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Thangavel, K.
- Extraction of Web Usage Profiles Using Simulated Annealing Based Biclustering Approach
Abstract Views :266 |
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Authors
Affiliations
1 Department of Computer Science, Periyar University, Salem, Tamil Nadu, IN
1 Department of Computer Science, Periyar University, Salem, Tamil Nadu, IN
Source
Journal of Applied Information Science, Vol 2, No 1 (2014), Pagination: 21-29Abstract
In this paper, the Simulated Annealing (SA) based biclustering approach is proposed in which SA is used as an optimization tool for biclustering of web usage data to identify the optimal user profile from the given web usage data. Extracted biclusters are consists of correlated users whose usage behaviors are similar across the subset of web pages of a web site where as these users are uncorrelated for remaining pages of a web site. These results are very useful in web personalization so that it communicates better with its users and for making customized prediction. Also useful for providing customized web service too. Experiment was conducted on the real web usage dataset called CTI dataset. Results show that proposed SA based biclustering approach can extract highly correlated user groups from the preprocessed web usage data.Keywords
Biclustering, Clickstream Data, Simulated Annealing (SA), Web Personalization, Web User Profile, Web Recommendations, Web Usage Mining.References
- AlMurtadha, Y. M., & Sulaiman, M. N. B., Mustapha, N. & Udzir, N. I. (2010). Mining web navigation profiles for recommendation system. Information Technology Journal, 9(4), 790-796.
- Mobasher, B., Cooley, R. & Srivatsava, J. (2000). Automatic personalization based on Web usage mining. Communication of ACM, 43(8), 142-51.
- Mobasher, B., Dai, H., Luo, T., & Nakagawa, M. (2002). Discovery and evaluation of aggregate usage profiles for web personalization. Communication of ACM, 6(1), 61-82.
- Mobasher, B., Dai, H., Luo, T. & Nakagawa, M. (2002). Improving the effectiveness of collaborative filtering on anonymous Web usage data, In Proceedings of the IJCAI.
- Mobasher, B. (1999). Web Personalizer: A ServerSide Recommender System Based on Web Usage Mining. Technical Report, Telecommunications and Information Systems.
- Bryan, K., Cunningham, P., & Bolshakova, N. (2005). Bi-Clustering of Expression Data Using Simulated Annealing. In Proceedings of the 18th IEEE Symposium on Computer Based Medical Systems.
- Castellano, G., Fanelli, A. M., & Torsello, M. A. (2011). NEWER: A system for neuro-fuzzy WEb recommendation. Applied Soft Computing, 11(1), 793-806.
- Cheng, Y., & Church, G. M. (2000). Bi-clustering of Expression Data. Proceedings of the 8th International Conference on Intelligent Systems for Molecular Biology, (pp. 93-103).
- Bryan, K., Cunnigham, P., & Bolshakova, N. (2006). Application of Simulated Annealing to the Bi-clustering of Gene Expression Data. IEEE Transactions on Information Technology in Biomedicine, 10(3), 519-525.
- Kirkpatrick, S. (1983). Simulated annealing. Science, 220(4598), 671-680.
- Liu, H., & Keselj, V. (2007). Combined mining of Web server logs and web contents for classifying user navigation patterns and predicting users' future requests. Data & Knowledge Engineering, 61(2), 304-330.
- Madeira, S. C., & Oliveira, A. L. (2004). Bi-clustering Algorithms for Biological Data Analysis: A Survey. IEEE Transactions on Computational Biology and Bioinformatics, (pp. 24-45).
- Mobasher, B. (2004). Web usage mining and personalization. In M. P. Singh (Ed.), Practical Handbook of Internet Computing. CRC Press.
- Rathipriya, R., Thangavel, K., & Bagyamani, J. (2011). Evolutionary bi-clustering of click-stream data. International Journal of Computer Science Issues, 8(1), 32-38.
- Rathipriya, R., Thangavel, K., & Bagyamani, J. (2011). Binary particle swarm optimization based Bi-clustering of web usage data. International Journal of Computer Applications, 25(2), 43-49.
- Srivatsava, J., Cooley, R., Deshpande, M., & Tan, P. N. (2000). Web usage mining: Discovery and applications of usage patterns from Web data. ACM SIGKDD Exploration, Newsletter, 1(2), 12-23.
- Gunduz, S., & Ozsu, M. T. (2003). A User Interest Model for Web Page Navigation. In Proceedings of International Workshop on Data Mining for Actionable Knowledge (DMAK), (pp. 46-57).
- Symeonidis, P., Nanopoulos, A., Papadopoulos, A., & Manolopoulos, Y. (2006). Nearest-Biclusters Collaborative Filtering. Proceedings of the WebKDD.
- Tang, C., & Zhang, A. (2001). Interrelated Two-Way Clustering: An Unsupervised Approach for Gene Expression Data Analysis. Proceedings of 2nd IEEE International Symposium Bioinformatics and Bioengineering, 14, 41-48.
- Triki, E., Collette, Y., & Siarry, P. (2005). A theoretical study on the behavior of simulated annealing leading to a new cooling schedule. European Journal of Operational Research, 166(1), 77-92.
- Zhang, Y., Xu, G., & Zhou, X. (2005). A Latent Usage Approach for Clustering Web Transaction and Building User Profile, (pp. 31-42).
- Zhou, B., Hui, S. C., & Chang, K. (2004). An Intelligent Recommender System using Sequential Web Access Patterns. IEEE Conference on Cybernetics and Intelligent Systems.
