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MINISTRY OF EDUCATION AND TRAINING VIETNAM ACADEMY OF SCIENCE AND TECHNOLOGY GRADUATE UNIVERSITY OF SCIENCE AND TECHNOLOGY NGUYEN VAN TRUONG IMPROVING SOME ARTIFICIAL IMMUNE ALGORITHMS FOR NETWORK INTRUSION DETECTION Major: Mathematical foundations for Informatics Code: 62 46 01 10 SUMMARY OF THE DOCTORAL THESIS OF MATHEMATICS Hanoi – 2019 Thesis is completed at: Graduate University of Science and Technology Vietnam Academy of Science and Technology Supervisors: Assoc Prof., Dr Nguyen Xuan Hoai Assoc Prof., Dr Luong Chi Mai Review 1: Review 2: Review 3: The thesis will be defended, meeting at: Graduate University of Science and Technology - Vietnam Academy of Science and Technology At: Thesis can be found at the library: - National Library of Vietnam - Library of Graduate University Of Science And Technology INTRODUCTION Motivation Internet users and computer networks are suffering from rapid increase in number of attacks In order to keep them safe, there is a need for effective security monitoring systems, such as Intrusion Detection Systems (IDS) However, intrusion detection has to face a number of different problems such as huge network traffic volumes, highly imbalanced data distribution, the difficulty to realize decision boundaries between normal and abnormal behavior, and a requirement for continuous adaptation to a constantly changing environment As a result, many researchers have attempted to use different type of approaches to build reliable intrusion detection system One of the promising computational intelligence methods for intrusion detection that have emerged recently are artificial immune systems (AIS) inspired by the biological immune system Negative selection algorithm (NSA) of AIS, is widely used for intrusion detection systems (IDS) Despite its successful application, NSA has some weaknesses: 1-High false positive rate and/or false negative rate, 2-High training and/or testing time, 3-Exponential relationship between the size of the training data and the number of detectors possibly generated for testing, 4-Changeable definitions of ”normal data” and ”abnormal data” in dynamic network environment To overcome these limitations, trends of recent works are to concentrate on complex structure of immune detectors, matching methods and hybrid NSAs Objectives Since data representation is one of the factors that affect the training and testing time, a compact and complete detector generation algorithm is investigated The thesis investigates optimal algorithms to generate detector set in AIS They help to reduce both training time and detecting time of AIS-based IDSs Also, it is regarded to propose and investigate an AIS-based IDS that can promptly detect attacks, either if they are known or never seen before The proposed system makes use of AIS with statistics as analysis methods and flow-based network traffic as data source Problem statements Since the NSA has four main limitations as listed in the first section, this thesis concentrates on three problems: The first problem is to find compact representations of data Objectives of this problem’s solution is not only to minimize memory storage but also to reduce testing time The second problem is to propose algorithms that can reduce training time and testing time in compared with all existing related algorithms The third problem is to improve detection performance with respect to reducing false alarm rates while keeping detection rate and accuracy rate as high as possible It is impossible to find an optimal algorithm that can reduce time and memory complexities with best detection performance These aspects are always in conflict with each other Thus, in each chapter, we will propose algorithms to solve each problem quite independently The intrusion detection problem mentioned in this thesis can be informally stated as: Given a finite set S of network flows which labeled with self (normal) or nonself (abnormal) The objective is to build classifying models on S that can label an unlabeled network flow s Outline of thesis Chapter introduces the background knowledge necessary to discuss the algorithms proposed in following chapters In Chapter 2, a combination of selection algorithms is presented The technique reduces detectors storage generated in training phase Testing time, an important measurement in IDS, will also be reduced as a direct consequence of a smaller memory complexity Tree structure is used to improve time and memory complexities A complete and nonredundant detector set is necessary to archive acceptable self and nonself coverage of classifiers A selection algorithm to generate this type of detectors set is investigated in Chapter Chapter includes two selection algorithms for fast training phase The optimal algorithms can generate a detectors set in linear time with respect to size of training data In term of detection time, the first algorithm and the second one is linear and polynomial, respectively Chapter mainly introduces a hybrid approach of positive selection algorithm with statistics Frequencies of self and nonself data contained in leaves of tree-based detectors play an important role in improving