Difference between revisions of "Private:progress-dameh"

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= Fall 2011 (RA) =
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= Fall 2011 and Spring 2012 (RA) =
  
  
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=== Jan 27 ===
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* Implementing my method on cluster, report to be sent soon.
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=== Dec 23 ===
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* Finished the study of different methods, the analysis and the implementation on a single machine.
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=== Nov 9 ===
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* Scaled the Spectral Hashing.
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* Working on the US Census Data (1990) [number of features (dimensions) = 69 ]
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* run experiments on small DataSet (4k) using the 3 methods LSH Random Projection, LSH  Spectral Hashing and Hilbert Curve
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* now running on large DataSet (1M) using LSH only (as H-curve doesn't work on large Scale)
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* experiment results to be added to the report
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=== Oct 26 ===
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* I am facing problems working on very high dimensional data (d~100000) [curse of dimensionality]
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** I can't use small dataSets (1k points) to compare different methods (Hilbert curve fails for high dimensional but LSH still works)
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** The concept of distance becomes less precise as the number of dimensions grows.
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** There are other techniques to cluster the high-dimensional data (no usage of gram matrix) such as Subspace Clustering, Projected Clustering and Correlation Clustering.
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* I start working on different real DataSets with low dimension (~100)
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* Working on Scaling the Spectral Hashing by scaling the Principle Component Analysis function on matlab
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=== Oct 12 ===
 
=== Oct 12 ===
 
* Process Very-High dimensional and Very-Large Scale real DataSets
 
* Process Very-High dimensional and Very-Large Scale real DataSets
** I chose document clustering, where each document i is commonly represented by a term-frequency vector xi = [x1i, x2i, ..., xDi], where D is the total number of keywords in the given document corpus, and xji is the number of occurrences of keyword j in document i. Keywords correspond to the words that remain after the pre-processing of stop-words removal and words stemming. Below N is the total number of documents.
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** I use document clustering, where each document i is commonly represented by a term-frequency vector xi = [x1i, x2i, ..., xDi], where D is the total number of keywords in the given document corpus, and xji is the number of occurrences of keyword j in document i. Keywords correspond to the words that remain after the pre-processing of stop-words removal and words stemming. Below N is the total number of documents.
 
* DataSets: source: http://archive.ics.uci.edu/ml/datasets/Bag+of+Words:
 
* DataSets: source: http://archive.ics.uci.edu/ml/datasets/Bag+of+Words:
 
** NYTimes news articles:  
 
** NYTimes news articles:  

Latest revision as of 17:19, 26 January 2012

Fall 2011 and Spring 2012 (RA)

Jan 27

  • Implementing my method on cluster, report to be sent soon.


Dec 23

  • Finished the study of different methods, the analysis and the implementation on a single machine.


Nov 9

  • Scaled the Spectral Hashing.
  • Working on the US Census Data (1990) [number of features (dimensions) = 69 ]
  • run experiments on small DataSet (4k) using the 3 methods LSH Random Projection, LSH Spectral Hashing and Hilbert Curve
  • now running on large DataSet (1M) using LSH only (as H-curve doesn't work on large Scale)
  • experiment results to be added to the report


Oct 26

  • I am facing problems working on very high dimensional data (d~100000) [curse of dimensionality]
    • I can't use small dataSets (1k points) to compare different methods (Hilbert curve fails for high dimensional but LSH still works)
    • The concept of distance becomes less precise as the number of dimensions grows.
    • There are other techniques to cluster the high-dimensional data (no usage of gram matrix) such as Subspace Clustering, Projected Clustering and Correlation Clustering.
  • I start working on different real DataSets with low dimension (~100)
  • Working on Scaling the Spectral Hashing by scaling the Principle Component Analysis function on matlab


Oct 12

  • Process Very-High dimensional and Very-Large Scale real DataSets
    • I use document clustering, where each document i is commonly represented by a term-frequency vector xi = [x1i, x2i, ..., xDi], where D is the total number of keywords in the given document corpus, and xji is the number of occurrences of keyword j in document i. Keywords correspond to the words that remain after the pre-processing of stop-words removal and words stemming. Below N is the total number of documents.
  • DataSets: source: http://archive.ics.uci.edu/ml/datasets/Bag+of+Words:
    • NYTimes news articles:
      • orig source: ldc.upenn.edu
      • N=300000
      • D=102660
    • PubMed abstracts: (PubMed comprises more than 21 million citations for biomedical literature from MEDLINE, life science journals, and online books)
      • orig source: www.pubmed.gov
      • N=8200000
      • D=141043
  • Currently I process 1M documents from PubMed with the dimesion 141043, total size of this DataSet on HD is about 250GB.
  • To Do: compare the performance using two different LSH families.


Spet 28

  • Updated report is here:
    • /nsl/students/dameh/reports/doc/main.pdf
  • updated sections :
    • IV. PERFORMANCE METRICS
    • VI. RESULTS


Sept 12

  • Comparison Results for H-curve, LSH-Spectral hashing and LSH-Random Projection:
  • Metrics used for comparison:
    • FN.SpaceReduction product Metric : Gram matrix level comparison which takes in account both the FN and the space reduction for the approximated gram matrix (as FN decreases space reduction increases)
      • to unify the comparison we set H-curve window_width = DataSets_size/2^k. where k is the number of the LSH hash bits (number of buckets 2^k), in this case we get same matrix size for both H-curve and LSH.
      • this metric gives us the optimal value of k (maximum).
      • LSH-Spectral hashing over performs LSH-Random projection. H-curve over performs both.
      • Graph results can be found at these addresses :
        • FN for different values of k: dameh/reports/dameh/fall11/FN.pdf
        • gram matrix size for different values of k: dameh/reports/dameh/fall11/Size.pdf
        • FN.SpaceReduction : dameh/reports/dameh/fall11/FSprod.pdf
    • Average distance between each point and its Exemplar: which is clustering error metric
      • to unify the comparison we are comparing Avg distance against the number of Exemplars, (we change a parameter in the affinity propagation to control number of Exemplars, or its an initialization parameter for k-means clustering)
      • again, LSH-Spectral hashing over performs LSH-Random projection, and LSH-Spectral hashing over performs H-curve only for smaller number of clusters
      • Graph result can be found at this address: dameh/reports/dameh/fall11/ClusteringError.pdf
    • over all, the advantage of LSH over H-cuve is the parallel property of LSH, where we can get a speedup up to 2^k for the LSH (each node takes care of each bucket)


