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Data Mining using Fractals and Power laws

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Title: Data Mining using Fractals and Power laws


1
Data Mining using Fractals and Power laws
  • Christos Faloutsos
  • Carnegie Mellon University

2
THANK YOU!
  • Prof. Azer Bestavros
  • Prof. Mark Crovella
  • Prof. George Kollios

3
Overview
  • Goals/ motivation find patterns in large
    datasets
  • (A) Sensor data
  • (B) network/graph data
  • Solutions self-similarity and power laws
  • Discussion

4
Applications of sensors/streams
  • Smart house monitoring temperature, humidity
    etc
  • Financial, sales, economic series

5
Motivation - Applications
  • Medical ECGs blood pressure etc monitoring
  • Scientific data seismological astronomical
    environment / anti-pollution meteorological
    Kollios, ICDE04

6
Motivation - Applications (contd)
  • civil/automobile infrastructure
  • bridge vibrations Oppenheim02
  • road conditions / traffic monitoring

7
Motivation - Applications (contd)
  • Computer systems
  • web servers (buffering, prefetching)
  • network traffic monitoring
  • ...

http//repository.cs.vt.edu/lbl-conn-7.tar.Z
8
Web traffic
  • Crovella Bestavros, SIGMETRICS96

1000 sec
9
Self- Storage (Ganger)
  • self- self-managing, self-tuning,
    self-healing,
  • Goal 1 petabyte (PB) for CMU researchers
  • www.pdl.cmu.edu/SelfStar

10
Problem definition
  • Given one or more sequences
  • x1 , x2 , , xt , (y1, y2, , yt, )
  • Find
  • patterns clusters outliers forecasts

11
Problem 1
bytes
  • Find patterns, in large datasets

time
12
Problem 1
bytes
  • Find patterns, in large datasets

time
Poisson indep., ident. distr
13
Problem 1
bytes
  • Find patterns, in large datasets

time
Poisson indep., ident. distr
14
Problem 1
bytes
  • Find patterns, in large datasets

time
Poisson indep., ident. distr
Q Then, how to generate such bursty traffic?
15
Overview
  • Goals/ motivation find patterns in large
    datasets
  • (A) Sensor data
  • (B) network/graph data
  • Solutions self-similarity and power laws
  • Discussion

16
Problem 2 - network and graph mining
  • How does the Internet look like?
  • How does the web look like?
  • What constitutes a normal social network?
  • What is the network value of a customer?
  • which gene/species affects the others the most?

17
Network and graph mining
Food Web Martinez 91
Protein Interactions genomebiology.com
Friendship Network Moody 01
Graphs are everywhere!
18
Problem2
  • Given a graph
  • which node to market-to / defend / immunize
    first?
  • Are there un-natural sub-graphs? (eg.,
    criminals rings)?

from Lumeta ISPs 6/1999
19
Solutions
  • New tools power laws, self-similarity and
    fractals work, where traditional assumptions
    fail
  • Lets see the details

20
Overview
  • Goals/ motivation find patterns in large
    datasets
  • (A) Sensor data
  • (B) network/graph data
  • Solutions self-similarity and power laws
  • Discussion

21
What is a fractal?
  • self-similar point set, e.g., Sierpinski
    triangle

zero area (3/4)inf infinite length! (4/3)inf
...
Q What is its dimensionality??
22
What is a fractal?
  • self-similar point set, e.g., Sierpinski
    triangle

zero area (3/4)inf infinite length! (4/3)inf
...
Q What is its dimensionality?? A log3 / log2
1.58 (!?!)
23
Intrinsic (fractal) dimension
  • Q fractal dimension of a line?
  • Q fd of a plane?

