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Tag Ranking Present by Jie Xiao Dept. of Computer Science Univ. of Texas at San Antonio
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jxiao@cs.utsa.edu 1 Outline Problem Probabilistic tag relevance estimation Random walk tag relevance refinement Experiment Conclusion
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jxiao@cs.utsa.edu 2 Problem There are millions of social images on internet, which are very attractive for the research purpose. The tags associated with images are not ordered by the relevance.
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Problem (Cont.) jxiao@cs.utsa.edu 3
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Tag relevance There are two types of relevance to be considered. The relevance between a tag and an image The relevance between two tags for the same image. jxiao@cs.utsa.edu 4
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Probabilistic Tag Relevance Estimation Similarity between a tag and an image jxiao@cs.utsa.edu 5 x : an image t : tag i associated with image x P(t|x) : the probability that given an image x, we have the tag t. P(t) : the prior probability of tag t occurred in the dataset After applying Bayes’ rule, we can derive that
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Probabilistic Relevance Estimation (Cont) Since the target is to rank that tags for the individual image and p(x) is identical for these tags, we refine it as jxiao@cs.utsa.edu 6
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Density Estimation Let (x 1, x 2, …, x n ) be an iid sample drawn from some distribution with an unknown density ƒ. Two types of methods to describe the density Histogram Kernel density estimator jxiao@cs.utsa.edu 7
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Histogram jxiao@cs.utsa.edu 8 Credit: All of Nonparametric Statistics via UTSA library
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Kernel Density Estimation jxiao@cs.utsa.edu 9 Smooth function K is used to estimate the density
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Kernel Density Estimation (Cont.) Its kernel density estimator is jxiao@cs.utsa.edu 10
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Probabilistic Relevance Estimation (Cont) Kernel Density Estimation (KDE) is adopted to estimate the probability density function p(x|t). jxiao@cs.utsa.edu 11 Xi : the image set containing tag ti x k : the top k near neighbor image in image set Xi K : density kernel function used to estimate the probability |x| : cardinality of Xi
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Relevance between tags ti, tag i associated with image x tj, tag j associated with image x, the image set containing tag i, the image set containing tag j N: the top N nearest neighbor for image x jxiao@cs.utsa.edu 12
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Relevance between tags (Cont.) jxiao@cs.utsa.edu 13
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Relevance between tags (Cont.) Co-occurrence similarity between tags jxiao@cs.utsa.edu 14 f(ti) : the # of images containing tag ti f(ti,tj) : the # of images containing both tag ti and tag tj G : the total # of images in Flickr
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Relevance between tags (Cont.) jxiao@cs.utsa.edu 15
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Relevance between tags (Cont.) Relevance score between two tags jxiao@cs.utsa.edu 16 where
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Random walk over tag graph P: n by n transition matrix. pij : the probability of the transition from node i to j jxiao@cs.utsa.edu 17 r k (j): relevance score of node i at iteration k
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Random walk jxiao@cs.utsa.edu 18
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Random walk over tag graph (Cont.) jxiao@cs.utsa.edu 19
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Experiments Dataset: 50,000 image crawled from Flickr Popular tags: Raw tags: more than 100,000 unique tags Filtered tags: 13,330 unique tags jxiao@cs.utsa.edu 20
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Performance Metric Normalized Discounted Cumulative Gain (NDCG) jxiao@cs.utsa.edu 21 r(i) : the relevance level of the i - th tag Zn : a normalization constant that is chosen so that the optimal ranking’s NDCG score is 1.
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Experimental Result Comparison among different tag ranking approaches jxiao@cs.utsa.edu 22
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jxiao@cs.utsa.edu 23
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Conclusion Estimate the tag - image relevance by kernel density estimation. Estimate the tag – tag relevance by visual similarity and tag co-occurrence. A random walk based approach is used to refine the ranking performance. jxiao@cs.utsa.edu 24
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jxiao@cs.utsa.edu 25 Thank you!
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