performance of the proposed algorithms The hybrid approach came as a new positive selection algorithm for two-class classification that can be trained with samples from both self and nonself data types Chapter BACKGROUND 1.1 Human immune system Our human immune system has a multi-layered protection architecture, including physical barriers, physiological barriers, an innate immune system, and an adaptive immune system The adaptive immune system is capable of adaptively recognizing specific types of pathogens, and memorizing them for accelerated future responses It is the main inspiration for AISs 1.2 Selection algorithms Negative selection approaches are based on self-nonself discrimination in biology system This property makes it attractive for computer and network security researchers A survey show that in six year 2008-2013, NSA predominate all the other models of AIS in term of published papers in both network security and anomaly detection 1.2.1 Negative Selection Algorithms A typical NSA comprises of two phases: detector generation and detection In the detector generation phase, the detector candidates are generated by some random processes and censored by matching them against given self samples taken from a set S (representing the system components) The candidates that match any element of S are eliminated and the rest are kept and stored in the detector set D 1.2.2 Positive Selection Algorithms A PSA contains two phases: detector generation and detection In the detector generation phase, the detector candidates are generated by some random processes and matched against the given self sample set S The candidates that not match any element in S are eliminated and the rest are kept and stored in the detector set D In the detection phase, the collection of detectors are used to distinguish self from non-self If incoming data instance matches any detector, it is claimed as self 1.3 Basic terms and definitions 1.3.1 Strings, substrings and languages An alphabet Σ is nonempty and finite set of symbols A string s ∈ Σ∗ is a sequence of symbols from Σ, and its length is denoted by |s| A string is called empty string if its length equals Given an index i ∈ {1, , |s|}, then s[i] is the symbol at position i in s Given two indices i and j, whenever j ≥ i, then s[i j] is the substring of s with length j − i + that starts at position i and whenever j < i, then s[i j] is the empty string If i = 1, then s[i j] is a prefix of s and, if j = |s|, then s[i j] is a suffix of s For a proper prefix or suffix s of s, we have in addition |s | < |s| Given a string s ∈ Σ , another string d ∈ Σr with ≤ r ≤ , and an index i ∈ {1, , − r + 1}, we say that d occurs in s at position i if s[i i + r − 1] = d Moreover, concatenation of two strings s and s is s + s A set of strings S ⊆ Σ∗ is called a language For two indices i and j, we define S[i j] = {s[i j]|s ∈ S} 1.3.2 Prefix trees, prefix DAGs A prefix tree T is a rooted directed tree with edge labels from Σ where for all c ∈ Σ, every node has at most one outgoing edge labeled with c For a string s, we write s ∈ T if there is a path from the root of T to a leaf such that s is the concatenation of the labels on this path The language L(T ) described by T is defined as the set of all strings that have a nonempty prefix s ∈ T Trees for self dataset and nonself dataset are called positive trees and negative trees, respectively A prefix DAG D is a directed acyclic graph with edge labels from Σ, where again for all c ∈ Σ, every node has at most one outgoing edge labeled with c Similar to prefix trees, the terms root and leaf used to refer to a node without incoming and outgoing edges, respectively We write s ∈ D if there is a path from a root node to a leaf node in D that is labeled by s Given n ∈ D, the language L(D, n) contains all strings that have a nonempty prefix that labels a path from n to some leaf Moreover, we define L(D) = ∪n is a root of D L(D, n) A prefix DAG can be turned into a finite automaton to decide the membership of strings in languages 1.3.3 Detectors Given an alphabet Σ is nonempty and finite set of symbols, positive and negative r-chunk detectors, r-contiguous detectors, rcbvl-detectors could be defined as follows: Definition 1.1 Given a self set S ⊆ Σ , a tuple (d, i) of a string d ∈ Σr , where r ≤ , and an index i ∈ {1, , − r + 1} is a positive r-chunk detector if there exists a s ∈ S such that d occurs in s Definition 1.2 Given a self set S ⊆ Σ , a tuple (d, i) of a string d ∈ Σr , r ≤ , and an index i ∈ {1, , − r + 1} is a negative r-chunk detector if d does not occurs any s ∈ S Example 1.1 Let = 6, r = Given a set of five self strings S = {s1 = 010101, s2 = 111010, s3 = 101101, s4 = 100011, s5 = 010111} The set of some positive r-chunk detectors is {(010,1), (111,1), (101,2), (110,2), (010,3), (101,3), (101,4), (010,4), (111,4))} The set of some negative r-chunk detectors is {(000,1), (001,1), (011,1), (001,2), (010,2), (100,2), (000,3), (100,3), (000,4), (001,4), (100,4)} Definition 1.3 Given a self set S ⊆ Σ , a string d ∈ Σ is a r-contiguous detector if d[i, , i+ r − 1] does not occurs any s ∈ S for all i ∈ {1, , − r + 1} Example 1.2 Let = 5, r = Given a set of self strings S = {s1 = 01111, s2 = 00111, s3 = 10000, s4 = 10001, s5 = 10010, s6 = 10110, s7 = 11111} The set of all 3-contiguous detectors is {01011, 11011} We also use the following notations: • Dpi = {(d, i)|(d, i) is a positive r-chunk detector} is set of all positive r-chunk detectors at position i, i = 1, , − r + • Dni = {(d, i)|(d, i) is a negative r-chunk detector} is set of all negative r-chunk detectors at position i, i = 1, , − r + −r+1 • CHU N Kp (S, r) = ∪i=1 Dpi is set of all positive r-chunk detectors −r+1 • CHU N K(S, r) = ∪i=1 Dni is set of all negative r-chunk detectors • CONT(S, r) is the set of all r-contiguous detectors that not match any string in S • For a given detectors set X, L(X) is the set of all nonself strings detected by X We also say that Σ \ L(X) is the set of all self strings detected by X Definition 1.4 Given a self set S ⊆ Σ A triple (d, i, j) of a string d ∈ Σk , ≤ k ≤ , an index i ∈ {1, , − r + 1} and an index j ∈ {i, , − r + 1} is called a negative detector under rcbvl matching rule if d does not occur in any s, s ∈ S To combine PSA and NSA in a unified framework, we have to change the original semantic of positive selection in the detection phase as follows Definition 1.5 If new instance matches − r + positive r-chunk detectors (dij , i), i = 1, , − r + 1, it is claimed as self, otherwise it is claimed as nonself With this new detection semantic, the following proposition on the equivalence of detection coverage of r-chunk type PSA and NSA could be stated Theorem 1.1 (Detection Coverage) The detection coverage of positive and negative selection algorithms coincide L(CHU N Kp (S, r)) = L(CHU N K(S, r)) 1.3.4 Ring representation of data With reference to string-based detectors set, a simple technique for this approach is to concatenate each string representing a detector with its fist k symbols Each new linear string is a ring representation of its original binary one Given a set of strings S ⊂ Σ , a set Sr ⊂ Σ +r−1 includes ring representations of all strings in S by concatenating each string s ∈ S with its fist r − symbols We can easily apply the idea of ring strings for other data representations in AIS One way to this, for instance, is to create ring representations of other structures such as trees, and automata, from set Sr instead of S as usual 1.3.5 Frequency trees Given a set D of length-equaled strings, a tree T on D, noted TD , is a rooted directed tree with edge labels from Σ where for all c ∈ Σ, every node has at most one outgoing edge labeled with c For a string s, we write s ∈ T if there is a path from the root of T to a leaf such that s is the concatenation of the labels on this path Each leaf is associated with an integer number, that is frequency of string s ∈ D and s is the concatenation of the labels on the path ending by this leaf We also use two concepts: self trees and nonself trees to present r-chunk detectors set for normal dataset and abnormal dataset, respectively 1.4 Datasets We only concentrate on flow-based NIDSs because: - It can detect some special attacks more efficient and faster than payload based one, since lesser information is needed to be analyzed; - Flow-based anomaly detection methods process only packet headers and reduce data and processing time for high-speed detection on large networks It can solve the scalability problem in condition of increasing network usage and load - Flow-based NIDSs decrease privacy issues in comparison with packet-based ones because of the absence of payload The DARPA-Lincoln datasets: The DARPA-Lincoln datasets were collected by MITs Lincoln laboratory with the purpose of evaluating the performance of different intrusion detection methodologies UT datasets: This data set was captured by monitoring a honeypot hosted in the University of Twente network The dataset has three categories: malicious traffic, unknown traffic and side-effect traffic Each flow in the datasets has 12 fields Netflow datasets: This dataset focuses only on flows to a specific port and a IP address which receives the most number of attacks It contains all 129,571 traffics (including attacks) to and from victims Chapter COMBINATION OF NEGATIVE SELECTION AND POSITIVE SELECTION 2.1 New Positive-Negative Selection Algorithm Our algorithm first constructs − r + binary trees (called positive trees) corresponding to − r + positive r-chunk detector set Dpi , i = 1, , − r + Then, all complete subtrees of these trees are removed to achieve a compact representation of the positive r-chunk detector set while maintaining the detection coverage Finally, for every ith positive trees, we decide whether or not it should be converted to the negative tree, which covers the negative r-chunk detector set Dni The decision depends on which tree is more compact When this process is done, we have − r + compact binary trees that some of them represent positive r-chunk detectors and the others represent negative ones The r-chunk matching rule on binary trees is implemented as follows: a given sample s matches the positive (negative) tree ith if s[i i + k] is a path from the root to a leaf, i = 1, , − r + 1, k < r The detection phase can be conducted by traveling the compact binary trees iteratively one by one: a