24
Intrinsic (fractal) dimension
  • Q fractal dimension of a line?
  • A nn ( lt r ) r1
  • (power law yxa)
  • Q fd of a plane?
  • A nn ( lt r ) r2
  • fd slope of (log(nn) vs.. log(r) )

25
Sierpinsky triangle
correlation integral CDF of pairwise
distances
26
Observations Fractals lt-gt power laws
  • Closely related
  • fractals ltgt
  • self-similarity ltgt
  • scale-free ltgt
  • power laws ( y xa
  • FK r-2)
  • (vs ye-ax or yxab)

27
Outline
  • Problems
  • Self-similarity and power laws
  • Solutions to posed problems
  • Discussion

28
Solution 1 traffic
  • disk traces self-similar (also Leland94)
  • How to generate such traffic?

29
Solution 1 traffic
  • disk traces (80-20 law) multifractals

bytes
time
30
80-20 / multifractals
20
80
31
80-20 / multifractals
20
80
  • p (1-p) in general
  • yes, there are dependencies

32
More on 80/20 PQRS
  • Part of self- storage project

time
cylinder
33
More on 80/20 PQRS
  • Part of self- storage project

q
r
s
34
Overview
  • Goals/ motivation find patterns in large
    datasets
  • (A) Sensor data
  • (B) network/graph data
  • Solutions self-similarity and power laws
  • sensor/traffic data
  • network/graph data
  • Discussion

35
Problem 2 - topology
  • How does the Internet look like? Any rules?

36
Patterns?
  • avg degree is, say 3.3
  • pick a node at random guess its degree, exactly
    (-gt mode)

count
?
avg 3.3
degree
37
Patterns?
  • avg degree is, say 3.3
  • pick a node at random guess its degree, exactly
    (-gt mode)
  • A 1!!

count
avg 3.3
degree
38
Patterns?
  • avg degree is, say 3.3
  • pick a node at random - what is the degree you
    expect it to have?
  • A 1!!
  • A very skewed distr.
  • Corollary the mean is meaningless!
  • (and std -gt infinity (!))

count
avg 3.3
degree
39
Solution2 Rank exponent R
  • A1 Power law in the degree distribution
    SIGCOMM99

internet domains
40
Solution2 Eigen Exponent E
Eigenvalue
Exponent slope
E -0.48
May 2001
Rank of decreasing eigenvalue
  • A2 power law in the eigenvalues of the adjacency
    matrix

41
Power laws - discussion
  • do they hold, over time?
  • do they hold on other graphs/domains?

42
Power laws - discussion
  • do they hold, over time?
  • Yes! for multiple years Siganos
  • do they hold on other graphs/domains?
  • Yes!
  • web sites and links Tomkins, Barabasi
  • peer-to-peer graphs (gnutella-style)
  • who-trusts-whom (epinions.com)

43
Time Evolution rank R
Domain level
  • The rank exponent has not changed! Siganos

44
The Peer-to-Peer Topology
count
Jovanovic
degree
  • Number of immediate peers ( degree), follows a
    power-law

45
epinions.com
  • who-trusts-whom Richardson Domingos, KDD 2001

count
(out) degree
46
Why care about these patterns?
  • better graph generators BRITE, INET
  • for simulations
  • extrapolations
  • abnormal graph and subgraph detection

47
Outline
  • problems
  • Fractals
  • Solutions
  • Discussion
  • what else can they solve?
  • how frequent are fractals?

48
What else can they solve?
  • separability KDD02
  • forecasting CIKM02
  • dimensionality reduction SBBD00
  • non-linear axis scaling KDD02
  • disk trace modeling PEVA02
  • selectivity of spatial/multimedia queries
    PODS94, VLDB95, ICDE00
  • ...

49
Full Content Indexing, Search and Retrieval from
Digital Video Archives
  • Query (6TB of data)
  • Search results
  • (ranked)

Storyboard
Collage with maps, common phrases, named
entities and dynamic query sliders
www.informedia.cs.cmu.edu
50
What else can they solve?
  • separability KDD02
  • forecasting CIKM02
  • dimensionality reduction SBBD00
  • non-linear axis scaling KDD02
  • disk trace modeling PEVA02
  • selectivity of spatial/multimedia queries
    PODS94, VLDB95, ICDE00
  • ...

