Tuesday, April 10, 2018

Fake Orgasm In [Human] Females (FOF) (Clara B. Jones, 2013)


Is fake orgasm in [Human] females (FOF) a dishonest signal? (Clara B. Jones, 2013)

For a detailed discussion of "dishonest signaling" see Dawkins &Guilford (1991 Anim. Behav. 41:5 ). Stereotyped and ritualized behaviors in humans have been documented and discussed by Eibl-Eibesfeldt (2007), in particular, the unambiguous “eyebrow-flash” motor pattern (stereotyped lifting of the eyebrows). The latter author conducted cross-cultural research including cryptic filming of the eye-flash, demonstrating that, in cultures throughout the world, the eye-flash is most likely to occur between males and females while flirting and in apparent courtship, and, other, “bonding” situations, suggesting regulation of differential fitness optima x contexts. Eibl-Eibesfeldt (2007) concluded that, with the exception of discrete vocal displays (Marler 1976), stereotyped and ritualized action patterns are rare in the human behavioral repertoire, and it is assumed in this section that the latter condition obtains because, compared to other organisms, phenotypes of Homo sapiens are shaped to a large degree by learning. Among large animals, learning mechanisms are thought to have evolved in response to rapidly changing (“stochastic”) environments favoring flexible, resilient, and “plastic”behavior, effects with the potential for rapid adjustment of the phenotype to environmental heterogeneity (e.g., Mazur 2004, Jones 2012, West-Eberhard 2003; see Proulx 2001), possibly decreasing the selective advantage of some hard-wired responses such as those dedicated by the process of ritualization to stereotypy over time and space. In the present section, a variable, “dishonest”, behavioral pattern is discussed. This response, “fake” orgasm in human females (hereafter, “dishonest orgasm”), consciously mimics involuntary, “honest”orgasm by combining and recombining discrete (usually, vocal) and graded components of the latter, autonomic response.

Relative to the theoretical and empirical literature on the structure(s) and function(s) of “honest” male orgasms, the literature on “honest” or “face” orgasm by human females is limited (but, see Komisaruk et al. 2006). In 2007a, Jones (Mialon 2012) suggested that dishonest, fake orgasm by human females (FOF) might be viewed in the context of Signaling Theory (Fig. 5.1). Following the general schema advanced by Maynard Smith and Harper (2003), a partial conceptual framework is proposed for the study of dishonest orgasms displayed by female Homo sapiens. As a simplifying assumption, dishonest orgasm is assessed herein as a straightforward manifestation of Signaler-Receiver dynamics between two adults ("action-response games") because: (1) human sexual acts may be analyzed as discrete sequences in time and space ("context-dependent" behavior), with a discriminable beginning and end; and, (2) behavioral sequences involving 1 or >1 acts of sexual congress entails reciprocal ("back-and-forth", not, necessarily, "tit-for-tat") interactions between members of a dyad. In the present treatment, dishonest orgasms are considered to represent intentional, flexible, possibly, learned responses that appear not to represent a “ritualized" or polymorphic display. However, motor patterns characteristic of FOF may be stereotyped, in particular, articulation of femur and acetabulum permitting “axial skeleton and lower limb movement”.

Following the schema of Maynard Smith and Harper (2003), dishonest orgasms are best understood to function as (1) mimicry of honest orgasm and (2) exploitation (manipulation) of the sexual partner(s). Continuing to employ the system in Maynard Smith and Harper (2003), dishonest orgasm, as mimicry, represents an "unreliable signal..., believed because it resembles a reliable cue or signal" (in the present case, honest orgasm). Dishonest orgasm may be viewed as a manifestation of proximate conflict or reactions to exogenous stimuli (alarm?, fear?, discomfort?) between sexual partners, a condition analogous to an evolutionary "arms-race" (“sexual conflict”: Rice 2000, Fricke et al. 2010). Related to the latter suggestion, some (condition-dependent) cases of dishonest orgasm may result from exogenous, aversive stimuli (disgust, such as, by a male's tactile, auditory, olfactory responses during sexual congress), or, from a female's endogenous re-actions (alarm, fear). A byproduct or goal of dishonest orgasm presenting daunting empirical challenges is the possibility that the intentional display reinforces a male's feelings of, or, his actual, dominance, control, power, possibly, inducing aggression in some situations. Following ethological theory outlined above, honest, stereotyped, involuntary signals and displays are expected to represent “true communication” and to decrease likelihoods of aggression (Tinbergen 1952, Enquist et al. 2010).

