High-Level Online User Attribution Model Based on Human Polychronic-Monochronic Tendency
Title | High-Level Online User Attribution Model Based on Human Polychronic-Monochronic Tendency |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Adeyemi, I. R., Razak, S. A., Venter, H. S., Salleh, M. |
Conference Name | 2017 IEEE International Conference on Big Data and Smart Computing (BigComp) |
Keywords | 1-to-N User identification, attribute-based encryption, Behavioral biometrics, biometrics (access control), Collaboration, Computer science, e-learning profiling process, feature extraction, forensic identification and profiling process, Human Behavior, human factors, human inherent dynamics, human polychronic-monochronic tendency, human polyphasia tendency, human preference, Internet, logistic model tree, online profiling process, online user attribution process, policy-based governance, Polyphasia tendency, pubcrawl, Scalability, Sea measurements, Servers, social network profiling process, temporal model, Training, UML behavioral modeling style, user attribution model, user identification process, user interfaces |
Abstract | User attribution process based on human inherent dynamics and preference is one area of research that is capable of elucidating and capturing human dynamics on the Internet. Prior works on user attribution concentrated on behavioral biometrics, 1-to-1 user identification process without consideration for individual preference and human inherent temporal tendencies, which is capable of providing a discriminatory baseline for online users, as well as providing a higher level classification framework for novel user attribution. To address these limitations, the study developed a temporal model, which comprises the human Polyphasia tendency based on Polychronic-Monochronic tendency scale measurement instrument and the extraction of unique human-centric features from server-side network traffic of 48 active users. Several machine-learning algorithms were applied to observe distinct pattern among the classes of the Polyphasia tendency, through which a logistic model tree was observed to provide higher classification accuracy for a 1-to-N user attribution process. The study further developed a high-level attribution model for higher-level user attribution process. The result from this study is relevant in online profiling process, forensic identification and profiling process, e-learning profiling process as well as in social network profiling process. |
URL | http://ieeexplore.ieee.org/document/7881753/?reload=true |
DOI | 10.1109/BIGCOMP.2017.7881753 |
Citation Key | adeyemi_high-level_2017 |
- logistic model tree
- user interfaces
- user identification process
- user attribution model
- UML behavioral modeling style
- Training
- temporal model
- social network profiling process
- Servers
- Sea measurements
- Scalability
- pubcrawl
- Polyphasia tendency
- policy-based governance
- online user attribution process
- online profiling process
- 1-to-N User identification
- internet
- human preference
- human polyphasia tendency
- human polychronic-monochronic tendency
- human inherent dynamics
- Human Factors
- Human behavior
- forensic identification and profiling process
- feature extraction
- e-learning profiling process
- computer science
- collaboration
- biometrics (access control)
- Behavioral biometrics
- attribute-based encryption