Summer 2011 (TA)

  • Research: Gram Matrix approximation


Aug 22

  • fixing bugs in the Hilbert curve and the affinity propagation codes (still working on them)
  • revised the metric to be FN.SpaceRedcution product (Inspired from the Energy.Delay product used in the Energy-Efficient Computing )
  • cmpt300 Final grading


Aug 8

  • working on comparing LSH methods with Space filling Curve methods.
    • for the low level comparing (matrix level using average FN): we get almost same average FN for both spectral hashing and H-curve.
    • comparing in the high level (clustering error):
      • I am picking the optimal value of k for spectral hashing and choosing a widow width for H-curve that gives us same approximated matrix size, using the formula (winWidth=DataSize/2^k)
      • In the affinity propagation, using small value of self similarity (s(i,i)) we get small numbers of clusters and vise verse , so I am changing self similarity values between max and min to get same number of clusters for both methods, which will be the x-axis, on the other hand, the y-axis will be the average distance between each point and its Exemplar.
  • PS: I was sick for a week after I came back form China and then busy in setting up and grading assignments for cmpt300.


July 10 - July 24


July 8

  • Comparing our method using the "Locality Sensitive Hashing" to the method using "Hilbert Space filling Curve"
  • Initial results can be found at this address students/dameh/reports/dameh/summer11/H-CurveVSlsh.pdf


Jun 17

  • Report should be available here


Jun 03

  • Proposed new metric to be used instead of the FN ratio (more powerful to compare different families and to pick the optimal value of k)
  • More analysis on the spectral hashing
  • Writing up the report with the results to be sent soon


May 19

  • Spectral Hashing is Data dependent hashing and more powerful than the random projection, see this comparison examples in the 2D.
  • Random Projection Hashing
    • Method:
      • Take random projections of data.
      • Quantize the projections to hash value’s bits.
    • Disadvantage:
      • Data Independent Hashing.
    • Advantage:
      • Strong theoretical guarantees.
      • Simple and fast to compute (linear time).
    • Types:
      • Euclidean distance: two parameters to vary that have the opposite affect (number of random vectors k and quantization width w).
      • L1 distance: uncontrolled, as k increase error increase.
      • Cosine distance: more controlled than L1 as k increase.
  • Data-Dependent Hashing
    • Advantage:
      • Data-distribution dependent; powerful than Random Projection.
    • Disadvantage:
      • More complex to compute than Random Projection.
    • Types:
      • Spectral hashing:
        • Compute PCA.
        • Calculate the k smallest single-dimension analytical EigenFunctions.
        • Threshold the analytical EigenFnction of zero to obtain hash value's bits.
      • KernelLSH:
        • The key idea is first embed the data into a lower space using the kernel G and then do LSH in the lower dimensional space.


May 5

  • Recap
    • Problem: kernel methods' gram matrix is O(N^2), which is computationally and memory usage infeasible for large-scale datasets
    • Previous Work:
      • Low rank matrix approximation:
        • using EigenDecomposition: Optimal solution
          • Problem: requires O(N^3) computation to construct the low rank matrix
          • Solution: use Nytsrom theorem to approximate the EigenDecomposition of the matrix which requires O(m^2N) where m << N.
          • Problem: In this methods in despite of reducing the computation complexity still we need O(N^2) to store the matrix, so the next methods reduce both computation and memory.
      • Efficient implementation for computing the kernel matrix:
        • Using Spatial Indexing:
          • using Z-order, H-order, kd-tress and other spatial indexing techniques to order the points in the space and then using sliding window where the kernel function computed only between points in that window.
          • Problems: requires O(NlogN) as preprocessing to order the points, fails for very high dimensional Data and hard to parallel
          • Solution: We proposed a method that works fine for large-scale and highly dimensional data that overcomes all pervious works drawbacks, easy to parallel, requires linear time preprocessing and reduce both computation and memory usage down form quadratic to subquadratic:
        • Using Spatial Hashing or Locality sensitive hashing: where the kernel function and the cluster methods works on the buckets individually.
          • LSH families :
            • Random projection:
              • Hamming distance, Euclidean Distance, Cosine Distance
              • Problem for random projection, assume data uniformly distrubuted and it doesn’t take in account if data are in a kernel space, Solution:
            • Spectral Hashing: overcomes previous families problems
            • Kernelized LSH : Problem: more complex to compute
    • In progress: Comparing different LSH families


Spring 2011 (TA/RA)

  • Courses:
    • CMPT 885: Special Topics in Computer Architecture
    • CMPT 886: Special Topics in Operating Systems


Fall 2010 (FAS-GF/RA)

  • Courses:
    • CMPT 705: Design/Analysis Algorithms
    • CMPT 820: Multimedia Systems
  • Worked on Gram matrix approximation, High Performance/large scale application case studies


Summer 2010 (TA)

  • Worked on large Scale Kernel methods


Spring 2010 (RA)

  • Courses:
    • CMPT 768: Sound Synthesis
  • Worked on Locality sensitive hashing families and their applications and implementations