According to Maynard Smith and Harper's (2003) system, dishonest orgasm would be classified as an "icon,...a signal whose form is similar to its meaning" (similar to honest orgasm). Systematic studies of dishonest orgasm are needed to address the aforementioned suggestions, and, others. For example: How detectable are dishonest from honest orgasms? Do dishonest orgasms incorporate components of honest orgasms? What are the differential costs and benefits of dishonest compared and contrasted to honest displays of orgasm or no display? What are the ancestral (genetic, physiological) origins of dishonest and honest orgasm, and do they differ?
Dishonest orgasm apparently represents an example of an exaggerated, compound (multi-component) display whose stereotyped features derive from its similarity to honest orgasm. Benefits from dishonest orgasm may sometimes outweigh costs, sometimes not. Females are expected to be differentially skilled at faking orgasm, and, likelihoods of aggression may vary with expertise.

For example, the learned elements of dishonest orgasm may have required modifications in the genetic and physiological substrates of honest orgasm. As a likely product of directional (sexual) selection, honest orgasm, on average, is expected to respond to a narrower range of endogenous and exogenous stimuli compared to dishonest orgasm, possibly, restricting the utility of the latter response in some regimes (stable conditions). The previous rationale may represent one of several proximate benefits of flexible tactics and strategies, including, social learning via familial or other social conventions, such as, cultural traditions. Learned mechanisms are thought to minimize potential costs in heterogeneous, stressful, unstable, or“rapidly changing” conditions (Proppe et al 2011, Mazur 1986), with effects more difficult to predict or control than those attendant to honest displays of orgasm. Nonetheless, a possibly advantageous tradeoff to dishonest orgasm would be that the signaler is likely to have more control over energy expenditure compared to contexts in which involuntary, honest orgasm is expressed. This possibility suggests that measuring energetic variables is one methodological approach to studying the two forms of female orgasm empirically. Such research programs have the potential to unify studies of intra- and inter-specific social competition (West-Eberhard 1979, Tobias and Seddon 2009) with those of “rapid” evolution (West-Eberhard 2003, Hairston et al. 2005), including, differential intensities of selection.


Focal Tree Method (FTM) of Observational Study (Clara B. Jones, 1976)


Focal Tree Method (FTM) of Observational Study (Clara B. Jones, 1976)


A standard procedure in studies of plant ecology and entomology is the use of the "focal tree" method (FTM) to obtain data on the behavior of trees themselves (e.g., phenophase and its variability through T, flower-opening T, changes over T in fruit, flower, or new leaf mass) and/or of insect density, abundance, and behavior in relation to tree behavior over T (and, sometimes, S). In general, trees in a given plot or area are sampled on some schedule, preferably, though not necessarily, random. The FTM is best employed whenever the distribution, abundance, behavior, etc. of the plant (tree, shrub, epiphyte, etc.) is expected to be an independent variable inducing dependent responses in other organisms [most commonly insects: e.g. Frankie et al., 1976; I learned the technique watching Gordon Frankie & his assistant, Bill Haber and transferred the method to mantled howler monkeys (Alouatta palliata Grey)]. Scientists have been slow to apply the FTM to vertebrates, perhaps because research on vertebrates generally entails following animals over T and S to record their behavioral interactions with conspecifics (social behavior) and making the focal animal him/herself the target of observation. While this research strategy may yield important information about foraging and other behaviors by individuals and groups, target animals and variations in their behaviors are the primary focus of data-collection, minimizing the influence of variations in plant behavior on animals as well as quantifiable events ongoing in plant food resources (e.g., variations in animal behavior as a function of tree size, species, and phenophase, variations in animal behavior as a function of competition with other organisms for plant tissues and other products such as nectar and pollen). In 1983, using the FTM, Jones reported selectivity of legume flowers (Pithecolobium saman: see image of flower) at flower-opening time by mantled howler monkeys. In 2005, the same author published results for selectivity by mantled howlers for legume flowers at anthesis with the FTM. In another research project (Jones, 1976, unpublished), the FTM was used to quantify howler density and order of entry into trees x monkey age and sex as a function of tree size, phenophase, species, and habitat (tropical dry forest riparian or deciduous: Frankie et al., 1976). One or more observers may be employed with the FTM, the latter approach used in studies recently reported by Vogel and Janson (e.g., 2011). Depending on the precise design of studies employing the FTM, data are amenable to mathematical simulation or other mathematical modeling after data are collected. Alternatively, the Vogel and Janson report cited uses a quantitative model to evaluate aggressive behavior in capuchins as a function of plot size. The success of the studies discussed herein and the rich information they provide highlight the value of the FTM for research with vertebrates using plants for food.

Frankie, G.W. et al. 1976. Foraging behavior of solitary bees: implications for outcrossing of a Neotropical tree species. J. Ecol. 64: 1049-1057.

Jones, C.B. 1983. Do howler monkeys feed upon legume flowers preferentially at flower-opening time? Brenesia 21: 41-46.

