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            Small Worlds and Mega

            更新時間:2023-11-24 10:04:35 閱讀: 評論:0

            第一次嘗試-準爸爸讀胎教故事

            Small Worlds and Mega
            2023年11月24日發(作者:授之以魚不如授之以漁)

            Small Worlds and Mega-Minds: Effects of Neighborhood Topology

            on Particle Swarm Performance

            James Kennedy

            Bureau of Labor Statistics,

            USA

            Kennedy-Jim@

            Abstract This study manipulated the neighborhood

            topologies of particle swarms optimizing four test

            functions. Several social network structures were

            tested, with “small-world” randomization of a speci-

            fied number of links. Sociometric structure and the

            small-world manipulation interacted with function

            to produce a significant effect on performance.

            1

            Introduction

            The particle swarm algorithm is a method for opti-

            mizing hard numerical functions bad on a metaphor

            of human social interaction (Eberhart, Simpson, and

            Dobbins, 1996; Kennedy, 1997). Individuals repre-

            nted as multidimensional points interact with one

            another and converge on optimal regions the prob-

            of

            lem space. While originally developed as a simulation

            of social behavior, the algorithm has become accepted

            as a computational intelligence technique related to

            evolutionary algorithms (Angeline, 1998; Eberhart,

            Simpson, and Dobbins, 1996).

            Human interpersonal interaction, which has been

            theorized to contribute to cognitive process (e.g.,

            Brothers, 1997; Levine, Resnick, and Higgins, 1993),

            occurs

            in

            the context of a social structure, often de-

            picted by social scientists as a network of connections

            between pairs of individuals. Rearch since the late

            1940’s (e.g., Bavelas, 1950) has shown that communi-

            cation within a group, and ultimately the group’s per-

            formance, is affected by the structure of the social net-

            work. Particle rearch has examined veral

            swarm

            simple social structures, in particular the interaction of

            individuals with their immediate adjacent neighbors

            and fully connected interaction of all individuals in the

            population, but has not riously examined effects of

            various “social structures” on optimization.

            2

            Small Worlds, Mega-Minds

            In the 1960’s, Milgram (1967) conducted an ex-

            periment to learn how interconnected people in the

            United States are. Individuals picked at random from

            the populations of Midwestern cities were given a

            two

            folder containing the name of someone in Cambridge,

            Massachutts. The individuals were told to nd the

            folder to someone they knew, who they thought might

            be likely to know the person Cambridge; the person

            in

            who received the folder then was to do the same, nd

            it to someone they knew, and on. The question was,

            so

            how many links are required to connect two people

            lected at random? The surprising answer was that a

            median of only five connections were required to get

            the folder from a random person in Nebraska to a target

            in Massachutts.

            Granovetter (1973) theorized that “weak ties” are

            important in determining the optimality of social

            structures. According to his much-cited paper, infor-

            mation traveling through distant acquaintances is very

            important, largely becau it provides information that

            a clique or ingroup might not posss. Strong ties or

            connections between pairs of individuals are likely to

            be found within cohesive groups, where interaction is

            frequent and norms are established and accepted, while

            weak ties form bridges between strongly-connected

            clusters. The weak ties then create paths between indi-

            viduals who are not directly linked, allowing the spread

            of innovation through a population.

            Recently, Watts and Strogetz (1998) examined the

            effects of changing a small number of randomly-

            chon edges in a regular ring lattice. They demon-

            strated that changing fewer than

            1

            percent of edges in a

            network where every individual is connected to its

            K

            nearest neighbors (the “lbest” topology ud in many

            particle swarm studies) resulted in a structure that fea-

            tured high clustering, as found in a regular lattice, but

            with a greatly reduced average distance between nodes.

            Clustering is defined by the average number of neigh-

            bors that any two connected nodes have in common. In

            a ring lattice, clustering is high, but the average dis-

            tance between nodes is also high. Randomizing a

            small proportion of connections maintains a high level

            of

            envi orderly network should propitiate the spread of

            information throughout a population. For a particle

            swarm population, a manipulation affecting the topo-

            logical distance between individuals might affect the

            rate and degree to which population members are at-

            tracted toward a particular solution.

