| Literature DB >> 30607247 |
Rocio Joo1,2, Marie-Pierre Etienne3, Nicolas Bez4, Stéphanie Mahévas2.
Abstract
In movement ecology, the few works that have taken collective behaviour into account are data-driven and rely on simplistic theoretical assumptions, relying in metrics that may or may not be measuring what is intended. In the present paper, we focus on pairwise joint-movement behaviour, where individuals move together during at least a segment of their path. We investigate the adequacy of twelve metrics introduced in previous works for assessing joint movement by analysing their theoretical properties and confronting them with contrasting case scenarios. Two criteria are taken into account for review of those metrics: 1) practical use, and 2) dependence on parameters and underlying assumptions. When analysing the similarities between the metrics as defined, we show how some of them can be expressed using general mathematical forms. In addition, we evaluate the ability of each metric to assess specific aspects of joint-movement behaviour: proximity (closeness in space-time) and coordination (synchrony) in direction and speed. We found that some metrics are better suited to assess proximity and others are more sensitive to coordination. To help readers choose metrics, we elaborate a graphical representation of the metrics in the coordination and proximity space based on our results, and give a few examples of proximity and coordination focus in different movement studies.Entities:
Keywords: Collective behaviour; Dyadic movement; Indices; Movement ecology; Spatio-temporal dynamics; Trajectories
Year: 2018 PMID: 30607247 PMCID: PMC6307229 DOI: 10.1186/s40462-018-0144-2
Source DB: PubMed Journal: Mov Ecol ISSN: 2051-3933 Impact factor: 3.600
Metrics for measuring dyad joint movement
| Metric | Range | Parameters fixed ad hoc and Assumptions |
|---|---|---|
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| [0, 1] | i) |
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| ]−1,1] | |
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| [0,1] | i) Reference area, ii) |
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| [0, 1] | Reference area; |
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| [0, 1] | i) Every zone within ellipse has same odd of being transited, ii) |
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| [0, 1] | distance threshold |
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| [-1, 1] | |
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| [0, 1] | |
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| [-1, 1] | |
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| [-1, 1] | |
Note: The formulas assume simultaneous fixes. ; T is the number of (paired) fixes in the dyad; δ is a distance-related parameter. K is a kernel function. A, B: the two individuals in the dyad; T: number of fixes in the dyad; D is the chance-expected distance between A and B; n: number of observed fixes where A and B are simultaneously in the reference area (when a subscript is 0, it represents the absence of the corresponding individual from the reference area); p: probability of finding A and B simultaneously in the reference area (same interpretation as for n when a subscript is 0); is the ellipse formed with positions X and X, and maximum velocity ϕ from individual A (analogous for B); S represents the surface of the spatial object between braces; V (and V, resp.) represents the analysed motion variable of A (and B); (and ) represent their average; β is a scale parameter; θ, the absolute angle; N is the number of m-similar consecutive segments within the series of analysed steps
Fig. 1Example of Prox for δ=3 (left panel) and Cs (right panel). Circles and squares represent locations of two different individuals. Left panel: The numbers inside as well as the arrows represent the time sequence of both tracks. Grey lines correspond to the distances between simultaneous fixes; their values are shown. At the bottom: a dummy variable indicating if distances are below δ for each pair of simultaneous fixes, then the derived Prox and D (average of observed distances). Right panel: Grey lines represent the distances of all permuted fixes; D is their average
Fig. 2Two examples of the derivation of LT and HAI. LT was computed using expected frequencies. HAI was computed with . Circles and squares represent locations of two different individuals. The numbers inside as well as the arrows represent the time sequence of both tracks. Grey lines correspond to the distances between simultaneous fixes; their values are shown. The dashed lines circle an arbitrary reference area
Fig. 3Example of the derivation of the joint potential path area (when ϕ=10). Circles and squares represent locations of two different individuals; the numbers inside represent the time sequence. The grey scales of the ellipses correspond to the time intervals used for their computation: from light grey for the [1,2] interval to dark grey for the [3,4] interval. The black regions with white dashed borders correspond to the potential meeting areas
Fig. 4Example of the derivation of CSE and CSEM when the compared features correspond to the positions of the individuals and δ=3. Circles and squares represent positions of two different individuals. The grey scales and arrows represent the time sequence of both tracks. Dotted lines represent the distances between simultaneous fixes; their values are shown. Values for all steps for CSEM computation are also shown