sample s is claimed as non-self if it matches a negative tree or it does not match all positive trees, otherwise it is considered as self From the description of DetectorGeneration, it is trivial to show that it takes |S|( − r + 1).r steps to generate all necessary trees (detector generation time complexity) and ( − r + 1).r steps to verify a cell string as self or non-self in the worst case (worse-case detection time complexity) These time complexities are similar to the state-of-the-art NSAs (PSAs) Theorem 2.1 Given a self set S and an integer , procedure DetectorGeneration produces the detector (binary) tree set that have at most total ( − r + 1).2r−2 less number of nodes in comparison to the detector tree set created by a PSA or NSA only, where r ∈ {2, , − r + 1} Algorithm 2.1 Detector Generation Algorithm 1: procedure DetectorGeneration(S, r, T ) Input: A set of self strings S ⊆ Σ , a matching threshold r ∈ {1, , } Output: A set T of − r + prefix trees presenting all r-chunk detectors 2: T =∅ 3: for i = 1, , − r + 4: create an empty prefix tree Ti 5: for all s ∈ S 6: insert every s[i i + r − 1] into Ti 7: for all internal node n ∈ Ti 8: if n is root of complete binary subtree then 9: delete this subtree 10: if (number of leaves of Ti ) > (number of nodes of Ti that have only one child) then 11: for all internal node ∈ Ti 12: if it has only one child then 13: if the child is a leaf then 14: delete the child 15: create the other child for it 16: mark Ti as a negative tree 17: T = T ∪ {Ti } Algorithm 2.2 Positive-Negative Selection Algorithm 1: procedure PNSA(T , r, s) Input: A set T of − r + prefix trees presenting all r-chunk detectors, a matching threshold r ∈ {1, , }, an unlabeled string s ∈ Σ Output: A label of s (as self or nonself) 2: f lag = true A temporary boolean variable 3: i=1 4: while (i ≤ − r + 1) and (f lag = true) 5: if (Ti is positive tree) and (s ∈ / Ti ) then 6: f lag = false 7: if (Ti is negative tree) and (s ∈ Ti ) then 8: f lag = false 9: i=i+1 10: if f lag = false then 11: output s is nonself 12: else 13: output s is self 2.2 Experiments Table 2.1 shows the results on detector memory storage and detection time of PNSA compared to one of the popular single NSAs on some combinations of S, and r We have conducted another experiment by choosing = 40, |S| = 20,000 (S is the set of randomly generated binary strings of length ) and varying r (from 15 to 40) Then, −r +1 trees were created using single NSA and other − r + compact trees were created using PNSA Next, both detector sets were used to detect every s ∈ S Next experiment is conducted on Netflow dataset Table 2.2 10 Chapter GENERATION OF COMPACT DETECTOR SET 3.1 New negative selection algorithm Given a non-empty set S of self strings of length , and an integer r ∈ {1, , − r + 1}, this section presents a new NSA bases on rcbvl matching rule Some prefix trees are first used to generate perfect detectors set from S and then this set is used to distinguish if a new sample as self or non-self Algorithm summarizes the first phase of new NSA From the description of the algorithm, it takes |S|.( − r + 1).r steps to generate ( − r + 1) prefix trees and |D|.( − r + 1).2r steps to generate perfect detector set D Example 3.1 Given , r and the set of self strings S as in Example 1.1, S = {s1 = 010101, s2 = 111010, s3 = 101101, s4 = 100011, s5 = 010111} Some steps in the Algorithm generating a perfect detector set {(0001,1,2), (00100,1,4), (100,4,4), (011110,1,4), (11000,1,3)} are: Set D is first created as (00,1,1), (011,1,1), (110,1,1) Then the for loop (lines 13-29) calculates D and D1 as following: For i = 2: D = (0001,1,2); (0010,1,2); (0111,1,2); (1100,1,2) and D1 = ∅ For i = 3: D = (00100,1,3); (01111,1,3); (11000,1,3) and D1 = (0001,1,2) For i = 4: D = (00100,1,4); (011110,1,4) and D1 = (0001,1,2); (11000,1,3); (100,4,4) The final step, D = D D1 in line 30, generates the perfect detector set {(0001,1,2), (00100,1,4), (100,4,4), (011110,1,4), (11000,1,3)} To detect if a given string s is self or non-self, we simply check our rcbvl matching rule on s against every detector in D If it is the case, output s is nonself, otherwise s is self 3.2 Experiments The flow-based NetFlow is used for experiment A randomly created dataset is used for experiment Flows in NetFlow are converted into binary strings by two steps The first step is to map all features to binary string features After this step, a total string features are constructed for both normal data and anomalous one The second step is to concatenate 11 Algorithm 3.1 Algorithm to generate perfect rcbvl detector set 1: procedure GenerationDetectors(S, , r, D) 2: for i = 1, , − r + Create an empty prefix tree Ti 3: for all s ∈ S 4: for i = 1, , − r + 5: insert every s[i i + r − 1] into Ti 6: for i = 1, , − r + 7: for all non-leaf node n ∈ Ti and all σ ∈ Σ 8: if no edge with label σ starts at n then 9: create a new leaf n and an edge (n, n ) labeled with σ 10: delete every node n ∈ Ti from which none of the newly created leaves is reachable 11: D1 = ∅ 12: D = { (s, 1, 1)|s ∈ T1 } 13: for i = 2, , − r + 14: D2 = ∅ 15: for all (s, k, j) ∈ D 16: if there exists a s ∈ Ti where s[i − k + |s|] is prefix of it then 17: D2 = D2 {(s + s [|s| − j + k |s |], k, i)} 18: delete every node n ∈ Ti from which only nodes in the s is reachable 19: for all s ∈ Ti where s[i − k + |s|] is prefix of it 20: if |s| − i + k < r then 21: D2 = D2 {(s[|s|] + s , i − 1, i)} 22: else 23: D2 = D2 {(s , i, i)} 24: delete every node n ∈ Ti from which only nodes in the s is reachable 25: else 26: D1 = D1 {(s, k, j)} 27: for all s ∈ Ti 28: D2 = D2 {(s , i, i)} 29: D = D2 30: D = D D1 12 the binary string features for every flows After this step, dataset contains binary strings with their length of 49 The distributions of training and testing datasets as well as parameters r, for experiments are described in Table 3.1 Table 3.1: Data and parameters distribution for experiments and results comparison r Train Test 49 10 119,571 10,000 49 79,571 50,000 30 12 30 14 25,000 40,000 25,000 10,000 Size (in r-chunk Case 206,810 31,672 Case 367,092 2,324,056 bits) rcbvl Time (in minutes) r-chunk rcbvl 42,704 8,096 0.8 0.2 0.18 79,222 392,815 4.1 8.65 0.75 1.4 Results in Table 3.1 show that our proposed algorithm reduce both size (bits) of detectors and time to classify testing dataset in comparison with that of best algorithm proposed in 2004 13 Chapter FAST SELECTION ALGORITHMS 4.1 A fast negative selection algorithm based on r-chunk detector Table 4.1 shows the comparison of our results with the runtimes of previously published r-chunk detector-based algorithms All runtimes for training phase and classification phase are given for a binary alphabet (|Σ| = 2) since not all algorithms are applicable to arbitrary alphabets The parameter K = min{|S[i i+r−1]|, i = 1, , −r+1} The parameter |D|, the desired number of detectors, is only applicable to algorithms that generate detectors explicitly Our algorithm and algorithm in by Textor produce the results that would be obtained with the maximal number of generated detectors We proposed a NSA that produces a substantial performance improvement in training phase compared to the most effective published NSA by Textor Table 4.1: Comparison of our results with the runtimes of previously published algorithms Matching rules r-chunk r-contiguous Algorithms Training r Stibor et al (2 + |S|)( − r + 1) Elberfeld, Textor r2 |S|( − r) Elberfeld, Textor |S| r Present thesis |S| D’haeseleer et al (linear) (2r + |S|)( − r) D’haeseleer et al (greedy) 2r |S|( − r) Wierzcho´ n 2r (|D|( − r) + |S|) Elberfeld, Textor (2009) |S|3 r3 Elberfeld, Textor (2011) |S| r Present thesis |S| + (2r − K) Classification |D| |S| r |D| |D| |D| |S|2 r3 r We use the following notations: An array Q, where Q[s][c] is a pointer used for creating new nodes in the tree, s ∈ Σr−1 , and c ∈ Σ; An array P, where P [i] is a structure of two fields, a pointer P[i].end and a string P[i].str ∈ Σr−1 Algorithm 4.3 summarizes the overall of proposed Chunk-NSA In the algorithm, we use a self set S, an integer r ∈ {1, , − r + 1}, a cell string s to be detected, a prefix DAG G 14 Algorithm 4.1 To generate positive r-chunk detectors set 1: procedure PositiveR-chunkDetector(S, r, G) Input: A set of self strings S ⊆ Σ , a matching threshold r ∈ {1, , } Output: A prefix DAG G presenting positive r-chunk detectors set 2: G=∅ 3: for i = 1, , |S| 4: insert si [1 r] into G and assign P [i].end to the leaf node in path s[1 r] 5: P [i].str = s[2 r] 6: for i = r + 1, , 7: for j = 1, , |S| 8: if Q[P [j].str][sj [i]] = N U LL then 9: Q[P [j].str][sj [i]] = new() 10: for j = 1, , |S| 11: p = P [j].end 12: for c ∈ Σ 13: if (Q[P [j].str][c] = N U LL)&&(edge starts from p with label c does not exist) then 14: create an edge starts from p with label c to Q[P [j].str][c] 15: P [j].end = end node of the edge starts from p with label sj [i] 16: for j = 1, , |S| 17: Q[P [j].str][sj [i]] = N U LL 18: P [j].str = P [j].str[2 r − 1] + sj [i] Chunk-NSA will detect s as self or nonself Theorem 4.1 Given any S ⊆ Σ , s ∈ Σ and r ∈ {1, , }, algorithm Chunk-NSA constructs an automaton M with L(M ) ∩ Σ = L(CHU N K(S, r)) in time O(|S| .|Σ|) and checks if s ∈ L(M ) in time O( ) 4.2 A fast negative selection algorithm based on r-contiguous detector Two arrays P and Q are used in this section as the same meaning in the previous section Besides, we use two set P1 and P2 of pointers for chunk detectors They swap their roles at the end of each step Theorem 4.2 There exists an algorithm that, given any S ⊆ Σ and r ∈ {1, , }, constructs a finite automaton M with L(M ) ∩ Σ = CON T (S, r) in time O(|S| .