Jones, C.B. 2005. Discriminative feeding on legumes by mantled howler monkeys (Alouatta palliata) may select for persistence. Neotropical Primates 13(1): 3-8.

Vogel, E.R. & Janson, C.H. 2011. Quantifying primate food distribution and abundance for socioecological studies: an objective consumer-centered model. Int. J. Primatol. DOI: 10: 1077/s10764-011-9498-7


Experiment...Food Dispersion...Hacienda La Pacifica [1976] (Clara B. Jones)


Experiment: Hacienda La Pacifica, Cañas, Costa Rica [1976] (Clara B. Jones, Ph.D.)


WHO: This post describes an unsuccesful attempt to manipulate food dispersion (distribution of food in time and space) using a Neotropical primate. The target species was the mantled howler monkey (Alouatta palliata Gray), a predominately arboreal monkey that is exclusively herbivorous, preferring new leaves, flowers, and fruit. The diet of mantled howlers, also, includes mature leaves of many plant species (mostly tree and some shrubs and vines); as well, old leaves may be eaten in due course as well as "fallback" foods, eaten when preferred food items are not available, rare in time and space, or dispersed in a manner making foraging for them energetically and/or temporally expensive, ceteris paribus. As described by Milton in her 1980 book, the foraging behavior of mantled howlers is "rule-governed", and the method described here is probably most useful with animals whose foraging behavior is tactical and strategic (e.g., animals following particular routes depending upon distribution, abundance, and/or quality of food) rather than opportunistic or "random". The method described herein should apply to animals feeding on food occurring in discrete packages (e.g., trees, termite mounds, carcasses) and/or in patches. In general, the method has utility with non-volant and non-aquatic animals.

WHAT: Foraging behavior of one mantled howler group in Costa Rican tropical dry forest was followed before manipulation for 3 d in dry season. Dry season was selected as the time of year when many preferred foods are most likely to flower and fruit, and the particular procedure employed (see below), required the absence of rain. A medium-sized, relatively abundant tree (Tabebuia neocrysantha: see image) was flowering at its peak during the study week and was selected as the target food item for logistic and practical reasons. In addition, the manipulation was performed in a relatively small patch of forest on the monkeys' home range (see below) to allow for selected post-manipulation data collection. The 3 d window of observation was selected to minimize the chance that flower quality would deteriorate, decreasing salience of the food item for the animals.

DESIGN AND APPARATUS: Two T. neocrysantha trees were selected for experimental manipulation. Close observation of the animals' foraging behavior in the days prior to the manipulation permitted confident knowledge of the group's location relative to the test site and relatively confident prediction that the group would utilize the trees selected as well as the approximate time of day of feeding. The objective of this field experiment was to record group movement(s), including routes taken, and feeding behavior(s) before and after manipulation, in particular, "decisions" regarding food type (flowers, fruit, new leaves, and/or mature leaves), distance traveled from feeding site of origin, route taken to next feeding station, etc. The manipulation entailed spraying the target trees with a liquid substance gustatorially, and, possibly, olfactorily, aversive to the animals. Based upon the suggestion of a rancher, quinine (Qualaquin, see link) was selected as the substance employed because of its low cost, because of the low likelihood that it would harm the animals, and because it was water-soluble. Furthermore, in Costa Rica, quinine is available "across the counter". The particular ratio of quinine to water should be as high as possible to ensure its effectiveness as a deterrent/avoidant substance to the animals from the food source; however, the particular ratio of aversive substance to water will be a function of body size, type of aversive product, and, possibly, other factors. The vehicle for delivery of the liquid substance was an inexpensive, plastic spray container generally employed for delivery of insecticide.

OUTCOME: The success of the project descrtbed was limited as a completed study primarily because of the small number of field assistants used with whom to divide tasks, an obvious contingency unfortunately not considered in sufficient detail before beginning what must be termed a pre-test.

BENEFITS AND COSTS: Each researcher must determine for her/himself the relative benefits and costs of the design described here. However, inherent to any experiment, whether field or laboratory, is the requirement to stress organisms in order to obtain veridical results/data. This principle applies, also, to human research.

