Multi-Attributes Web Objects Classification based on Class-Attribute Relation Patterns Learning Approach

The amount of Web data increases with the proliferation of a variety of Web objects, primarily in the form of text, images, video, and music data files. Each of these published objects has some properties that support defining its class properties. Because of their diversity, using these attributes to learn and generate patterns for precise classification is very complicated. Even learning a set of attributes that clearly categorize the categories is very important. Existing attribute learning methods only learn attributes that are closely related to multiple similar objects, but if similar class objects have different attributes, this problem is difficult to learn and classify them. In this paper, a Multi-attributes Web Objects Classification (MA-WOC) based on Class-attribute Relation Patterns Learning Approach is being proposed, which generates a class-attribute with its multi relations patterns. The MA-WOC calculates the relationship probabilities of the attributes and the associated values of the class to understand the degree of association of the construction of classification pattern. To evaluate the effectiveness of the classifier, this will compare to an existing classifier that supports a multi-attribute data set, which shows improvisation of precision with a significant minimum Hamming loss. To evaluate the effectiveness of MA-WOC classification a comparison among the classifiers that are supported to the multi-attribute dataset are being performed to measure the accuracy and hamming loss.

[1]  Xing Mei,et al.  Unsupervised Ranking of Multi-Attribute Objects Based on Principal Curves , 2014, IEEE Transactions on Knowledge and Data Engineering.

[2]  Geoff Holmes,et al.  Classifier chains for multi-label classification , 2009, Machine Learning.

[3]  Francisco Charte,et al.  LI-MLC: A Label Inference Methodology for Addressing High Dimensionality in the Label Space for Multilabel Classification , 2014, IEEE Transactions on Neural Networks and Learning Systems.

[4]  Lior Rokach,et al.  Exploiting label dependencies for improved sample complexity , 2013, Machine Learning.

[5]  Grigorios Tsoumakas,et al.  Multi-Label Classification: An Overview , 2007, Int. J. Data Warehous. Min..

[6]  C. A. Murthy,et al.  Unsupervised Feature Selection Using Feature Similarity , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[7]  Francisco Herrera,et al.  Enhancing Multiclass Classification in FARC-HD Fuzzy Classifier: On the Synergy Between $n$-Dimensional Overlap Functions and Decomposition Strategies , 2015, IEEE Transactions on Fuzzy Systems.

[8]  Tat-Seng Chua,et al.  Automatic image annotation via local multi-label classification , 2008, CIVR '08.

[9]  Lei Wu,et al.  Lift: Multi-Label Learning with Label-Specific Features , 2015, IEEE Trans. Pattern Anal. Mach. Intell..

[10]  Min-Ling Zhang,et al.  A Review on Multi-Label Learning Algorithms , 2014, IEEE Transactions on Knowledge and Data Engineering.

[11]  Philip S. Yu,et al.  Multi-label classification by mining label and instance correlations from heterogeneous information networks , 2013, KDD.

[12]  Hsuan-Tien Lin,et al.  Multi-label Classication with Error-correcting Codes , 2011 .

[13]  Xindong Wu,et al.  Computing term similarity by large probabilistic isA knowledge , 2013, CIKM.

[14]  Yue-Shan Chang,et al.  Enhancing Classification Effectiveness of Chinese News Based on Term Frequency , 2017, 2017 IEEE 7th International Symposium on Cloud and Service Computing (SC2).

[15]  Philip S. Yu,et al.  Learning from Heterogeneous Sources via Gradient Boosting Consensus , 2012, SDM.

[16]  Grigorios Tsoumakas,et al.  MULAN: A Java Library for Multi-Label Learning , 2011, J. Mach. Learn. Res..

[17]  Jukka Ruohonen,et al.  Classifying Web Exploits with Topic Modeling , 2017, 2017 28th International Workshop on Database and Expert Systems Applications (DEXA).

[18]  Ludovic Denoyer,et al.  Iterative Annotation of Multi-relational Social Networks , 2010, 2010 International Conference on Advances in Social Networks Analysis and Mining.

[19]  Newton Spolaôr,et al.  A Comparison of Multi-label Feature Selection Methods using the Problem Transformation Approach , 2013, CLEI Selected Papers.

[20]  K. Dembczynski,et al.  On Label Dependence in Multi-Label Classification , 2010 .

[21]  Cheng Deng,et al.  Assisting Attraction Classification by Harvesting Web Data , 2017, IEEE Access.