|Σ| + (Σr − K) ), where K= min{|S[i i + r − 1]|, i = 1, , − r + 1} 4.3 Experiments In our experiments, we use the NetFlow and a random datasets for experiment and experiment 2, respectively In Table 4.2, the runtime of NSA by Textor (2011) on experiment and experiment are in columns a and c, respectively Also, the runtime of proposed Chunk-NSA on experiment and experiment are in columns b and d, respectively 15 Algorithm 4.2 To generate negative r-chunk detectors set 1: procedure NegativeR-chunkDetector(S, r, G) Input: A set of self strings S ⊆ Σ , a matching threshold r ∈ {1, , } Output: A prefix DAG G presenting negative r-chunk detectors set 2: PositiveR-chunkDetector(S, r, G) 3: create a special node n 4: for each non-leaf node n ∈ G 5: for c ∈ Σ 6: if no edge with label c starts at n then 7: create new edge (n, n ) labeled with c 8: for each node n ∈ G 9: if n is not reachable to n then 10: delete n Algorithm 4.3 A fast r-chunk detector-based NSA 1: procedure Chunk-NSA(s, S, r, G, M ) Input: A set of self strings S ⊆ Σ , an unlabeled string s ∈ Σ , a matching threshold r ∈ {1, , } Output: A prefix DAG G presenting negative r-chunk detectors set, an automaton M , a label of s (self or nonself) 2: NegativeR-chunkDetector(S, r, G) 3: turn G into an automaton M 4: if s ∈ L(M ) then 5: output s is nonself 6: else 7: output s is self Table 4.2: Comparison of Chunk-NSA with r-chunk detector-based NSA r 10 11 12 13 14 15 16 17 18 19 20 Experiment a b a/b 1,330 454 2.9 1,395 439 3.2 1,564 454 3.4 1,767 435 4.1 1,771 418 4.2 2,092 486 4.3 1,985 437 4.5 2,071 391 5.3 2,249 410 5.5 2,345 375 6.3 2,859 359 7.0 Experiment c d c/d 1,490 482 3.1 1,633 472 3.5 637 360 4.5 2,134 453 4.7 2,276 451 5.0 2,793 450 6.2 3,086 365 8.5 4,079 427 9.6 4,509 422 10.7 5,312 470 11.3 6,796 437 15.6 16 Algorithm 4.4 Algorithm to generate negative r-contiguous detectors set 1: procedure Cont-NSA(S, r, G) Input: A set of self strings S ⊆ Σ , a matching threshold r ∈ {1, , } Output: An automaton G presenting negative r-contiguous detectors set 2: G = P1 = ∅ 3: for s ∈ Σr \ S[1 r] 4: insert s into G and create p.end that points to the leaf node in path s 5: p.str = s[2 r] 6: P1 = P1 ∪ {p} 7: for i = r + 1, , 8: for j = 1, , |S| 9: if Q[P [j].str][sj [i]] = N U LL then 10: Q[P [j].str][sj [i]] = new() 11: P2 = ∅ 12: for each p ∈ P1 13: for c ∈ Σ 14: if (Q[p.str][c] = N U LL) then 15: Q[p.str][c] = new() 16: p.str = p.str[2 r − 1] + c 17: p.end = Q[p.str][c] 18: P2 = P2 ∪ {p} 19: else 20: if Q[p.str][c] is newly created in this inner for loop then 21: p.str = p.str[2 r − 1] + c 22: p.end = Q[p.str][c] 23: P2 = P2 ∪ {p} 24: for j = 1, , |S| 25: Q[P [j].str][sj [i]] = N U LL 26: P [j].str = P [j].str[2 r − 1] + sj [i] 27: for each p ∈ P1 28: for c ∈ Σ 29: Q[p.str][c] = N U LL 30: P1 = P2 31: for each node n ∈ G 32: if n is not reachable to a leaf node ∈ P1 then 33: delete n 34: turn G into an automaton 17 Chapter APPLYING HYBRID ARTIFICIAL IMMUNE SYSTEM FOR NETWORK SECURITY 5.1 Hybrid Positive Selection Algorithm With Chunk Detectors Given , r, a normal data set N ⊂ Σ , an abnormal data set A ⊂ Σ Algorithm 4.5 and Algorithm 4.6 create positive trees and negative trees, respectively A new data instance s ∈ Σ is detected as self or nonself by Algorithm 4.7 Algorithm 4.5 Algorithm to generate positive trees 1: procedure SelfTreesGeneration(N , r, TN ) Input: A set of self strings N ⊆ Σ , a matching threshold r ∈ {1, , } Output: A set TN of − r + prefix trees presenting positive trees 2: for i = 1, , 3: Create an empty tree TNi 4: for all s ∈ Nr 5: for i = 1, , 6: insert every s[i i + r − 1] into TNi Algorithm 4.6 Algorithm to generate negative trees 1: procedure NonselfTreesGeneration(A, r, TA ) Input: A set of nonself strings A ⊆ Σ , a matching threshold r ∈ {1, , } Output: A set TA of − r + prefix trees presenting negative trees 2: for i = 1, , 3: Create an empty tree TAi 4: for all s ∈ Ar 5: for i = 1, , 6: insert every s[i i + r − 1] into TAi In Algorithm 4.7, Leaf(s, T ) is a function to return frequency value corresponding with a string s ∈ Σr , this value is contained in the leaf of the path labeled by s in tree T Parameters d1 and d2 sum up frequencies of s in positive trees TN and negative trees TA , respectively Four other parameters t1 , t2 , t3 , t4 are also used in PSA2 to control its performance 18 Algorithm 4.7 Algorithm PSA2 to detect if a new data instance s ∈ Σ is self or nonself 1: procedure PSA2(N , A, s, r, TN , TA ) Input: A set of nonself strings N ⊆ Σ , a set of self strings A ⊆ Σ , an unlabeled string s ∈ Σ , a matching threshold r ∈ {1, , } Output: A set TA of − r + prefix trees presenting negative trees, a set TN of − r + prefix trees presenting positive trees, a label of s (self or nonself) 2: SelfTreesGeneration(N , r, TN ) 3: NonselfTreesGeneration(A, r, TA ) 4: d1 = d2 = d3 = 5: Create a string sr as ring representation of the string s 6: for i = 1, , 7: s = sr [i i + r − 1] 8: if s ∈ / TNi then 9: d1 = d1 + 10: if s ∈ / TAi then 11: d2 = d2 + 12: if Leaf(s , TNi ) < Leaf(s , TAi ).t1 then 13: d3 = d3 + 14: if d1 > t2 then output s is nonself 15: else if d2 > t3 then output s is self 16: else if d3 t4 > then output s is nonself 17: else output s is self 5.2 Experiment 5.2.1 Datasets We use two popular flow-based datasets: NetFlow and TU Similar to the previous studies, we select the same features from the NetFlow dataset as the input of experiments 1, 5, 6, and 7; features from the NetFlow dataset as the input of experiments and 3; features from the UT dataset as the input of experiment Table 4.3: Features for NIDS Experiment Dataset Feature NetFlow Packets, Octets, Duration, Flags 2, NetFlow Packets, Octets, Duration, Scr port, Dst port, Flags, IP protocol UT Packets, Octets, Duration, Flags 5, 6, NetFlow Packets, Octets, Duration, Flags 5.2.2 Data preprocessing The preprocessing for the features of training dataset is composed of two steps The first step is to map all features to binary