Git-Url: https://git.njae.me.uk/?a=blobdiff_plain;f=caesar_break_parameter_trials.csv;h=37e60fb26903064644413deaa65da8d7d8b91102;hb=1c65dba2a525fd559fc326cbd9fc2cde4441c9d5;hp=df9b836ebdfec843d0f42cb319729dfd1a45836c;hpb=26d9d2228e47a6ff8b8696d37c0a8d6d6b906c67;p=cipher-tools.git diff --git a/caesar_break_parameter_trials.csv b/caesar_break_parameter_trials.csv index df9b836..37e60fb 100644 --- a/caesar_break_parameter_trials.csv +++ b/caesar_break_parameter_trials.csv @@ -1,144 +1,127 @@ -l1, normalised_english_counts, normalise, 3000, 0.9616 -l1, normalised_english_counts, normalise, 1000, 0.9562 -l1, normalised_english_counts, normalise, 300, 0.9598 -l1, normalised_english_counts, normalise, 100, 0.9622 -l1, normalised_english_counts, normalise, 50, 0.9584 -l1, normalised_english_counts, normalise, 30, 0.953 -l1, normalised_english_counts, normalise, 20, 0.917 -l1, normalised_english_counts, normalise, 10, 0.7328 -l1, normalised_english_counts, normalise, 5, 0.4394 -l1, 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