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Pass-Fail: Using a Password Generator to Improve Password Strength

Despite most modern browsers providing password generator and management tools, many users do not pick long, randomly generated passwords. To build a tool that offers advice on a) strength of passwords (that goes beyond using password length) and b) how to make stronger passwords, we built an ML model. Using ~881M leaked passwords from various databases, we built a character-level password generator using an encoder-decoder model. (We also built a separate model using a database of 18M passwords.) We then validate the model against the HaveIBeenPwned (HIBP) database. Of the roughly 10,000 model-generated 5-character-long passwords, 58% match a password in the HIBP database compared to .1% of the 10,000 randomly generated passwords. As a more stringent test, we estimated the HIBP match rate for model-generated passwords that are not in the training corpus. For passwords starting with 10 of the most common characters, the match rate is about 10%.

We use the model to understand one of the correlates of a strong password---the starting character. In our data, the starting characters of passwords have a sharp skew, with about 30 characters covering about 83% of the passwords. And, understandably, passwords starting with more common characters can be guessed by the model more quickly (the correlation is 84% for five char. passwords on our data). This suggests that there is an opportunity to create passwords using less commonly used starting characters (see the distribution of first characters in our notebooks linked to above).

Our model can also be used to estimate the strength of a password. Admittedly, the job is computationally heavy. And approximate inference based on, e.g., maximum percentage matched in the first 100 tries, may be useful. For illustration, our generator can recover the password 'Password1' in ~ 1000 tries when the search space for nine-character passwords with 95 tokens is in the quadrillions.

Note:

  1. We are aware that hackers can use the model to crack passwords, but we believe the computational cost of running the model for such inference is likely too high when compared to brute force or dictionary-based methods or methods that exploit common patterns in passwords.

  2. We are also aware that if lots of people use the model to start using uncommon patterns, e.g., $ as a starting character, then over time, these patterns become more common, upending the benefits of the model. Any product building off this should account for this point. The solution for this is plausibly to keep building models based on new data

Table of Contents

Data

We created the master password database by merging data from the following leaked password databases. (Note: We are aware that the bible is merely a collection of all the words in the bible---or so it seems---and have chosen to keep it as a dictionary.) You can find more details in this notebook.

passwords_db/000webhost.txt      passwords_db/izmy.txt
passwords_db/adobe100.txt        passwords_db/Lizard-Squad.txt
passwords_db/Ashley-Madison.txt  passwords_db/md5decryptor-uk.txt
passwords_db/bible.txt           passwords_db/muslimMatch.txt
passwords_db/carders.cc.txt      passwords_db/myspace.txt
passwords_db/comb.txt            passwords_db/NordVPN.txt
passwords_db/elitehacker.txt     passwords_db/phpbb-cleaned-up.txt
passwords_db/faithwriters.txt    passwords_db/porn-unknown.txt
passwords_db/hak5.txt            passwords_db/rockyou.txt
passwords_db/honeynet2.txt       passwords_db/singles.org.txt
passwords_db/honeynet.txt        passwords_db/tuscl.txt
passwords_db/hotmail.txt         passwords_db/youporn2012.txt

After merging the above, the total count came to 881623002 passwords (881 million passwords).

We only consider passwords that are between 3 and 50 characters long. Only a tiny fraction of passwords are over 50 characters long. And the three-character lower limit eliminates many of the short words from bible, etc.

Model

The vocabulary size is 95.

Data Setup

Sequence to sequence is used to train Tensorflow GRU model.
For example: if the password is 12STEVEN
then the input to the model is 12STEVE
And the prediction label is 2STEVEN
Data is split as follows: 95% for training, 2.5% for validation, 2.5% for test.
You can find more details on how the data is split in this notebook.
Since loading all train data to memory requires more than 200+ GB RAM, we created tf records. (See this notebook for the details.)

Below is the GRU model that we used

_________________________________________________________________
Layer (type)                 Output Shape              Param #   
=================================================================
embedding_1 (Embedding)      multiple                  9216      
_________________________________________________________________
gru_1 (GRU)                  multiple                  271872    
_________________________________________________________________
dense_1 (Dense)              multiple                  24672     
=================================================================
Total params: 305,760
Trainable params: 305,760
Non-trainable params: 0
_________________________________________________________________

We use a sequence-to-sequence model.

