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Spatial Statistics in Ecology: Point Pattern Analysis

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Title: Spatial Statistics in Ecology: Point Pattern Analysis


1
Spatial Statistics in EcologyPoint Pattern
Analysis
  • Lecture Two

2
Re-Cap and Introduction to Point Pattern Analysis
  • First-order effects look at trends over space
  • Second order effects look at PAIRS OF POINTS i.e.
    the spatial dependence or covariance structure of
    pairs of variables over space
  • Spatial dependence gives rise to different types
    of processes

3
Types of Processes
  • HOMOGENEOUS or stationary processes
  • Mean is constant over R (space)
  • Variance is constant over R
  • Covariance is dependant on DISTANCE AND DIRECTION
  • Sothere is NO global trend!
  • .there is NO first order effect!

4
Types of Processes
  • HETEROGENEOUS processes or non-stationarity
  • Constant mean
  • Constant variance
  • Covariance is ONLY dependant on DISTANCE
  • SO.your process is ISOTROPIC!

5
Point Patterns
  • Recall that point patterns deal with events that
    occur in discrete locations
  • Point patterns consist of events with variation
    in the mean value of the event
  • Can you think of what types of point patterns
    ecologists deal with? They will all be either
  • RANDOM, CLUMPED or HOMOGENEOUS

6
Is the distribution clustered or regular?
  • s1, s2, s3, s4 are events which have
    coordinates (x,y) in area R.
  • events are objects with various intensity in
    this case height

Study region R
s1
s3
1.2m
1.8m
s2
s4
1.6m
1.6m
7
Isotropic versus Stationary
  • Intensity ? (s) for a first-order property.
    For a stationary process this is constant over R.
  • For second-order intensity ? (si, sj). If its
    isotropic spatial dependence is a function of
    length h (distance). If its stationary it
    depends on only vector distance (both direction
    and distance) not on absolute location

s1
s3
isotropic
1.8m
1.2m
h
s2
s4
h
1.6m
1.6m
stationary
Study region R
8
Visualizing point patterns
  • Visualization is the simplest method to use
    for point pattern analysis. These are called dot
    maps. What would happen to the observed patterns
    of the scale (grain or extent) changed?
  • A random pattern can look ordered if the scale
    in too small.

What type of patterns are these?
9
Exploring spatial point patterns
  • Statistics and plots can be derived for point
    patterns. These can be used to describe the
    pattern or how mean values of points change
    across space. The simplest is the QUADRAT METHOD.
    The of events per unit area are counted and
    divided by area of each square to get a measure
    of the intensity of each quadrat

10
Quadrat Methods
  • This can tell is something about how the
    processes changes over R. We have now transformed
    our data into area data. There are obvious
    problems with this type of approach however. We
    throw away a lot of spatial detail and the edge
    effects may give us a different pattern to the
    one we observe.

Doesnt take into account relative position of
points and is dependant on this size of the grid.
Close points also count as much as far points!
11
Kernel Estimation
  • Kernel estimation weights points that are
    further away less than those that are close.
    Point A will count less than Point B.

12
Bandwidth is important
With a very large bandwidth no pattern is seen.
With a very small bandwidth there is too fine a
resolution to see patterns. Which bandwidth picks
up the trend?
13
Second Order-effects
  • Recall that second order effects deal with PAIRS
    OF POINTS
  • How do variables covary at each point in space
  • Nearest-neighbor techniques are the most commonly
    used

14
Nearest-neighbor techniques
2
1
3
6
5
4
7
15
Distribution functions
  • NN can be used to create an event-event plot
  • If the slope rises fast the points are dense
    (ie. the pairs of NN are clustered together).
    This is subjective though and makes no
    corrections for edge effects OR for points other
    than the NN

16
Second-Order Point Pattern Analysis The K
function
  • The K analysis provides a measure of the reduced
    second moment measure or K function of the
    observed process. This provides a more effective
    summary at a wider range of scales. However, care
    must be taken that within the scale of interest
    the data is homogeneous or isotropic.
  • ?K(h) E
  • measure of mean intensity
  • n
  • R
  • n events
  • R (area of observation)
  • K k function
  • h distance
  • Sothis tells you the expected
  • of events within distance h
  • of a randomly selected event

17
How does it work?
  • To get the k function you visit all 120 events
    and find how many are within a distance of 2 km
    from each event. This is done for each ?

2 events within distance h from event i
18
Edge Effects
  • Edge effects can seriously degrade
    distance-based statistics, and there are at least
    two ways to deal with these. One way is to invoke
    a buffer area around the study area, and to
    analyze only a smaller area nested within the
    buffer. By common convention, the analysis is
    restricted to distances of half the smallest
    dimension of the study area. This, of course, is
    expensive in terms of the data not used in the
    analysis. A second approach is to apply an edge
    correction to the indicator function for those
    points that fall near the edges of the study
    area Ripley and others have suggested a variety
    of geometric corrections.

19
Confidence Limits
  • Ripley derived approximations of the test of
    significance for normal data. But data are often
    not normal, and assumptions about normality are
    particularly suspect under edge effects. So in
    practice, the K function is generated from the
    test data, and then these data are randomized to
    generate the test of significance as confidence
    limits. For example, if one permuted the data 99
    times and saved the smallest and largest values
    of L(d) for each d, these extremes would indicate
    the confidence limits at alpha0.01 that is, an
    observed value outside these limits would be a
    1-in-a-hundred chance. Likewise, 19
    randomizations would yield the 95 confidence
    limits Note that these estimates are actually
    rather imprecise simulations suggest that it
    might require 1,000-5,000 randomizations to yield
    precise estimates of the 95 confidence limits,
    and gt10,000 randomizations to yield precise 99
    limits.

20
Modelling Spatial Point Patterns First-order --
CSR
  • Modelling of spatial point patterns is done using
    the COMPLETE SPATIAL RANDOMNESS (CSR) model.
  • Events follow a homogenous Poisson process over
    the study region (which as we know is normally
    violated)
  • CSR provides a baseline of complete randomness
    from which we can quantify deviations as regular
    or clustered

21
How does it work?
  • Regularity in the first map and clustering in
    the second can be quantified as departures from
    randomness. Either event-event or point-event
    distances are used. This can only tell us that
    there is a departure from CSR. The K function can
    also be extended with its focus on dependence
    over a range of scales however if second-order
    effects are present (in our case there are
    obvious spatial effects) other methods should be
    used

22
Locations of redwood seedlings in a forest
Population Level
  • Many spatial techniques have their origins in
    plant ecology where describing and analyzing the
    spatial distribution of plants, frequently within
    small areas of only a few square meters, can
    yield interesting ecological information. This
    example uses a small set of data comprising the
    locations of 62 redwood seedlings distributed in
    an area of 23m2. From our standpoint we might
    expect evidence of clustering around existing
    parent trees.

23
Locations of the seedlings
24
Nearest-Neighbor Analysis
25
Cumulative Distribution Function
26
The k-function
27
Test of CSR (complete spatial randomness)
The test statistic indicates a strong departure
from randomness towards clustering
28
Kernel Bandwidth 4 km
29
Kernel Bandwidth 2km
30
Kernel Bandwidth 0.5km
31
Lecture Two Summary
  • Point patterns can be analyzed to determine the
    TREND of a variable over space or the spatial
    dependence of the pattern over space.
  • To look at first-order effects use quadrat
    methods or kernel estimation
  • To look at second-order effects use NN techniques
    or K-functions
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