ADDITIONAL QUESTIONS THAT MIGHT BE ADDRESSED WITH DESCRIBED METHOD:
1. travel efficiency/costs pre- and post-manipulation
2. movements in relation to cognitive complexity requiring evaluation of foraging tactics/strategies
3. assesment of possible decision hierarchy regarding food selectivity and is pre- and post-manipulation foraging "rule-governed
4. assessment of consequences of manipulation as ecological constraint (e.g., does manipulation induce fissioning or other changes in social organization)
5. does manipulation increase/decrease competition/aggression
6. which, if any subject, emerges as leader to alternative food station(s) (e.g., topics related to coordination and control at individual, sub-group, and group levels)
7. do temporal and/or spatial (e.g., detours, alternate routes) patterning of movements change from pre- to post-manipulation
8. do animals continue to utilize or reject food item(s); if reject, for how long; if reject, what stimuli salient (color, food type, etc.); do they generalize these cues to other food items


The attached link displays a published report of a foraging experiment using two baboon groups as subjects:



Saturday, March 24, 2018

Some ideas about Comparative Sociobiology & Behavioral Ecology [2007-2010] (Clara B. Jones)


NESCent Project: 2007-2010
COMPARATIVE SOCIOBIOLOGY AND BEHAVIORAL ECOLOGY: A SYNTHETIC
REVIEW
© Clara B. Jones, Ph.D.
National Evolutionary Synthesis Center (NESCent), Duke University
Revised: 2 February 2008
Introduction, Background, and Hypotheses: The purpose of this project is to conduct a
synthetic, comparative analysis of the determinants of social evolution within and across several
animal taxa, in particular, insects, fish, birds, and mammals. Social evolution, a density-dependent
effect, has been characterized in two related ways in the literature, one emphasizing an
individual’s benefits to a conspecific’s lifetime reproductive success or “inclusive fitness”
(cooperation, altruism: e.g., West, 1967), the other defining sociality as all interindividual
interactions among conspecifics and classifying it broadly as selfishness, cooperation, altruism, or
spite (e.g., Trivers, 1985), depending upon differential costs and benefits to actor and recipient.
To my knowledge, a quantitative, empirical, synthetic approach has not been undertaken on this
topic within and between families and classes, although several narrative and qualitative
assessments exist (e.g., Wilson, 1971, 1975; Vehrencamp, 1979; Helms Cahan et al., 2002).
Sociality occurs inconsistently though widely in nature, and several authors (e.g., Maynard Smith
& Szathmary, 2002; also see Taborsky, 2007) have pointed out that the evolution of social
behavior and social organization is a seminal biological transition, an insight that has been
underestimated in the scientific literature. Significantly, much debate exists not only about the
potential to derive general principles of social evolution but also about the particular parameters
of such general statements should they exist (see Crespi & Choe, 1997; Reeve, 2001; Frank,
2006; Reeve & Hölldobler, 2007; Crespi, 2007). A comparative and synthetic analysis of social
evolution has the potential to reveal patterns and processes—both conserved and taxon specific—
permitting tests of competing hypotheses for the evolution of sociality (especially Helms Cahan
et al., 2002; also see Vehrencamp, 1979; Reeve, 2001; Nowak, 2006; Frank, 2006; Reeve &
Hölldobler, 2007) as well as the identification of complementary and opposing models within and
between taxonomic groups (e.g., invertebrates and vertebrates; birds and mammals; terrestrial and
aquatic forms; arboreal and terrestrial species). These works lead to the following tests:
Patterns and processes in the dataset will reveal a “series” or “trajectory” of events
about dispersal, breeding, and alloparental care (after Helms-Cahan et al., 2002).
This approach permits the construction of a decision tree for each unit within and
between taxa and the quantitative analysis of alternative “trajectories” including
benefits and constraints once a database based upon empirical results for these factors
has been assembled. Helms Cahan et al. (2002, Table 1, p. 210) provide a
preliminary, qualitative schema based upon data for ≈50 species; however, the
proposed database would expand this treatment to the broadest possible range of taxa
among insects, fish, birds, and mammals based upon empirical reports, both
published and unpublished. The primary hypothesis derived from the schema of
Helms-Cahan et al. is: Social evolution is a function of differential benefits and
constraints from dispersal, breeding, and alloparental care.
Recent attempts to formulate synthetic statements of social evolution (e.g.,
Vehrencamp, 2000; Reeve, 2001; Crespi, 2005; Faulkes et al., 1997; Reeve &
Hölldobler, 2007) have advanced somewhat different suites of characteristics than
those of Helms Cahan et al. (2002). As a result, the proposed database will include,
as well, measures of costs of reproduction, “reduced reproduction”, tradeoffs between
helping and offspring production, the presence or absence of castes, coefficients of
within-group relatedness, intragroup competition, and intergroup competition,
expanding the hypothesis above by several factors.
The proposed database would, also, permit quantitative tests of Vehrencamp’s (1979)
narrative schema of “evolutionary routes to sociality”. Specifically, this author
proposes “familial” (solitary, subsocial, intermediate subsocial, and eusocial) and
parasocial” (solitary, communal, quasisocial, semisocial, and eusocial) routes as
trajectories differentiating classes of social organisms. In addition to providing a
quantitative treatment of these ideas, the proposed review would evaluate these
routes” across a broad range of taxa.
Nowak (2006) has recently proposed five “rules for the evolution of cooperation”:
kin selection, direct reciprocity, indirect reciprocity, network reciprocity, and group
selection. This author provides theoretical treatments for each strategy (“rule”), and
the realism of his results can be evaluated by the proposed analysis.
The proposed review will also permit tests of Frank’s (2006) theoretical formulations