Metrics

We used the bleu score to measure the model performance.
Below are some examples -
if all are equal

ref = [['a', 'b', 'c'], ['d','e'], ['f'], [' ']]
hyp = [['a', 'b', 'c'], ['d','e'], ['f'], [' ']]
corpus_bleu(ref, hyp, weights=[0.25])

output - 1.0
if some are equal

ref = [['a', 'b', 'c'], ['d','e'], ['f'], [' ']]
hyp = [['a', 'b', 'f'], ['d','e'], ['f'], [' ']]
corpus_bleu(ref, hyp, weights=[0.25])

output - 0.9621954581957615
if non are equal

ref = [['a', 'b', 'c'], ['d','e'], ['f'], [' ']]
hyp = [['p', 'q', 'r'], ['s','t'], ['u'], ['w']]
corpus_bleu(ref, hyp, weights=[0.25])

output - 0

The bleu score on the test dataset is 0.02
After training the model for ten epochs, the bleu score on the test dataset increased to 0.96

Validation

How quickly can we guess the password Password1 (of length 9) when we feed P to the model? The model takes 1026 attempts to find the password (compared to 315 quadrillion attempts on average using random password generation with 95 tokens)

1 - PANDOWCOM
2 - Politim12
3 - P1Z5Z36Q1
4 - Phils#312
5 - Peneme160
6 - PaLiVasda
7 - Panisabas
8 - Pedrostin
9 - PRESO514#
10 - PersiaM80
11 - PALOPER55
12 - PAGAUNECI
13 - Pom#2lu80
14 - Papa62873
15 - PONDBOOZZ
16 - PecKhouse
17 - Peec65alm
18 - POODSONEK
19 - PORNILLOS
20 - Pinoyano7
21 - Pamk30000
22 - Padololin
23 - PpA!2002C
24 - Pgc716558
25 - Pordot001
...
1024 - PENTONC13
1025 - PURPLEJAV
1026 - Password1
Model took 1026 attempts to find password - Password1

Passwords starting with each char distribution is like below. Showing top 10 char distribution in ascending order.

[('k', 0.030112092511078912),
 ('t', 0.03019875298476047),
 ('l', 0.03200024618607084),
 ('d', 0.034974911596357544),
 ('c', 0.03615092217770743),
 ('b', 0.036440602438896755),
 ('m', 0.04673549531688035),
 ('a', 0.04689793719340077),
 ('1', 0.04736622677456893),
 ('s', 0.04979685375899136)]

As we can see, passwords most frequently start with m, followed by s, 0, and so on.

In the table below,
dist - start character distribution across all passwords
rand_pred_prob - Percent of passwords found in https://haveibeenpwned.com/ when passwords are generated randomly.
model_pred_prob - Percent of passwords that were found in https://haveibeenpwned.com/ when passwords were generated using trained model. The model predictablility rate depends on start char distribution. If a start char is common, the model is able to predict more leaked passwords.

char dist rand_pred_prob model_pred_prob
94 m 0.057332 0.00 0.77
93 s 0.057103 0.00 0.76
92 0 0.055492 0.00 0.90
91 a 0.049879 0.00 0.77
90 1 0.044963 0.01 0.71
89 c 0.042993 0.02 0.75
88 b 0.042367 0.01 0.79
87 l 0.037108 0.00 0.77
86 j 0.036371 0.01 0.71
85 d 0.034617 0.01 0.72
84 t 0.034498 0.00 0.69
83 p 0.033237 0.00 0.77
82 k 0.031070 0.00 0.72
81 2 0.028482 0.00 0.75
80 r 0.028280 0.00 0.71
79 n 0.023127 0.00 0.66
78 g 0.022110 0.00 0.69
77 h 0.021496 0.00 0.71
76 f 0.020230 0.00 0.67
75 e 0.019975 0.00 0.64
74 i 0.018939 0.00 0.59
73 3 0.015904 0.00 0.77
72 4 0.015702 0.00 0.80
71 9 0.015432 0.00 0.82
70 5 0.015039 0.00 0.79
69 w 0.013814 0.00 0.52
68 8 0.012629 0.01 0.78
67 7 0.012027 0.00 0.72
66 6 0.011991 0.00 0.70
65 v 0.010075 0.00 0.63
... ... ... ... ...
29 # 0.000473 0.00 0.05
28 $ 0.000462 0.00 0.09
27 ( 0.000430 0.00 0.01
26 . 0.000373 0.00 0.07
25 - 0.000236 0.00 0.04
24 _ 0.000214 0.00 0.08
23 ~ 0.000149 0.00 0.02
22 [ 0.000148 0.00 0.00
21 < 0.000129 0.00 0.01
20 + 0.000112 0.00 0.01
19 / 0.000107 0.00 0.02
18 , 0.000104 0.00 0.00
17 ; 0.000073 0.00 0.00
16 = 0.000065 0.00 0.01
15 " 0.000065 0.00 0.02
14 ? 0.000064 0.00 0.02
13 ` 0.000055 0.00 0.03
12 & 0.000052 0.00 0.03
11 % 0.000051 0.00 0.01
10 0.000039 0.00 0.05
9 : 0.000039 0.00 0.04
8 ^ 0.000036 0.00 0.01
7 \ 0.000031 0.00 0.02
6 { 0.000028 0.00 0.00
5 ' 0.000025 0.00 0.01
4 ) 0.000024 0.00 0.01
3 ] 0.000021 0.00 0.00
2 > 0.000012 0.00 0.01
1 pipe 0.000009 0.00 0.00
0 } 0.000003 0.00 0.00

Please refer to the full notebook for the steps involved in creating the model.

Embeddings

You can use http://projector.tensorflow.org/ to visualize the embeddings.

Authors

Rajashekar Chintalapati and Gaurav Sood