PPT-CoBaFi : Collaborative Bayesian Filtering

Author : stefany-barnette | Published Date : 2018-02-04

Alex Beutel Joint work with Kenton Murray Christos Faloutsos Alex Smola April 9 2014 Seoul South Korea Online Recommendation 2 5 Users Movies 5 3 5 5 2 Online

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CoBaFi : Collaborative Bayesian Filtering: Transcript


Alex Beutel Joint work with Kenton Murray Christos Faloutsos Alex Smola April 9 2014 Seoul South Korea Online Recommendation 2 5 Users Movies 5 3 5 5 2 Online Rating Models. F01943024. Reference. Yang, . Qingxiong. . "Recursive bilateral filtering." . ECCV . 2012. .. Deriche. , . Rachid. . "Recursively . implementating. the Gaussian and its derivatives." . ICIP 1993.. 2. Read R&N Ch. 14.1-14.2. Next lecture: Read R&N 18.1-18.4. You will be expected to know. Basic concepts and vocabulary of Bayesian networks.. Nodes represent random variables.. Directed arcs represent (informally) direct influences.. An Adaptive Framework for Similarity Join and Search. Jiannan. Wang. . (Tsinghua University). Guoliang. . Li (Tsinghua . University). Jianhua. . Feng. (Tsinghua University). Data Integration. Data Cleaning. Deep Packet Inspection. Artyom. . Churilin. Tallinn University of Technology 2011. Web filtering & DPI. Web filtering (content control) . is a way control . what content is permitted to a . user. . 1. 1. http://www.accessdata.fda.gov/cdrh_docs/pdf/P980048b.pdf. The . views and opinions expressed in the following PowerPoint slides are those of . the individual . presenter and should not be attributed to Drug Information Association, Inc. (“DIA”), its directors, officers, employees, volunteers, members, . Agenda. Collaborative Filtering (CF). Pure CF approaches. User-based nearest-neighbor. The Pearson Correlation similarity measure. Memory-based and model-based approaches. Item-based nearest-neighbor. Henrik Singmann. A girl had NOT had sexual intercourse.. How likely is it that the girl is NOT pregnant?. A girl is NOT pregnant. . How likely is it that the girl had NOT had sexual intercourse?. A girl is pregnant. . CS5670: Intro to Computer Vision. Noah Snavely. Hybrid Images, . Oliva. et al., . http://cvcl.mit.edu/hybridimage.htm. Lecture 1: Images and image filtering. Noah Snavely. Hybrid Images, . Oliva. et al., . Using Stata. Chuck . Huber. StataCorp. chuber@stata.com. 2017 Canadian Stata Users Group Meeting. Bank of Canada, Ottawa. June 9, 2017. Introduction to . the . bayes. Prefix. in Stata 15. Chuck . Huber. Fouhey. .. Let’s Take An Image. Let’s Fix Things. Slide Credit: D. Lowe. We have noise in our image. Let’s replace each pixel with a . weighted. average of its neighborhood. Weights are . filter kernel. Atif. . Iqbal. . Thesis Overview. 2. Introduction. Motivation. Previous Works. Cascaded Filtering for . Palmprints. Cascaded Filtering . for Fingerprints. Summary and Conclusion. What is Biometrics?. Outline. Recap. SVD . vs. PCA. Collaborative filtering. aka Social recommendation. k-NN CF methods. classification. CF via MF. MF . vs. SGD . vs. ….. Dimensionality Reduction. and Principle Components Analysis: Recap. An introduction. CS578-Digital speech signal processing. Invited lecture. On the (Glottal) Inverse Filtering of Speech Signals. Introduction. Inverse Filtering Techniques. Conclusions. Introduction. On the (Glottal) Inverse Filtering of Speech Signals. Matthew Heintzelman. EECS 800 SAR Study Project . ‹#›. . Background:. Typical SAR image formation . algorithms. produce relatively high sidelobes (fast-time and slow-time) that . contribute. to image speckle and can mask scatterers with a low RCS..

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