concerning the differential effects for social evolution of kin selection and
repression of competition” (Frank, 1995, 1998, 2006) in addition to other work on
the topic of “policing” (Ratnieks & Wenseleers, 2005). Combined with the questions
based upon the analysis of Helms Cahan et al. (2002), the new project may yield
insights into the necessary and/or sufficient factors favoring social evolution.
Previous work has sometimes viewed social effects and sexual/reproductive effects as
effectively the same (West, 1967; also see Taborsky, 1994; Reeve, 2001; Reeve &
Hölldobler, 2007). Importantly, however, recent treatments demonstrate the value of
treating Mating Systems and Social Systems from a coevolutionary perspective
(Crespi, 2007, Figure 20.1). The present project will follow Crespi’s (2007)
paradigm in its specification, delineation, and analysis of character traits/states, both
those advanced in the previous literature and those deemed particularly significant by
this author and her future collaborators (e.g., quantified local effects as they might
influence density-dependence (see West et al., 2002). Paucity of available datasets
may require collaboration with one or more theoreticians and analyses of data will
require consultation with biometricians and, possibly, specialists in bioinformatics.
Related to the above, several authors have emphasized the importance of
polymorphisms and polyphenisms for behavioral expression (e.g., West-Eberhard,
2003; Jones, 2005a, b), and it has been noted that development involves “the
ontogeny of all aspects of the phenotype, at all levels of organization, and in all
organisms” (West-Eberhard, 2003, p. vii). Hypothetically, the current conceptual
framework might be conducted at any or all levels of biological/organismal analysis
from the molecular to the community, tasks that appear at this point in time to be
daunting. Clearly, judgment calls will need to be made concerning the parameters
and logistics of the present project, decisions to be made in accord with collaborators
and advisors.
As discussed in Jones (2005a, c; also see Jarvis, 1978; Lovegrove & Wissel, 1988; Heinze &
Keller, 2000; Jones & Agoramoorthy, 2003; Russell et al., 2003; Whitfield, 2006; Toth et al.,
2007), the literature on social evolution provides many indicators that energetic factors, in
particular, energy savings, may provide fundamental explanations for its rise (e.g., Leontideus
rosalia: Kleiman, 1977; Kierulff & Rylands, 2003). I am particularly interested in the potential
for pathways sensitive to energy-maximization and/or energy-savings to be implicated across taxa
in the evolution of complex sociality (see, especially, Schoener, 1971; Toth et al., 2007 and
references). Ultimately, it is likely that mathematical expressions of the fundamental energetic
aetiology of sociality can be expressed as a function of body mass (m) derived from the
3
fundamental relation, E= mc2. This treatment requires that the database envisioned herein include
information on environmental regimes (e.g., food dispersion and quality) that can be treated
quantitatively with the factors advanced by Helms Cahan et al. (2002). Other measures of
possible significance (e.g., resource patchiness and/or environmental stochasticity; see Emlen,
1973; Roughgarden, 1979) can, also, be added to the analysis and to the factors included in our
main hypothesis stated above, decisions that will be refined as the program progresses.
Figure 1 (see http://www.nescent.org/dir/sabbatical_fellow.php?id=00005: © Clara B. Jones)
displays suggested directions of potential conflict(s) (differential optima) where one class
or category of individuals imposes costs in inclusive fitness upon another class or
category of individuals (closed arrows) to which the latter may respond
adaptively (broken arrows). Each of these potential conflicts among interacting
individuals or groups from different age-sex categories (or from the category of
interaction between food and females) may be analyzed in the context of generalized
conflict theory” (e.g. Rice, 2000; Gavrilets, 2000; Burt & Trivers, 2006), including
mechanisms of coevolution resulting from evolutionary “arms races” (Van Valen, 1973).
Across taxa, the evolution of social behavior (interindividual interactions among
conspecifics) is likely to reveal the significance of causes, mechanisms, functions, and
consequences of patterns of conflict for complex sociality--the repression of competition
by selfish, cooperative, altruistic, or spiteful behavior."
Search Strategy for the Analysis: In addition to the solicitation of unpublished data,
conventional search strategies will be employed, including searching databases (e.g., Biosis,
PubMed) and secondary sources (e.g., Wilson, 1971, 1975). Other approaches will be evaluated
with one or more collaborators as the project proceeds, with data quality issues always in mind.
Sample “Call for Data”: An Excel file detailing all variables will be provided to potential
contributors for input of data with 6 month timeframe for submission of data and ≈2 year
timeframe for assembly of database.
Potential Confounding Variables/Data Quality Issues: Judgment calls will need to be made by
the author and her future collaborator(s) concerning, in particular: assessing error, including
treatment of empty cells (if appropriate to the quantitative analyses, confidence intervals will be
assigned); related to the prior issue: it is unlikely that the shapes of the populations of sampling
distributions can be assessed; uneven quality of data, in particular, unpublished data;
inconsistencies between data for the same species; definitions of factors (e.g., primary vs.
secondary dispersal; varieties of co-breeding); architecture of dataset relative to methods of
quantitative analysis (How to analyze large comparative datasets?), etc. Since much of the theory
upon which the present project is based is relatively recent, a major problem will be to assemble
complete datasets for a sufficient sample size. This challenge presents yet another quality issue:
using several sources to assemble complete sets of information for the same species. With
patience and diligence and with input from a variety of colleagues, these and remaining quality
issues are likely to be minimized for a first approximation of the outlined objectives and
