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Simple Substitution Distance and Metamorphic Detection Simple Substitution Distance 1 Gayathri Shanmugam Richard M. Low Mark Stamp
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The Idea Metamorphic malware “mutates” with each infection Measuring software similarity is a possible means of detection But, how to measure similarity? o Much relevant previous work Here, a novel distance measure is considered 2 Simple Substitution Distance
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We treat each metamorphic copy as if it is an “encrypted” version of “base” virus o Where the “cipher” is a simple substitution Why simple substitution? o Easy to work with, fast algorithm to solve Why might this work? o Simple substitution “cryptanalysis” tends to yield results that match family statistics o Accounts for modifications to files similar to some common metamorphic techniques 3 Simple Substitution Distance
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Motivation Given a simple substitution ciphertext where plaintext is English… o If we cryptanalyze using English language statistics, we expect a good score o If we cryptanalyze using, say, French language statistics, we expect a not-so-good score We can obtain opcode statistics for a metamorphic family o Using simple substitution cryptanalysis, a virus of same family should score well… o …but, a benign exe should not score as well o Assuming statistics of these families differ 4 Simple Substitution Distance
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Metamorphic Techniques Many possible morphing strategies Here, briefly consider o Register swapping o Garbage code insertion o Equivalent substitution o Transposition o Formal grammar mutation At a high level --- substitution, transposition, insertion, and deletion 5 Simple Substitution Distance
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Register Swap Register swapping o E.g., replace EBX register with EAX, provided EAX not in use Very simple and used in some of first metamorphic malware Not very effective o Why not? 6 Simple Substitution Distance
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Garbage Insertion Garbage code insertion Two cases: o Dead code --- inserted, but not executed We can simply JMP over dead code o Do-nothing instructions --- executed, but has no effect on program Like NOP or ADD EAX,0 Relatively easy to implement Effective at breaking signature detection 7 Simple Substitution Distance
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Code Substitution Equivalent instruction substitution o For example, can replace SUB EAX,EAX with XOR EAX,EAX Does not need to be 1 for 1 substitution o That is, can include insertion/deletion Unlimited number of substitutions Very effective Somewhat difficult to implement 8 Simple Substitution Distance
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Transposition Transposition o Reorder instructions that have no dependency For example, MOV R1,R2ADD R3,R4 ADD R3,R4MOV R1,R2 Can be highly effective But, can be difficult to implement o Sometimes applied only to subroutines 9 Simple Substitution Distance
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Formal Grammar Mutation Formal grammar mutation View morphing engine as non- deterministic automata o Allow transitions between any symbols o Apply formal grammar rules Obtain many variants, high variation Really just a formalization of others approaches, not a separate technique 10 Simple Substitution Distance
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Previous Work Easy to prove that “good” metamorphic code is immune to signature detection o Why? But, many successes detecting hacker- produced metamorphic malware… o HMM/PHMM/machine learning o Graph-based techniques o Statistics (chi-squared, naïve Bayes) o Structural entropy o Linear algebraic techniques 11 Simple Substitution Distance
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This Research Measure similarity using “simple substitution distance” We “decrypt” suspect file using statistics from a metamorphic family o If decryption is good, we classify it as a member of the same metamorphic family o If decryption is poor, we classify it as NOT a member of the given metamorphic family 12 Simple Substitution Distance
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Simple Substitution Cipher Simple substitution is one of the oldest and simplest means of encryption A fixed key used to substitute letters o For example, Caesar’s cipher, substitute letter 3 positions ahead in alphabet o In general, any permutation can be key Simple substitution cryptanalysis? o Statistical analysis of ciphertext 13 Simple Substitution Distance
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Simple Substitution Cryptanalysis Suppose you observe the ciphertext PBFPVYFBQXZTYFPBFEQJHDXXQVAPTPQJKTOYQWIPBVWLXTOXBTFXQW AXBVCXQWAXFQJVWLEQNTOZQGGQLFXQWAKVWLXQWAEBIPBFXFQVX GTVJVWLBTPQWAEBFPBFHCVLXBQUFEVWLXGDPEQVPQGVPPBFTIXPFHXZH VFAGFOTHFEFBQUFTDHZBQPOTHXTYFTODXQHFTDPTOGHFQPBQWAQJJ TODXQHFOQPWTBDHHIXQVAPBFZQHCFWPFHPBFIPBQWKFABVYYDZBOT HPBQPQJTQOTOGHFQAPBFEQJHDXXQVAVXEBQPEFZBVFOJIWFFACFCCF HQWAUVWFLQHGFXVAFXQHFUFHILTTAVWAFFAWTEVOITDHFHFQAITIX PFHXAFQHEFZQWGFLVWPTOFFA Analyze frequency counts… Likely that ciphertext “F” represents “E” o And so on, at least for common letters 14 Simple Substitution Distance
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Simple Substitution Cryptanalysis Can even automate attack 1. Make initial guess for key using frequency counts 2. Compute oldScore 3. Modify key by swapping adjacent elements 4. Compute newScore 5. If newScore > oldScore then oldScore = newScore 6. Else unswap elements 7. Goto 3 How to compute score? o Number of dictionary words in putative plaintext? o Much better to use English digraph statistics 15 Simple Substitution Distance
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Jackobsen’s Algorithm Method on previous slide can be slow o Why? Jackobsen’s algorithm uses similar idea, but fast and efficient o Ciphertext is only decrypted once o So algorithm is (essentially) independent of length of message o Then, only matrix manipulations required 16 Simple Substitution Distance
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Jackobsen’s Algorithm: Swapping Assume plaintext is English, 26 letters Let K = k 1,k 2,k 3,…,k 26 be putative key o And let “ | ” represent “swap” Then we swap elements as follows Also, we restart this swapping schedule from the beginning whenever score improves 17 Simple Substitution Distance