            In support of this hypothesis, Hutchins

            (1995)

            simulated a group of individuals reprented as parallel

            constraint satisfaction networks. Selected nodes of

            each network were connected to the corresponding

            nodes of neighboring networks, and the were allowed

            to influence one another through the connections. The

            networks were optimized through the usual technique

            of asynchronous updating (Hopfield,

            1984),

            allowing

            however for inputs from other nets. Hutchins found

            that the groups of networks converged on optima when

            there were a moderate number of connections among

            them, but converged on poor solutions when the cogni-

            tive structures were highly connected. He concluded

            that such mega-minds were especially susceptible to where

            confirmation bias, which is a tendency to ek confir-

            mation for hypothes rather than using the proper

            logical method of falsifying. Networks that were

            highly connected in a “mass mental telepathy” (p.

            252)

            quickly succumbed to the attraction of very poor local

            optima. Thus there appeared to be an optimal level of

            connectivity among individuals for optimizing the net-

            works.

            Latane’s social impact theory (Latank,

            1981;

            Nowak, Szamrej, and Latad, asrts that the

            1990)

            probability that someone will adopt an attitude or belief

            is a function of the Strength, Immediacy, and Number

            of others who endor the attitude (immediacy is the

            reciprocal of distance, while strength is a social attrib-

            ute like status or persuasiveness). Social impact theory

            though is prented in terms of univariate social influ-

            ence, that is, attitudes and beliefs are considered one at

            a time, independent of one another. Most interesting

            particle swarm problems are multivariate, for instance,

            optimizing the pattern of weights in a neural network,

            as it has long been presumed that cognitive variables

            should be optimized in relation to one another, i.e.,

            cognitions should be consistent with one another

            (Abelson et

            al.,

            1968).

            The individual will arch the

            nodes connected to it in the social network

            -

            its neigh-

            to determine which single member of the borhood

            -

            neighborhood has achieved the best performance

            so

            far. Thus the sociometric topology of the particle

            swarm population determines the breadth of influences

            on the individual, and how many neighbors the indi-

            how small vidual has in common with its neighbors

            -

            its world is.

            In sum, we have reason to hypothesize that highly

            connected particle swarm societies might not be as

            good at finding optima in a problem space, compared

            to moderately connected social networks. It has been

            shown (e.g., Kennedy, that isolated particle

            1997)

            swarm individuals perform very poorly: the interac-

            tions between particles make the algorithm

            work.

            What might be the best social structure for particles?

            The prent study begins to investigate this question.

            3 Particle

            The Swarm

            The particle swarm algorithm is bad on the meta-

            phor of individuals refining their knowledge by inter-

            acting with one another. particle is a moving point

            A

            in a hyperspace. Besides its position and velocity

            Zi

            ?;,

            each particle stores the best position in the arch

            space it has found thus far in a vector

            jji

            .

            The velocity

            of

            the particle is adjusted stochastically toward its pre-

            vious best position, and the best position found by any

            member of its neighborhood:

            V’i 91

            + +

            V’i

            (jj;

            -

            ii)

            +

            v)Z

            (jjg

            -

            ?i)

            pI

            and are random numbers defined by

            vZ

            their upper limit (usually The index g is the index

            2.0).

            of

            the particle in the neighborhood with the best per-

            formance far, that is the best vector found by

            so

            so

            pg

            any member of the neighborhood.

            Once has been calculated, the particle’s position

            Gi

            Zi

            is adjusted:

            2; ii

            f-

            +

            The algorithm is often compared to the family of

            evolutionary algorithms, as a stochastic population-

            bad arch of a problem space. Particle swarm dif-

            fers

            from an

            evolutionary methods in important way,

            however: it does not implement lection of the fittest.

            Instead, individuals persist over time, and adapt by

            changing.

            Particles have historically been studied in two gen-

            eral types overlapping neighborhoods, called gbest

            of

            and lbest (Eberhart, Simpson, and Dobbins,

            1996).

            In

            the gbest neighborhood every individual is attracted to

            the best solution found by any member of the entire

            population. This structure then is equivalent to a fully

            connected social network; every individual is able to

            compare the performances of every other member

            of

            the population, imitating the very best. the lbest

            In

            network each individual affected by the best per-

            is

            formance of its

            K immediate neighbors in the topologi-

            cal population a regular ring lattice. In the usual

            -

            ca,

            K=2, the individual affected by only its imme-

            is

            diately adjacent neighbors.