conceptual framework using multivariate and/or regression treatments as well as comparative
analysis.
References
Burt, A., & Trivers, R. (2006). Genes in conflict. Cambridge: Cambridge University Press.
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Crespi, B.J. (2005). Social sophistry: logos and mythos in the forms of cooperation. Ann. Zool.
Fennici, 42, 00-00.
Crespi, B.J. (2007). Comparative evolutionary ecology of social and sexual systems: waterbreathing
insects come of age. In Duffy, J.E., & Thiel, M. (Eds.), Evolutionary ecology of
social and sexual systems: Crustaceans as model organisms (pp. 442-460). Oxford:
Oxford University Press.
Crespi, B.J., & Choe, J.C. (1997). Explanation and evolution of social systems. In Choe, J.C., &
Crespi, B.J. (Eds.), The evolution of social behavior in insects and arachnids (pp. 499-
524). New York: Cambridge University Press.
Emlen, J.M. (1973). Ecology: An evolutionary approach. Reading, MA: Addison-Wesley
Publishing Company.
Faulkes, C.G., Bennett, N.C., Bruford, M.W., O’Brien, H.P., Aguilar, G.H., & Jarvis, J.U.M.
(1997). Ecological constraints drive social evolution in the African mole-rats.
Proceedings of the Royal Society of London B, 264, 1619-1627.
Frank, S.A. (1995). Mutual policing and repression of competition in the evolution of cooperative
groups. Nature, 377, 520-522.
Frank, S.A. (1998). Foundations of social evolution. Princeton, NJ: Princeton University Press.
Frank, S.A. (2006). Social selection. In Fox, C.W., & Wolf, J.B. (Eds.), Evolutionary genetics:
Concepts and case studies (pp. 350-363). Oxford, UK: Oxford University Press.
Gavrilets, S. (2000). Rapid evolution of reproductive barriers driven by sexual conflict. Nature,
403, 886-889.
Heinze, J, & Keller, L. (2000). Alternative reproductive strategies: a queen perspective in ants.
Trends in Ecology and Evolution, 15, 508-512.
Helms Cahan, S., Blumstein, D.T., Sundström, L., Liebig, J., & Griffin, A. (2002). Social
trajectories and the evolution of social behavior. Oikos, 96, 206-216.
Jarvis, J.U.M. (1978). Energetics of survival in Heterocephalus glaber (Rüppell), the naked molerat
(Rodentia: Bathyergidae). Bulletin of the Carnegie Museum of Natural History, 6, 81-
87.
Jones, C.B. (2005a). Behavioral flexibility in primates: Causes and consequences. New York:
Springer.
Jones, C.B. (2005b). Social parasitism in mammals with particular reference to Neotropical
primates. Mastozoologia Neotropical, 12, 19-35.
Jones, C.B., & Agoramoorthy, G. (2003). Alternative reproductive behaviors in primates: towards
general principles. In: Jones, C.B. (Ed.), Sexual selection and reproductive competition in
primates: New perspectives and directions (pp. 103-139). Norman, OK: American
Society of Primatologists.
Kierulff, M.C.M., & Rylands, A.B. (2003). Census and distribution of the golden lion tamarin
(Leontopithecus rosalia). American Journal of Primatology, 59, 29-44.
Kleiman, D.G. (1977). Characteristics of reproduction and sociosexual interactions in pairs of
lion tamarins (Leontopithecus rosalia). In: Kleiman, D.G. (Ed.), The biology and
conservation of the Callitrichidae; 1975 Aug 18-20. Washington, DC: Smithsonian
Institution Press.
Lovegrove, B.G., & Wissel, C. (1988). Sociality in mole-rats: metabolic scaling and the role of
risk sensitivity. Oecologia, 74, 600-606.
Maynard Smith, J., & Szathmary, E. (2002). The origins of life: From the birth of life to the
origin of language. Oxford, UK: Oxford University Press.
Nowak, M.A. (2006). Five rules for the evolution of cooperation. Science, 314, 1560-1563.
Ratnieks, F.L.W., & Wenseleers, T. (2005). Policing insect societies. Science, 307, 54-56.
Reeve, H.K. (2001). In search of unified theories in sociobiology: help from social wasps. In
Dugatkin, L.A. (Ed.), Model systems in behavioral ecology: Integrating conceptual,
5
theoretical, and empirical approaches (pp. 57-71). Princeton, NJ: Princeton University
Press.
Reeve, H.K., & Hölldobler, B. (2007). The emergence of a superorganism through intergroup
competition. Proceedings of the National Academy of Sciences USA, 104, 9736-9740.
Roughgarden, J. (1979). Theory of population genetics and evolutionary ecology. New York:
Macmillan.
Russell, A.F., Sharpe, L.L., Brotherton, P.N.M., & Clutton-Brock, T.H. (2003). Cost
minimization by helpers in cooperative vertebrates. Proceedings of the National Academy
of Science USA, 100, 3333-3338.
Schoener, T.W. (1971). Theory of feeding strategies. Annual Review of Ecology and Systematics,
2, 369-404.
Taborsky, M. (1994). Sneakers, satellites, and helpers: parasitic and cooperative behavior in fish
reproduction. Advances in the Study of Behaviour, 23, 1-100.
Taborsky, M. (2007). Cooperation built the Tower of Babel. Behavioral Processes, 76(2), 95-99.
Toth, A.L., Varala, K., Newman, T.C., Miguez, F.E., Hutchison, S.K., Willoughby, D.A.,
Simons, J.F., Egholm, M., Hunt, J.H., Hudson, M.E., & Robinson, G.E. (27 September
2007). Wasp gene expression supports an evolutionary link between maternal behavior
and eusociality. Sciencexpress, www.sciencexpress.org, 10.1126/science.1146647, 1-4 +
figures.
Trivers, R.L. (1985). Social evolution. Menlo Park, CA: Benjamin/Cummings.
Van Valen, L. (1973). A new evolutionary law. Evolutionary Theory, 1, 1-30.
Vehrencamp, S.L. (1979). The roles of individual, kin, and group selection in the evolution of
sociality. In Marler, P., & Vandenbergh (Eds.), Handbook of behavioral neurobiology:
Social behavior and communication, Volume 3 (pp. 351-394). New York: Plenum.
Vehrencamp, S.L. (2000). Evolutionary routes to joint-female nesting in birds. Behavioral
Ecology, 11, 334-344.
West, M.J. (1967). Foundress associations in polistine wasps: dominance hierarchies and the
evolution of social behavior. Science, 157, 1584-1585.
West-Eberhard, M.J. (2003). Developmental plasticity and evolution. Oxford: Oxford University
Press.
West, S.A., Pen, I., & Griffin, A.S. (2002). Cooperation and competition between relatives.
Science, 296, 72-75.
Whitfield, J. (2006). In the beat of a heart: Life, energy, and the unity of nature. Washington, DC:
The John Henry Press.
Wilson, E.O. (1971). The insect societies. Cambridge, MA: Belknap.
Wilson, E.O. (1975). Sociobiology: The new synthesis. Cambridge, MA: Belknap.