51
Problem 3 - spatial d.m.
  • Galaxies (Sloan Digital Sky Survey w/ B. Nichol)
  • - spiral and elliptical galaxies
  • - patterns? (not Gaussian not uniform)
  • attraction/repulsion?
  • separability??

52
Solution3 spatial d.m.
CORRELATION INTEGRAL!
log(pairs within ltr )
- 1.8 slope - plateau! - repulsion!
ell-ell
spi-spi
spi-ell
log(r)
53
Solution3 spatial d.m.
w/ Seeger, Traina, Traina, SIGMOD00
log(pairs within ltr )
- 1.8 slope - plateau! - repulsion!
ell-ell
spi-spi
spi-ell
log(r)
54
spatial d.m.
Heuristic on choosing of clusters
55
Solution3 spatial d.m.
log(pairs within ltr )
- 1.8 slope - plateau! - repulsion!
ell-ell
spi-spi
spi-ell
log(r)
56
Problem4 dim. reduction
skip
  • given attributes x1, ... xn
  • possibly, non-linearly correlated
  • drop the useless ones

57
Problem4 dim. reduction
skip
  • given attributes x1, ... xn
  • possibly, non-linearly correlated
  • drop the useless ones
  • (Q why?
  • A to avoid the dimensionality curse)
  • Solution keep on dropping attributes, until the
    f.d. changes! SBBD00

58
Outline
  • problems
  • Fractals
  • Solutions
  • Discussion
  • what else can they solve?
  • how frequent are fractals?

59
Fractals power laws
  • appear in numerous settings
  • medical
  • geographical / geological
  • social
  • computer-system related
  • ltand many-many more! see Mandelbrotgt

60
Fractals Brain scans
  • brain-scans

61
fMRI brain scans
  • Center for Cognitive Brain Imaging _at_ CMU
  • Tom Mitchell, Marcel Just,

62
More fractals
  • periphery of malignant tumors 1.5
  • benign 1.3
  • Burdet

63
More fractals
  • cardiovascular system 3 (!) lungs 2.9

64
Fractals power laws
  • appear in numerous settings
  • medical
  • geographical / geological
  • social
  • computer-system related

65
More fractals
  • Coastlines 1.2-1.58

1.1
1
1.3
66
(No Transcript)
67
GIS points
  • Cross-roads of Montgomery county
  • any rules?

68
GIS
  • A self-similarity
  • intrinsic dim. 1.51

log(pairs(within lt r))
log( r )
69
ExamplesLB county
  • Long Beach county of CA (road end-points)

log(pairs)
log(r)
70
More power laws areas Korcaks law
Scandinavian lakes Any pattern?
71
More power laws areas Korcaks law
log(count( gt area))
Scandinavian lakes area vs complementary
cumulative count (log-log axes)
log(area)
72
More power laws Korcak
log(count( gt area))
Japan islands area vs cumulative count (log-log
axes)
log(area)
73
More power laws
  • Energy of earthquakes (Gutenberg-Richter law)
    simscience.org

Energy released
log(count)
Magnitude log(energy)
day
74
Fractals power laws
  • appear in numerous settings
  • medical
  • geographical / geological
  • social
  • computer-system related

75
A famous power law Zipfs law
log(freq)
a
  • Bible - rank vs. frequency (log-log)

the
Rank/frequency plot
log(rank)
76
TELCO data
count of customers
best customer
of service units
77
SALES data store96
count of products
aspirin
units sold
78
Olympic medals (Sidney00, Athens04)
log(medals)
log( rank)
79
Even more power laws
  • Income distribution (Paretos law)
  • size of firms
  • publication counts (Lotkas law)

80
Even more power laws
  • library science (Lotkas law of publication
    count) and citation counts (citeseer.nj.nec.com
    6/2001)

log(count)
Ullman
log(citations)
81
Even more power laws
  • web hit counts w/ A. Montgomery

yahoo.com
82
Fractals power laws
  • appear in numerous settings
  • medical
  • geographical / geological
  • social
  • computer-system related

