Tazeen Tasneem | Eastern University, Bangladesh (original) (raw)

Tazeen Tasneem

I'm Tazeen Tasneem, graduated from Rajshahi University of Engineering &Technology, Bangladesh with a major in Computer Science & Engineering. Currently I'm doing my M.Sc in the same University and serving as a Lecturer in Eastern University. Beside teaching the students, I prefer to be involed in research work. Data mining is the field that attracts me so much. I've two research papers related to this field. Now my M.Sc thesis is related to this as well
Phone: +8801942143575
Address: Rajshahi, Bangladesh

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Papers by Tazeen Tasneem

Research paper thumbnail of Performance Analysis of Classical and Evolutionary Algorithms for Mining Association Rules

2019 International Conference on Electrical, Computer and Communication Engineering (ECCE), 2019

Association rule mining techniques based on support and confidence, generates a large number of r... more Association rule mining techniques based on support and confidence, generates a large number of rules-many of which are useless. As a result, post analysis is needed. For such an optimization problem evolutionary algorithms can be used as they use objective functions that measures the inter-estingness of rules better. We apply classical and evolutionary algorithms on different types of datasets. Though none of the algorithms is superior than the others-some of the rules obtained by evolutionary algorithms, could not be obtained by classical algorithms. Time is also a great issue that get affected significantly by support value. To our knowledge, there is no work to compare classical (Apriori and FP-growth) and evolutionary (EARMGA and MOEA) algorithms focusing on their performances in different phases of execution. In this work, detailed information is specified according to some of the major components with various aspects. The whole process is treated from data mining perspective and discussed the issues responsible for affecting the performance of the algorithms.

Research paper thumbnail of Performance Analysis of Classical and Evolutionary Algorithms for Mining Association Rules

2019 International Conference on Electrical, Computer and Communication Engineering (ECCE), 2019

Association rule mining techniques based on support and confidence, generates a large number of r... more Association rule mining techniques based on support and confidence, generates a large number of rules-many of which are useless. As a result, post analysis is needed. For such an optimization problem evolutionary algorithms can be used as they use objective functions that measures the inter-estingness of rules better. We apply classical and evolutionary algorithms on different types of datasets. Though none of the algorithms is superior than the others-some of the rules obtained by evolutionary algorithms, could not be obtained by classical algorithms. Time is also a great issue that get affected significantly by support value. To our knowledge, there is no work to compare classical (Apriori and FP-growth) and evolutionary (EARMGA and MOEA) algorithms focusing on their performances in different phases of execution. In this work, detailed information is specified according to some of the major components with various aspects. The whole process is treated from data mining perspective and discussed the issues responsible for affecting the performance of the algorithms.

Research paper thumbnail of Performance Analysis of Classical and Evolutionary Algorithms for Mining Association Rules

2019 International Conference on Electrical, Computer and Communication Engineering (ECCE), 2019

Association rule mining techniques based on support and confidence, generates a large number of r... more Association rule mining techniques based on support and confidence, generates a large number of rules-many of which are useless. As a result, post analysis is needed. For such an optimization problem evolutionary algorithms can be used as they use objective functions that measures the inter-estingness of rules better. We apply classical and evolutionary algorithms on different types of datasets. Though none of the algorithms is superior than the others-some of the rules obtained by evolutionary algorithms, could not be obtained by classical algorithms. Time is also a great issue that get affected significantly by support value. To our knowledge, there is no work to compare classical (Apriori and FP-growth) and evolutionary (EARMGA and MOEA) algorithms focusing on their performances in different phases of execution. In this work, detailed information is specified according to some of the major components with various aspects. The whole process is treated from data mining perspective and discussed the issues responsible for affecting the performance of the algorithms.

Research paper thumbnail of Performance Analysis of Classical and Evolutionary Algorithms for Mining Association Rules

2019 International Conference on Electrical, Computer and Communication Engineering (ECCE), 2019

Association rule mining techniques based on support and confidence, generates a large number of r... more Association rule mining techniques based on support and confidence, generates a large number of rules-many of which are useless. As a result, post analysis is needed. For such an optimization problem evolutionary algorithms can be used as they use objective functions that measures the inter-estingness of rules better. We apply classical and evolutionary algorithms on different types of datasets. Though none of the algorithms is superior than the others-some of the rules obtained by evolutionary algorithms, could not be obtained by classical algorithms. Time is also a great issue that get affected significantly by support value. To our knowledge, there is no work to compare classical (Apriori and FP-growth) and evolutionary (EARMGA and MOEA) algorithms focusing on their performances in different phases of execution. In this work, detailed information is specified according to some of the major components with various aspects. The whole process is treated from data mining perspective and discussed the issues responsible for affecting the performance of the algorithms.

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