Thursday, December 28, 2017

What Is "Behavioral Ecology"?: A White Paper (by Clara B. Jones, 12/28/2017)

What Is "Behavioral Ecology"? A White Paper (by Clara B. Jones, 12/28/2017) 

Definition of Behavioral Ecology: Variations in behavior relative to ecological [economic] factors, in particular, spatial & temporal dispersion [distribution & abundance] of limiting resources; Ways in which Dispersion [Distribution & Abundance in Time & Space] of organisms "maps" onto Dispersion of limiting resources [in T & S in a given population]--the [John Hurrel] Crook-ian Model of Behavioral Ecology [Behaviour Supplement X, 1964]...limited by energetics x sex [on average & ceteris paribus]--males expected to be Time-Minimizers, females expected to be Energy-Maximizers

FIRST PRINCIPLES OF BEHAVIORAL ECOLOGY:: E[nergy]: Acquisition->Consumption->Allocation====> Worker &/or Reproductive &/or Dependent...(Males, T[ime] Minimizers; Females, E[nergy] Maximizers)

The organizing principle of this White Paper is that "Behavioral Ecology" is a sub-field of Ecology, not a sub-field of Animal Behavior, Comparative Psychology, Ethology, or Anthropology.

As such, Behavioral Ecologists will study behavioral, including, social*, traits as they operate/function at population, community, and ecosystem levels, incorporating concerns for scale, mechanisms, development, tradeoffs, mediating factors, and filtering, among other related issues.