            The choice of social structures ud has been thus

            far a matter of individual artistry, with some lore and

            little data to help the rearcher choo a strategy. The

            lore suggests that

            gbest populations tend to converge

            more rapidly than

            lbest populations, when they con-

            verge, but are also more susceptible to convergence on

            local optima.

            vi

            1932

            Authorized licend u limited to: SUN YAT-SEN UNIVERSITY. Downloaded on January 19, 2010 at 22:42 from IEEE Xplore. Restrictions apply.

            4

            Neighborhood Types

            In the trials reported below, populations of indi-

            20

            viduals were configured into the configurations,

            :

            shown in Figure

            1

            0

            Circles (hest): each individual is connected to

            its immediate neighbors only

            K

            0

            Wheels: one individual is connected to all oth-

            ers, and they are connected to only that one

            Stars (gbest): every individual is connected to

            every other individual, and

            Random edges: for particles, random

            N N

            symmetrical connections are assigned between

            pairs of individuals.

            In the Circle topology, which is a regular ring lat-

            tice as studied by Watts and Strogetz (1998), parts of

            the population that are distant from one another are

            also independent of one another. Thus one gment of

            the population might converge on a local optimum,

            while another gment converges on a different opti-

            mum or keeps arching. Influence spreads from

            neighbor to neighbor in this topology, until, if an opti-

            mum really is the best found by any part of the popula-

            tion, it will eventually pull all the particles in. Small-

            world reassignments of connections have the effect of

            shortening the distances between neighborhoods, and

            one would expect the population to converge faster

            -

            perhaps too fast when the shortcuts are implemented.

            -

            The Wheel topology effectively isolates individuals

            from one another, as all information has to be commu-

            nicated through the focal individual. This focal indi-

            vidual compares performances of all individuals in the

            neighborhood, and adjusts its trajectory toward the

            very best. If adjustments result in improvement in the

            focal individual’s performance, then that improvement

            is communicated out to the rest of the population.

            Thus the focal individual rves as a kind of buffer or

            filter, slowing the speed

            of

            transmission of good

            solu-

            tions through the population. (It should be noted that

            the Wheel is a common configuration for many busi-

            ness and government organizations.)

            Small-world shortcuts in the Wheel may have two

            effects. One is to create mini-neighborhoods, where

            peripheral individuals are influenced by individuals

            who are in direct contact with the focal or hub individ-

            ual. Thus incread communication can result from

            implementing shortcuts, and we might again expect

            faster convergence the collaborating subpopulation.

            in

            The buffering effect of the focal particle though should

            prevent overly rapid convergence on local optima. It is

            also possible to create islands, or disconnected groups Two kinds of control groups were run.

            of individuals, which may collaborate among them-

            lves to optimize the function. This would introduce a

            diminishing

            of

            communication, as the isolated indi-

            viduals would not have access to information about the

            best region found by the population; nor would the rest

            of the population benefit from their success.

            The Star or Gbest topology links every individual

            with every other, that the social source influence

            so

            of

            is in fact the best-performing member of the popula-

            tion. Finally, the Random topology simply assigns

            connections at random between pairs of particles.

            Populations were tested on a t of well-studied test

            functions covering a range of problem types. Circles

            were defined with and Circles and Wheels were

            K=2,

            studied with veral degrees of small-world shortcuts;

            shortcuts are meaningless in either Random

            or

            fully

            connected Star networks.

            The trials implemented a modified particle swarm

            version using a constriction coefficient propod by

            Maurice Clerc (Clerc and Kennedy, 1999, under re-

            view). This version is simple to implement and has the

            advantage that the population converges without re-

            limit to velocities. constant coeffi- quiring a

            A

            cient is calculated using the upper limit of

            p p,

            =

            +

            p2

            :

            v,

            x=l--+ 1

            9

            JFG

            2

            The particle swarm formula is then modified:

            V’i ~l(jj

            + +

            x(V’j

            - -

            ii)+

            ~z(Ijg

            gill

            This modification, ud with values of has

            p

            >

            4.0

            ,

            been shown to result in excellent optimization of test

            functions. Since it has desirable convergence proper-

            ties and removes the necessity of imposing the arbi-

            trary velocity limit, it was ud in the prent imple-

            mentations.

            5

            Method

            The particle swarm program was modified to allow

            control over sociometry. Standard test functions were

            taken from the literature evolutionary computation,

            of

            including De Jong’s fl sphere function, Griewank,

            Rastrigin, and Ronbrock functions.

