2017
DOI: 10.5120/ijca2017913127
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Analysis of various Characteristics of Online User Behavior Models

Abstract: Accurately identifying online user behavior is challenging task because while identifying malicious users, legitimate user should be separated correctly. Normal and suspicious users should be differentiated. Various classification methods are useful in this behavior detection process. Some of them give good performance and accurate results. Few metrics are used to deviate malicious users from good one. Security is the main concern need to provide to various online applications. Characteristics of user behavior… Show more

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Cited by 9 publications
(6 citation statements)
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“…Table According to table (9), there is a significant relationship between satisfaction with chatbot characteristics and experience with chatbots (R =.842, p ≤.01), motives for using a chatbot (R =.597** -sig = 0.000), advantages of using chatbots (R =.797, p ≤.01), and travel chatbot use intention (R = 0.646; P-value ≤ 0.0001). These results indicate that there is positive relationship between experience with chatbots, motives for using a chatbot, advantages of using chatbots, travel chatbot use intention, and satisfaction with chatbot characteristics As seen in Table 10, there is a significant relationship between travel chatbot use intention and experience with chatbots (R =.800, p ≤.01), motives for using a chatbot (R =.663**sig = 0.000), and advantages of using chatbots (R =.563, p ≤.01).…”
Section: Pearson Correlation Analysesmentioning
confidence: 99%
“…Table According to table (9), there is a significant relationship between satisfaction with chatbot characteristics and experience with chatbots (R =.842, p ≤.01), motives for using a chatbot (R =.597** -sig = 0.000), advantages of using chatbots (R =.797, p ≤.01), and travel chatbot use intention (R = 0.646; P-value ≤ 0.0001). These results indicate that there is positive relationship between experience with chatbots, motives for using a chatbot, advantages of using chatbots, travel chatbot use intention, and satisfaction with chatbot characteristics As seen in Table 10, there is a significant relationship between travel chatbot use intention and experience with chatbots (R =.800, p ≤.01), motives for using a chatbot (R =.663**sig = 0.000), and advantages of using chatbots (R =.563, p ≤.01).…”
Section: Pearson Correlation Analysesmentioning
confidence: 99%
“…User behavior prediction and modeling is a research area which has been applied in several domains using different approaches, such as sensor-based [ 7 ] or vision-based [ 17 ] techniques. For instance, Deshpande and Deshpande [ 18 ] applied behavior prediction for the prediction of online behavior in order to identify malicious users. Irizar et al [ 2 ] discussed how behavior prediction is essential in the creation of energy-efficient and sustainable spaces.…”
Section: Related Workmentioning
confidence: 99%
“…As discussed in [ 33 ], behavior prediction is a core problem to be solved in the creation of more energy efficient and sustainable spaces. In [ 34 ], the authors applied behavior prediction to the online behavior in order to identify malicious users. In [ 35 ] it was used for marketing purposes.…”
Section: Related Workmentioning
confidence: 99%