- Studies on Wheat Based Composite Flour for Pasta Products
Abstract Views :108 |
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Authors
Affiliations
1 Tamil Nadu Agricultural University, Coimbatore-641 043, IN
2 McGill University, CA
1 Tamil Nadu Agricultural University, Coimbatore-641 043, IN
2 McGill University, CA
Source
The Indian Journal of Nutrition and Dietetics, Vol 42, No 11 (2005), Pagination: 503-508Abstract
The challenges directed towards the food industry will be to fulfil the needs of the changing world markets and to meet new consumer product needs. Nowadays many pasta products flood the market. All the pasta and Asian noodles are generally wheat based products. The functional properties of wheat protein fractions are well defined for bread making and pasta cooking quality.- Evaluation of Toxicity of Emamectin Benzoate 5 Wg to Honey Bees
Abstract Views :164 |
PDF Views:0
Authors
Affiliations
1 Department of Agricultural Entomology, Agricultural College and Research Institute, (T.N.A.U.), Madurai (T.N.), IN
1 Department of Agricultural Entomology, Agricultural College and Research Institute, (T.N.A.U.), Madurai (T.N.), IN
Source
International Journal of Plant Sciences, Vol 11, No 2 (2016), Pagination: 299-301Abstract
Laboratory studies were carried out to assess the contact toxicity of emamectin benzoate 5 WG to workers of Indian bee, Apis cerana indica and Italian bee, Apis mellifera. Emamectin benzoate 5 WG to Indian bees showed that there was no mortality in emamectin benzoate 5 WG @ 100 and 125 g/ha, while emamectin benzoate 5 WG @ 150 g/ha caused 10.00 per cent at 6 (Hours after Treatment) HAT, and it increased to 6.67, 16.67 and 23.33 per cent, respectively after 24 HAT. However, standard insecticides lufenuron 5 EC @ 600 ml/ha, chlorantroniliprole 18.5 SC @ 150 ml/ha and spinosad 45 SC @ 125 ml/ha caused increased mortality of 30.00, 50.00 and 70.00 per cent, respectively. The mortality increased as the time of exposure increased from 6 to 24 HAT. Similar trend was also observed in Italian bees. Hence, emamectin benzoate 5 WG considered could be highly safe to both the species of honey bees than standard insecticides.Keywords
Emamectin Benzoate, Honey Bees, Safety, Toxicity.References
- Govindan, K. (2009). Evaluation of emamectin benzoate 5 SG against bollworms of cotton and fruit borers of okra. Ph.D. Thesis, Tamil Nadu Agricultural University, Coimbatore, India, 224p.
- Husain, D., Qasim, M., Saleem, M., Akhter, M. and Khan, K.A. (2014). Bioassay of insecticides against three Honey bee species in laboratory conditions. Agronomic Res. in Moldavia., 17(2): 69-79
- Lasota, J.A. and Dybas, R.A. (1991). Avermectins; A novel class of compounds: Implications for use in arthropod pest control. Annu. Rev. Entomol. 36: 91-117.
- Miles, M.( 2003). The effects of spinosad, a naturally derived insect control agent to the honeybee. Bulletin Insectol., 56 : 119-124.
- Suganyakanna, S. (2006). Evaluation of acetamiprid 20 SP against sucking pest complex in cotton. Ph.D. Thesis, Tamil Nadu Agricultural University, Coimbatore, India. 190p.
- Dimensionality Reduction based on Hubness Property using Feature Weighting Method for Clustering
Abstract Views :134 |
PDF Views:0
Authors
A. Jenneth
1,
K. Thangavel
2
Affiliations
1 Computer Science Department, Sri Krishna Arts and Science College, Sugunapuram, Kuniamuthur, Coimbatore - 641008, Tamil Nadu, IN
2 Department of Computer Science, Periyar University, Periyar Palkalai Nagar, Salem - 636011, Tamil Nadu, IN
1 Computer Science Department, Sri Krishna Arts and Science College, Sugunapuram, Kuniamuthur, Coimbatore - 641008, Tamil Nadu, IN
2 Department of Computer Science, Periyar University, Periyar Palkalai Nagar, Salem - 636011, Tamil Nadu, IN
Source
Indian Journal of Science and Technology, Vol 9, No 19 (2016), Pagination:Abstract
Grouping of high dimensional information is an imperative exploration subject in the information mining, in light of the fact that the genuine datasets frequently have high dimensional components. The objective of the clustering is to group the features which should be similar to each other. Many text mining approaches are optimized to mine the sparse data which incurs high computation cost. In this paper, we process a novel technique named as affine subspace clustering which incorporates the Hubness property to handle the local feature relevance value and Curse of dimensionality. The Hubness property reduces the discrimination problem in the cluster formation and used as clustering method with effects relevant to cluster structures. Rather than endeavoring to keep away from the scourge of dimensionality by watching a lower dimensional component subspace, we use substantial dimensionality by exploiting downward closure property and outlier detection in the k nearest neighbor list. Additionally we combine Feature weighting method to minimize the average inside cluster scattering and augment the average between cluster scatterings along all the element spaces. The experimental results prove that proposed system yields the good performance in numerous settings, especially within the sight of huge amounts of commotion. The proposed techniques are optimized for the most part to detect the cluster center accuracy and extended properly to handle clusters of random sizes. Average inside cluster scattering is minimized and average between-cluster scattering is expanded along all the element spaces.Keywords
Clustering, Curse of Dimensionality, Dynamic Centroid- Mammogram Image Segmentation Using Auto Adaptive Fuzzy Index Measure
Abstract Views :102 |
PDF Views:0
Authors
Affiliations
1 Department of Computer Science, Periyar University, Tamil Nadu, IN
1 Department of Computer Science, Periyar University, Tamil Nadu, IN