Students of Behavioral Ecology will demonstrate an awareness of the roots of their field, including, but, not limited to, the early work of John Eisenberg, John Hurrell Crook, Stephen Emlen, Jack Bradbury, and Sandy Vehrencamp.

Many of the traits of interest to Behavioral Ecologists will be genetically correlated; thus, genetic and genomic studies will be employed to identify genes, gene complexes, and/or circuits underlying behavioral, including, social*, traits--relative to abiotic and biotic environmental factors and interactions.

The journal, Behavioral Ecology, will be viewed as an Ecology journal on par with the journals, Functional Ecology, Journal of Animal Ecology, Ecology and Evolution, and Journal of Applied Animal Ecology.

Behavioral Ecology will reflect the intimate links between Ecology and Evolutionary Biology (EcoEvo)**.

Behavioral Ecology will become a predictive discipline, not only a project of descriptive work. As such, a truly predictive Behavioral Ecology will be a hypothetico-deductive enterprise based on First Principles.

Like its parent discipline, Ecology, Behavioral Ecology methodology will incorporate modeling and simulation, as well as, field and laboratory experiments and will investigate tradeoffs and alternative hypotheses. Practitioners can conduct experiments with agent-based [individual-based] methods.

Behavioral Ecologists will be trained by Ecologists and Evolutionary Biologists (EcoEvo) from Departments of Ecology and Evolution and, in addition, will study Ethology, Animal Behavior, & Population Genetics.

Behavioral Ecology will be characterized by strong theory, and students will be trained in quantitative methods, at minimum, statistics, biostatistics, coding, calculus, agent-based [individual-based] modeling. Higher-order quantitative skills might incorporate Fisher's Fundamental Equation, the Price Equation, inclusive fitness ("kin selection") & Hamilton's Rule, as well as, the Nash Equilibrium. As in other sub-fields of Ecology, theory will take the form of Mathematics, though verbal formulations will often be a preliminary step. Marshall's book, Social Evolution and Inclusive-Fitness Theory, might be incorporated into any graduate student's program:

https://www.amazon.com/Social-Evolution-Inclusive-Fitness-Theory/dp/0691161569/ref=sr_1_1?keywords=james+marshall+social+biology&qid=1558917758&s=books&sr=1-1-catcorr

The practitioner of Behavioral Ecology will study virtually any topic investigated by other Ecologists. A good exercise is to peruse the contents of the journals mentioned above, interpolating and/or reframing most any paper into a study of Behavioral Ecology, including, Social* Biology. Once the practitioner gets the knack of doing this, s/he/they can advance to other topics generated by books such as The Princeton Guide To Ecology or any good Ecology textbook. In 2013, the British Ecological Society identified "100 fundamental questions in Ecology" that can be re-framed as questions for research in Behavioral Ecology and Social Biology: https://besjournals.onlinelibrary.wiley.com/doi/epdf/10.1111/1365-2745.12025

Behavioral Ecology will include a new sub-field, Applied Behavioral Ecology, that may be of particular interest to students of Human Behavior and Conservation Biology.***

Behavioral Ecology will embrace a new sub-field, Behavioral MacroEcology, that will, in part, investigate ecosystem, regional, and global patterns of diversity in Behavioral Ecological factors and traits (including Sociobiological* factors and traits) and that may require assembly of large databases (as per a new sub-field, Computational Behavioral Ecology).

Behavioral Ecology will be an active special interest group of ESA****.

*Group-formation, Group-maintenance, Group-living, Intraspecific/Interspecific interactions, Cooperative and/or Altruistic traits, Facilitation, and Co-existence. Intraindividual traits ["behavioral syndromes"] will be studied as they may influence group and/or population effects.

**"...tending, in the course of generations, to modify organic structures in accordance with external circumstances, as food, the nature of the habitat, and the meteoric agencies...." Charles Darwin, Origin of Species, 1861 (3rd Edition)

***See, for example, Palkovacs EP, Moritsch MM, Contolini GM, Pelletier F (2018) Ecology of harvest-driven trait changes and implications for ecosystem management. Frontiers in Ecology and the Environment, 16(1): 20-28, doi: 10.1002/fee.1743

****An organism's use of energy (E) is the essence of Behavioral ECOLOGY [1st Principles of Ecology= Acquisition, Consumption, Allocation (e.g., to Behavior]. Similarly, a group-living organism's use of energy (E) is the essence of Social Biology [a sub-field of Behavioral ECOLOGY]. All Behaviors [action patterns, motor patterns] are a function of the laws of thermodynamics.

Primary CitationJohn Hurrel Crook, Behaviour. Supplement No. 10, The Evolution of Social Organisation and Visual Communication in the Weaver Birds (Ploceine) (1964)