binary feature 0.002549068
feature score 0.0023833419999999997
repetition feature 0.00225409
variant feature 0.0022540299999999997
amsco feature 0.002253454
feature fires 0.002251507
training data 0.00219479
binary features 0.0021707180000000003
new features 0.002094766
same features 0.002091584
additional features 0.002035657
feature 0.00200712
class classification 0.001907219
features firing 0.0018743230000000002
quadratic features 0.00187063
var features 0.00187063
cipher cipher 0.00172152
classification accuracy 0.001685031
features 0.00162877
key word 0.001582436
training type 0.001518326
different cipher 0.001515285
training examples 0.0015069469999999998
key cipher 0.001476057
training times 0.001428759
training svms 0.001419276
training procedure 0.0013870089999999998
classiﬁer training 0.0013856939999999998
type classifier 0.001366167
other set 0.001341881
linear classifier 0.0013373159999999999
data generation 0.001331825
key words 0.001316909
language model 0.001298253
possible plaintext 0.0012973659999999999
data points 0.0012968489999999999
data flow 0.0012937539999999998
cipher types 0.0012834510000000001
forest classifier 0.001280837
art classifier 0.001261763
test set 0.001259767
bion classifier 0.0012585189999999998
cipher type 0.001237326
key letter 0.0012372870000000001
cipher length 0.001218444
encryption method 0.001190558
cipher texts 0.001182872
plaintext messages 0.001158487
training 0.00114176
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random key 0.001133231
cipher con 0.001126135
american cipher 0.00112553
variant cipher 0.00110767
amsco cipher 0.001107094
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pherment method 0.001104183
cryption method 0.001101627
cipher associa 0.001101189
cipher len 0.001101189
classification 0.00109122
original plaintext 0.0010870699999999999
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multi class 0.001062247
english corpus 0.001062072
permuted plaintext 0.001047616
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decipherment process 0.0010095220000000001
classifier 9.89601E-4
frequent words 9.703380000000001E-4
bigram language 9.6415E-4
development set 9.440099999999999E-4
machine learning 9.421130000000001E-4
loss function 9.419999999999999E-4
results figure 9.27028E-4
different permutation 9.26135E-4
substitution ciphers 9.254339999999999E-4
set con 9.17771E-4
default learning 9.0043E-4
different subproblems 8.96228E-4
large english 8.78542E-4
random length 8.756179999999999E-4
general approach 8.723839999999999E-4
polynomial kernel 8.66694E-4
large number 8.62368E-4
cipher 8.6076E-4
key encipher 8.60268E-4
aca test 8.48378E-4
learning rate 8.47761E-4
homophonic substitution 8.47745E-4
method 8.4406E-4
adaptive learning 8.36047E-4
learning rates 8.36047E-4
frequency profile 8.163180000000001E-4
class 8.15999E-4
related work 8.15992E-4
unigram frequency 8.11872E-4
random forest 8.091699999999999E-4
plaintext 8.06509E-4