Fig. 5Example of a dyad for which correlations in longitude, latitude and an average of both (r,r and r, respectively), DI,DI and DI are derived. Circles and squares represent locations of two different individuals; the numbers inside represent the time sequence. Displacement lengths and absolute angle values are also shown
Fig. 6One example of dyad for each case scenario representing contrasting patterns of proximity and coordination (in direction and speed, C and C, respectively). Numbers correspond to scenario ID in Table 2. Solid lines represent the two trajectories, the solid points correspond to the start of the trajectories. The black dashed circumferences represent arbitrary reference areas; two circumferences correspond to an absence of a common reference area
Case scenarios
| ID | Proximity | Coordination | |
|---|---|---|---|
| Direction | Speed | ||
| 1 | High | Same | Same |
| 2 | High | Same | Different |
| 3 | High | Independent | Same |
| 4 | High | Independent | Different |
| 5 | High | Opposite | Same |
| 6 | High | Opposite | Different |
| 7 | Medium | Same | Same |
| 8 | Medium | Same | Different |
| 9 | Medium | Independent | Same |
| 10 | Medium | Independent | Different |
| 11 | Medium | Opposite | Same |
| 12 | Medium | Opposite | Different |
| 13 | Low | Same | Same |
| 14 | Low | Same | Different |
| 15 | Low | Independent | Same |
| 16 | Low | Independent | Different |
| 17 | Low | Opposite | Same |
| 18 | Low | Opposite | Different |
Fig. 7Boxplots of each metric by category of proximity. Green, orange and purple correspond to case scenarios of high, medium and low proximity. For each category, the solid horizontal bar corresponds to the median, the lower and upper limit of the box correspond to the first and the third quartiles, while the solid vertical line joins the minimum to the maximum values. The green and purple boxplots are shifted to the left and right, respectively, to distinguish them better in case of overlap. X-axis: The metrics ranging from 0 to 1 are on the left (up to DI) while those ranging from -1 to 1 are on the right
Fig. 8Boxplots of each metric by category of direction coordination. Green, orange and purple correspond to case scenarios of same, independent and opposite direction. For each category, the solid horizontal bar corresponds to the median, the lower and upper limit of the box correspond to the first and the third quartiles, while the solid vertical line joins the minimum to the maximum values. The green and purple boxplots are shifted to the left and right, respectively, to distinguish them better in case of overlap. X-axis: The metrics ranging from 0 to 1 are on the left (up to DI) while those ranging from -1 to 1 are on the right
Fig. 9Boxplots of each metric by category of speed coordination. Green and orange correspond to case scenarios of same and different speed. For each category, the solid horizontal bar corresponds to the median, the lower and upper limit of the box correspond to the first and the third quartiles, while the solid vertical line joins the minimum to the maximum values. The green boxplots are shifted to the left to distinguish them better in case of overlap. X-axis: The metrics ranging from 0 to 1 are on the left (up to DI) while those ranging from -1 to 1 are on the right
Evaluation of the two criteria for each metric
| Metric | Criterion | |||||
|---|---|---|---|---|---|---|
| C1: Practical use | C2: Dependence on parameters / assumptions | |||||
| Attainable range | Interpretation for joint movement | Sensitivity to | ||||
| P |
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| From always distant (0) to always close (1) |
| Low | Low | |
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| No | Difficult: i) negative value close to 0 difficult to interpret; ii) series-length dependent | Medium | Medium | Low | Not user tractable (null hypothesis of independent movement) |
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| From always distant and out of | Low | Low | Medium | Not user tractable (reference area and distance threshold) |
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| Same as | Low | Low | Medium | Not user tractable (reference area) |
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| From no (0) to permanent (1) potential overlap |
| Low | Low | |
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| From highly synchronous (0) to asynchronous (1) |
| Low | Low | |
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| From anticorrelated (-1) to correlated (1) | Low |
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| From opposite (-1) to cohesive (1) movement in displacement | Low | Low |
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| From opposite (-1) to cohesive (1) movement in azimuth | Low |
| Low |
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| From opposite (-1) to cohesive (1) movement in both mixed displacement and azimuth effects | Low |
| Low | |
Note: P =Proximity, C= coordination in speed, C= coordination in direction, S = reference area. *Depending on v (see section on case scenarios). Text in bold correspond to positive attributes
Fig. 10Representation of metrics in terms of their distance relative to proximity and coordination