83
Power laws, contd
  • In- and out-degree distribution of web sites
    Barabasi, IBM-CLEVER

log indegree
from Ravi Kumar, Prabhakar Raghavan, Sridhar
Rajagopalan, Andrew Tomkins
- log(freq)
84
Power laws, contd
  • In- and out-degree distribution of web sites
    Barabasi, IBM-CLEVER
  • length of file transfers CrovellaBestavros
    96
  • duration of UNIX jobs Harchol-Balter

85
Conclusions
  • Fascinating problems in Data Mining find
    patterns in
  • sensors/streams
  • graphs/networks

86
Conclusions - contd
  • New tools for Data Mining self-similarity
    power laws appear in many cases

Bad news lead to skewed distributions (no
Gaussian, Poisson, uniformity, independence, mean,
variance)
X
87
Resources
  • Manfred Schroeder Chaos, Fractals and Power
    Laws, 1991
  • Jiawei Han and Micheline Kamber Data Mining
    Concepts and Techniques, 2001

88
References
  • vldb95 Alberto Belussi and Christos Faloutsos,
    Estimating the Selectivity of Spatial Queries
    Using the Correlation' Fractal Dimension Proc.
    of VLDB, p. 299-310, 1995
  • M. Crovella and A. Bestavros, Self similarity in
    World wide web traffic Evidence and possible
    causes , SIGMETRICS 96.

89
References
  • J. Considine, F. Li, G. Kollios and J. Byers,
    Approximate Aggregation Techniques for Sensor
    Databases (ICDE04, best paper award).
  • pods94 Christos Faloutsos and Ibrahim Kamel,
    Beyond Uniformity and Independence Analysis of
    R-trees Using the Concept of Fractal Dimension,
    PODS, Minneapolis, MN, May 24-26, 1994, pp. 4-13

90
References
  • vldb96 Christos Faloutsos, Yossi Matias and Avi
    Silberschatz, Modeling Skewed Distributions Using
    Multifractals and the 80-20 Law Conf. on Very
    Large Data Bases (VLDB), Bombay, India, Sept.
    1996.
  • sigmod2000 Christos Faloutsos, Bernhard Seeger,
    Agma J. M. Traina and Caetano Traina Jr., Spatial
    Join Selectivity Using Power Laws, SIGMOD 2000

91
References
  • vldb96 Christos Faloutsos and Volker Gaede
    Analysis of the Z-Ordering Method Using the
    Hausdorff Fractal Dimension VLD, Bombay, India,
    Sept. 1996
  • sigcomm99 Michalis Faloutsos, Petros Faloutsos
    and Christos Faloutsos, What does the Internet
    look like? Empirical Laws of the Internet
    Topology, SIGCOMM 1999

92
References
  • ieeeTN94 W. E. Leland, M.S. Taqqu, W.
    Willinger, D.V. Wilson, On the Self-Similar
    Nature of Ethernet Traffic, IEEE Transactions on
    Networking, 2, 1, pp 1-15, Feb. 1994.
  • brite Alberto Medina, Anukool Lakhina, Ibrahim
    Matta, and John Byers. BRITE An Approach to
    Universal Topology Generation. MASCOTS '01

93
References
  • icde99 Guido Proietti and Christos Faloutsos,
    I/O complexity for range queries on region data
    stored using an R-tree (ICDE99)
  • Stan Sclaroff, Leonid Taycher and Marco La
    Cascia , "ImageRover A content-based image
    browser for the world wide web" Proc. IEEE
    Workshop on Content-based Access of Image and
    Video Libraries, pp 2-9, 1997.

94
References
  • kdd2001 Agma J. M. Traina, Caetano Traina Jr.,
    Spiros Papadimitriou and Christos Faloutsos
    Tri-plots Scalable Tools for Multidimensional
    Data Mining, KDD 2001, San Francisco, CA.

95
Thank you!
  • Contact info
  • christos ltatgt cs.cmu.edu
  • www. cs.cmu.edu /christos
  • (w/ papers, datasets, code for fractal dimension
    estimation, etc)
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