string features After this step, a total string features are constructed for both normal data and anomalous one The second step is to concatenate the binary string features for every flows After this step, training dataset contains equaled-length binary strings For testing dataset, each feature will be convert to a binary string using the 19 map of training data If a feature value is not in range of corresponding training feature range, its binary form will be selected randomly Example 4.1 Given a training dataset contain numerical two-feature flows S = {N, A}, where set of normal data N = {n1 = (1; 8); n2 = (0.5; 6)} and anomalous data A = {a1 = (1; 9); a2 = (1; 6), a3 = (0.5; 9)} The ranges of the first feature and the second one are {0.5; 1} and {6; 8; 9}, respectively Therefore, we can use one bit (two bits) to encode the first (the second) feature A map of the numeric ranges {0.5; 1} and {6; 8; 9} can be binary string ranges {0; 1} and {00; 01; 10}, respectively Finally, the training dataset contains strings of length 3, S = {N, A}, where N = {n1 = 101; n2 = 000} and A = {a1 = 110; a2 = 100, a3 = 010} Assuming a flow s = (2; 8) is in testing dataset The first feature (2 ∈ / {0.5; 1}) is randomly encoded by or while the second feature (8 ∈ {6; 8; 9}) is encoded by 01 The binary form of s is 001 or 101 5.2.3 Performance metrics We used a 10-fold cross-validation technique to evaluate our approach in Experiments and In Experiments 2, and 5-7, a hold-out validation is used to evaluate our approach with subsets of Netflow dataset as described in Table 4.4 Table 4.4: Distribution of flows and parameters for experiments Experiment Normal flows 105,033 59,980 for training, 45,053 for testing 59,980 for training, 45,053 for testing 5,968 70,022 for training, 35,011 for testing 52,516 for training, 52,517 for testing 35,011 for training, 70,022 for testing Attack flows 24,538 5,952 for training, 18,586 for testing 5,952 for training, 18,586 for testing 10,000 16,359 for training, 8,179 for testing 12,269 for training, 12,269 for testing 8,179 for training, 16,359 for testing 49 63 r t1 10 10 t2 t3 14 t4 53 12 16 41 49 14 37 11 4 48 12 19 46 11 30 Algorithm PSA2 requires the integer-valued parameters r, t1 , t2 , t3 , t4 , which control the detection performance of NIDS To obtain optimal values of parameters for a given dataset, we first predict the possible value ranges for them Then we test with every quintuple (r, t1 , t2 , t3 , t4 ) in these ranges on a randomly sampled subset, usually one-tenth, of the testing dataset Finally, we retest the system on the whole testing dataset in localities of parameters in the chosen quintuple Regarding to 10-fold cross-validation, the chosen quintuple in the fold is 20 used to estimate the others folds to reduce training time Additionally, value of is determined by encoding technique in data preprocessing Distribution of parameter values and a number of flows for all four experiments are showed in Table 4.4 Since it is challenging to decide which objective function is the best to choose an optimal quintuple More specifically, optimization problem in this research is a multi-objective optimization problem: we aim to increase the DR while reducing the FAR at the same time We select our objective function to reach the highest DR while keeping FAR as low as possible 5.2.4 Performance Table 4.5 illustrates the results of all experiments We compare PSA2 performance with some other algorithms in most recently published works and some ones run with the help of WEKA tool (Version 3.6) 21 Table 4.5: Comparison between PSA2 and other algorithms Algorithms ACC DR FAR 0.9879 0.9682 0.9273 0.9344 0.9468 0.9614 0.6777 0.9943 0.9941 0.9977 0.9992 0.9992 0.9975 0.9974 0.9974 0.9975 0.9976 0.9977 0.0146 0.0514 0.1223 0.1071 0.0839 0.0871 0.5116 0.0064 0.0067 0.9896 0.9812 0.9796 0.9763 0.9672 0.9655 0.9309 0.7596 0.9676 0.9645 0.9622 0.9564 0.9369 Experiment PSA2 BBNN SVM (linear) SVM (polynomial) SVM (RBF) SVM (sigmoid) Naive Bayes Random Forest Random Tree Experiment PSA2 PSOGSA-based MLP Cuckoo-based MLP GSA-based MLP PSO-based MLP EBP-based MLP Random Forest Random Tree 0.0013 0.0119 0.0133 0.0155 0.0203 0.0315 0.7634 0.1771 0.0001 Experiment PSA2 (10% labelled data) S4VM (10% labelled, 90% unlabelled data) Random Forest (10% labelled data) Random Tree (10% labelled data) Experiment PSA2 Naive Bayes SVM (linear) SVM (polynomial) SVM (RBF) SVM (sigmoid) Random Forest Random Tree Experiment PSA2 Random Forest Experiment PSA2 Random Forest Experiment PSA2 Random Forest 0.9781 0.9626 0.0157 0.9196 0.0384 0.7157 0.0421 0.0063 0.7151 0.0400 0.0065 0.9757 0.6832 0.7315 0.7143 0.6263 0.6263 0.9777 0.9766 0.9634 0.9972 1.0000 0.8788 1.0000 1.0000 0.9675 0.9664 0.0035 0.8668 0.7185 0.5613 0.9998 1.0000 0.0052 0.0062 0.9845 0.9979 0.0186 0.9818 0.9997 0.0868 0.9961 0.9915 0.0028 0.9870 0.9998 0.0636 0.9847 0.9979 0.0183 0.9901 0.9999 0.0490 The results of Experiment show that PSA2 reaches best performance when we set quintuple values (10, 5, 7, 8, 9) for parameters quintuple (r, t1 , t2 , t3 , t4 ), in which the 22 remarkable FAR is 1.46%, and ACC is 98.79% Moreover, DR is ranked the second with 99.77% BBNN and SVM (linear) have