Predicting and Preventing Malware in Machine Learning Model
Title | Predicting and Preventing Malware in Machine Learning Model |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Nisha, D, Sivaraman, E, Honnavalli, Prasad B |
Conference Name | 2019 10th International Conference on Computing, Communication and Networking Technologies (ICCCNT) |
Date Published | July 2019 |
Publisher | IEEE |
ISBN Number | 978-1-5386-5906-9 |
Keywords | AdaBoost, Algorithm robustness enhancement, Causative attack, Classification algorithms, compositionality, data deletion, Data models, data privacy, Data Sanitization, Decision Tree, Decision trees, exploratory attack, Human Behavior, human factors, invasive software, K-nearest-neighbors classifier, KNN classifier, machine learning, machine learning algorithms, machine learning model, malware prediction, malware prevention, pattern classification, Predictive models, privacy, privacy preserving technique, pubcrawl, Random Forest, random forests, resilience, Resiliency, Scalability, security, support vector machine, Support vector machines, Training |
Abstract | Machine learning is a major area in artificial intelligence, which enables computer to learn itself explicitly without programming. As machine learning is widely used in making decision automatically, attackers have strong intention to manipulate the prediction generated my machine learning model. In this paper we study about the different types of attacks and its countermeasures on machine learning model. By research we found that there are many security threats in various algorithms such as K-nearest-neighbors (KNN) classifier, random forest, AdaBoost, support vector machine (SVM), decision tree, we revisit existing security threads and check what are the possible countermeasures during the training and prediction phase of machine learning model. In machine learning model there are 2 types of attacks that is causative attack which occurs during the training phase and exploratory attack which occurs during the prediction phase, we will also discuss about the countermeasures on machine learning model, the countermeasures are data sanitization, algorithm robustness enhancement, and privacy preserving techniques. |
URL | https://ieeexplore.ieee.org/document/8944462 |
DOI | 10.1109/ICCCNT45670.2019.8944462 |
Citation Key | nisha_predicting_2019 |
- Random Forest
- machine learning model
- malware prediction
- malware prevention
- pattern classification
- Predictive models
- privacy
- privacy preserving technique
- pubcrawl
- machine learning algorithms
- random forests
- resilience
- Resiliency
- Scalability
- security
- support vector machine
- Support vector machines
- Training
- Decision Tree
- Algorithm robustness enhancement
- Causative attack
- Classification algorithms
- Compositionality
- data deletion
- Data models
- data privacy
- Data Sanitization
- AdaBoost
- Decision trees
- exploratory attack
- Human behavior
- Human Factors
- invasive software
- K-nearest-neighbors classifier
- KNN classifier
- machine learning