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Jackobsen’s Algorithm: Swapping Minimum swaps is 26 choose 2, or 325 Maximum is unbounded Each swap requires a score computation Average number of swaps? Experimentally o Ciphertext of length 500, average 1050 swaps o Ciphertext of length 8000, avg just 630 swaps So, work depends on length of ciphertext o More ciphertext, better scores, fewer swaps 18 Simple Substitution Distance
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Jackobsen’s Algorithm: Scoring Let D = {d ij } be digraph distribution corresponding to putative key K Let E = {e ij } be digraph distribution of English language These matrices are 26 x 26 Compute score as 19 Simple Substitution Distance
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Jackobsen’s Algorithm So far, nothing fancy here o Could see all of this in a CS 265 assignment Jackobsen’s trick: Determine new D matrix from old D without decrypting How to do so? o It turns out that swapping elements of K swaps corresponding rows and columns of D See example on next slides… 20 Simple Substitution Distance
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Swapping Example To simplify, suppose 10 letter alphabet E, T, A, O, I, N, S, R, H, D Suppose you are given the ciphertext TNDEODRHISOADDRTEDOAHENSINEOAR DTTDTINDDRNEDNTTTDDISRETEEEEEAA Frequency counts given by 21 Simple Substitution Distance
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Swapping Example We choose the putative key K given here The corresponding putative plaintext is AOETRENDSHRIEENATE RIDTOHSOTRINEAAEAS OEENOTEOAAAEESHNA TTTTTII Corresponding digraph distribution D is 22 Simple Substitution Distance
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Swapping Example Suppose we swap first 2 elements of K Then decrypt using new K And compute digraph matrix for new K Previous key K New key K 23 Simple Substitution Distance
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Swapping Example Old D matrix vs new D matrix What do you notice? So what’s the point here? This is good! 24 Simple Substitution Distance
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Jackobsen’s Algorithm 25 Simple Substitution Distance
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Proposed Similarity Score Extract opcodes sequences from collection of viruses o All viruses from same metamorphic family Determine n most common opcodes o Symbol n+1 used for all “other” opcodes Use resulting digraph statistics form matrix E = {e ij } o Note that matrix is (n+1) x (n+1) 26 Simple Substitution Distance
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Scoring a File Given an executable we want to score Extract it’s opcode sequence Use opcode digraph stats to get D = {d ij } o This matrix also (n+1) x (n+1) Initial “key” K chosen to match monograph stats of virus family o Most frequent opcode in exe maps to most frequent opcode in virus family, etc. Score based on distance between D and E o “Decrypt” D and score how closely it matches E o Jackobsen’s algorithm used for “decryption” 27 Simple Substitution Distance
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Example Suppose only 5 common opcodes in family viruses (in descending frequency) Extract following sequence from an exe Initial “key” is And “decrypt is 28 Simple Substitution Distance
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Example Given “decrypt” Form D matrix After swap… o And so on… 29 Simple Substitution Distance
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Scoring Algorithm 30 Simple Substitution Distance
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Quantifying Success Consider these 2 scatterplots of scores Which is better (and why)? 31 Simple Substitution Distance
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ROC Curves Plot true-positive vs false positive o As “threshold” varies Curve nearer 45-degree line is bad Curve nearer upper-left is good 32 Simple Substitution Distance
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ROC Curves Use ROC curves to quantify success Area under the ROC curve (AUC) o Probability that randomly chosen positive instance scores higher than a randomly chosen negative instance AUC of 1.0 implies ideal detection AUC of 0.5 means classification is no better than flipping a coin 33 Simple Substitution Distance
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Parameter Selection Tested the following parameters o Opcode matrix size o Scoring function o Normalization o Swapping strategy None significant, except matrix size o So we only give results for matrix size here 34 Simple Substitution Distance
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Opcode Matrix Size Obtained following results So, ironically, we use 26 x 26 matrix 35 Simple Substitution Distance
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Test Data Tested the following metamorphic families o G2 --- known to be weak o NGVCK --- highly metamorphic o MWOR --- highly metamorphic and stealthy MWOR “padding ratios” of 0.5 to 4.0 For G2 and NGVCK o 50 files tested, cygwin utilities for benign files For each MWOR padding ratio o 100 files tested, Linux utilities for benign files 5-fold cross validation in each experiment 36 Simple Substitution Distance
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NGVCK and G2 Graphs 37 Simple Substitution Distance
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MWOR Score Graphs 38 Simple Substitution Distance
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MWOR ROC Curves 39 Simple Substitution Distance
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MWOR AUC Statistics 40 Simple Substitution Distance
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Efficiency 41 Simple Substitution Distance
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Conclusions + Simple substitution score, good results for challenging metamorphic viruses + Scoring is fast and efficient + Applicable to other types of malware - Requires opcodes 42 Simple Substitution Distance
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References G. Shanmugam, R.M. Low, and M. Stamp, Simple substitution distance and metamorphic detection, Journal of Computer Virology and Hacking Techniques, 9(3):159-170, 2013Simple substitution distance and metamorphic detection 43 Simple Substitution Distance
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