the highest DR, but their FAR are not comparable with that of PSA2 Both Random Forest and Random Tree perform excellently with highest ACC, admirable DR and genuine FAR Results of Experiment show that PSA2 outperforms four algorithms proposed by Jadidi (2013) in terms of three metrics DR, ACC and FAR Also, PSA2 is better than both Random Forest and Random Tree in terms of ACC and DR PSA2 can not train with unlabelled data, so we only use 10% labelled dataset, 5998 attack flows and 595 normal flows, for training phase in Experiment Meanwhile algorithm S4VM uses 100% training dataset for training, in which 90% unlabelled dataset and 10% labelled dataset Results from the experiment strongly confirm the efficiency of PSA2 in comparison with methods proposed by Jadidi (2015) Both Random Forest and Random Tree perform badly with very low ACC and DR In Experiment 4, PSA2 is competitive with both Random Forest and Random Tree Some SVMs achieved admirable accuracies with 100%, but their FARs are very high with approximately or even 100% Poor FARs of these algorithms mean that they can not verify the nature of benign traffic in the dataset, while PSA2, Random Forest and Random Tree can In experiments 5-7, ACCs and DRs of two algorithms PSA2 and Random Forest are similar However, FARs of PSA2 are better (far lower) than that of Random Forest In all experiments, FAR of PSA2 is always the lowest among that of compared algorithms except for Random Forest and Random Tree in experiments 1-3 This result partly proves the consistency of PSA2 for NIDS Two drawbacks of PSA2 are listed: 1- It must store a map to encode each new sample into a binary string in detection phase The size of the map depend on the distribution of flow features’ domains However, all four experiments show that map storage does not exceed 1% size of training dataset 2- Time to tune parameters is an expensive factor in PSA2 Depending on training data, it takes about 2-5 hours to choose optimal parameters in the experiments 23 CONCLUSIONS Contributions of this thesis Propose a ring representation of data instead of linear one for better performance in terms of both detection rate and accuracy rate Propose an algorithm PNSA that combine two selection algorithms in a uniform for compact representation of data Performance of the algorithm is highly guaranteed by experiment result and theoretical proof Propose a negative selection algorithm with variable length of detectors to generate a complete a and non-redundant detector sets to reduce detectors storage and classification time Propose a algorithm Chunk-NSA and experimentally and theoretically prove that it is r times faster in data training compared with a recently published algorithm Propose an algorithm, called PSA2, to apply a hybrid algorithm that combines PSA and some statistical approaches to achieve better performance of intrusion detection in compared with some recently published work Future work • Combine our algorithms with some machine learning methods to have better detection performance • Further develop technique that can choose optimal parameters and integrate them in new objective functions for hybrid NIDS • Improve proposed algorithms to apply them on other data types with different data representations, matching rule is also a future research direction • Further optimize Cont-NSA for better detection time and optimal training time Published work A1 N V Truong and P D Lam, “Improving negative selection algorithm in artificial immune systems for computer virus detection,” Journal of Science and Technology, Thai Nguyen University, 72(06):53–58, 2010 A2 N V Truong, V D Quang and T V Ha, “A fast r-chunk detector-based negative selection algorithm,” Journal of Science and Technology, Thai Nguyen University,90(02):55–58, 2012 24 A3 N V Truong and T V Ha, “Another look at r-chunk detector-based negative selection algorithm,” Journal of Science and Technology, Thai Nguyen University, 102(02):45–50, 2013 A4 N V Truong, N X Hoai, and L C Mai, “A Novel Combination of Negative and Positive Selection in Artificial Immune Systems,” Vietnam National University, Hanoi Journal of Science: Computer Science and Communication Engineering, 31(1):22–31, 2015 A5 N V Truong, P D Lam, and V D Quang, “Some Improvements of Selection Algorithms for Spam Email Filtering,” Journal of Science and Technology, Thai Nguyen University, 151(06):85–91, 2016 A6 N V Truong, N X Hoai, “An improved positive selection algorithm for flow-based intrusion detection,” Proceedings of the The 2nd National Conference on Fundamental and Applied IT Research (FAIR), 2019 (Accepted) ... to a specific port and a IP address which receives the most number of attacks It contains all 129,571 traffics (including attacks) to and from victims 7 Chapter COMBINATION OF NEGATIVE SELECTION... system on the whole testing dataset in localities of parameters in the chosen quintuple Regarding to 10-fold cross-validation, the chosen quintuple in the fold is 20 used to estimate the others folds... FAR Also, PSA2 is better than both Random Forest and Random Tree in terms of ACC and DR PSA2 can not train with unlabelled data, so we only use 10% labelled dataset, 5998 attack flows and 595