            All

            functions

            were implemented in 30 dimensions. Each function

            was run with wheel and circle sociometries, with 1,

            0,

            2, 3,4, and random small-world shortcuts. Thus the

            5

            experiment had three independent variables: function

            (4

            levels: Func), basic neighborhood topology (2 lev-

            els: Ntype), and shortcuts levels: Nmoved). The de-

            (6

            pendent variable ud was population-best performance

            on the test function after 1,000 iterations. Each

            FuncxNtypexNmoved condition of the experiment was

            run twenty times.

            A randomly

            connected group was run for each function, as was a

            gbest or fully-connected topology. Becau the

            groups were not orthogonal to the experimental design,

            they were analyzed parately.

            1933

            Authorized licend u limited to: SUN YAT-SEN UNIVERSITY. Downloaded on January 19, 2010 at 22:42 from IEEE Xplore. Restrictions apply.

            All trials ud populations of 20 individuals, with

            (p=4.1. Functions tested are shown in Table 2.

            Data were analyzed using analysis of variance

            (ANOVA). The output of ANOVA is the statistic.

            F

            F

            is

            the between-group variance (the average difference

            between cell means) divided by the within-group vari-

            ance, which is taken to be an estimate of error.

            A

            “p-

            value” indicates the probability of deciding that the

            null hypothesis of no difference is fal when it is actu-

            ally true. Traditionally a p-value less than

            0.05

            is con-

            sidered significant.

            6 Results

            Becau the various functions were scaled differ-

            ently, resulting

            in

            incomparable means and variances,

            within-function data were standardized to a scale with

            mean=O and standard deviation=

            1,

            and factorial

            ANOVA was conducted on the transformed data. As

            mentioned above, in order to prerve the orthogonality

            of the experimental design, Random and Gbest condi-

            tions were dropped from the analysis. main effect

            No

            is reported for Function since scores were standardized

            to that domain, thus all means are 0.0. Analytic results

            are shown in Table means and standard deviations

            1;

            are in Appendix 1.

            As can be en, there was no significant main effect

            for Neighborhood Type, though it interacted signifi-

            cantly with Function and with Number Moved.

            The interaction of Neighborhood Type with Func-

            tion was very strong, as it was en that populations

            performed better on three of the functions when they

            were in the Circle configuration, regardless of the

            number

            of edges moved, than in the Wheel configura-

            tion. Performance on the Rastrigin function, however,

            was just the opposite; Rastrigin populations performed

            better in the Wheel topology.

            Table Analysis of variance of factors interac-

            1.

            3

            with

            tions. NType=Neighborhood Type, Func=Function,

            Nmoved=Number of Edges Moved.

            Source

            FuncxNtype

            Nmoved 0.0780

            FuncxNmoved 15 0.43 0.9694

            NtypexNmoved 2.78 0.0168

            FuncxNtypexNmoved 0.9724

            unusually high where Number Moved=4 and topol-

            ogy=Wheel, indicating inconsistent performance. In

            the Wheel topology, as mentioned above, shortcuts can

            result in alliances and formation of collaborating

            sub-

            populations, or in isolated islands, cut off from the

            group’s progress.

            This

            same effect ems to account for the nearly-

            significant main effect of Number Moved, p<0.0780.

            The mean performance for Number Moved4 was

            wor than that for other values.

            A cond analysis was performed in order to de-

            termine how the Gbest (Star: fully connected topology)

            and Random (Randomly connected topology) condi-

            tions compared to the rest. Scores were standardized

            per function as before, but including Gbest and Ran-

            dom conditions along with the orthogonal ones. T-tests

            were conducted, comparing the orthogonal data with

            Gbest only, and then comparing the orthogonal data

            with Random only. Interestingly, both Gbest and Ran-

            dom performed better than the other conditions com-

            bined, p<0.05. Inspection of means showed that Gbest

            topology was better than the combined mean on every

            hnction, while the Random topology outperformed

            others on all functions except Rastrigin.

            7

            Discussion

            Watts and Strogetz’ mathematical model showed

            the effects of randomizing a very small proportion of

            connections. In the prent particle swarm implemen-

            tations with populations of 20 individuals it was im-

            possible to move

            1%

            or fewer of the links; smaller

            population sizes however are usually appropriate with

            the particle swarm method. Therefore this may not be

            considered a valid test

            of

            the small-world hypothesis,

            but rather simply an investigation into the effect. On

            the other hand, the findings do show that the

            so-

            ciometry of the particle swarm has a significant effect

            on its ability to find optima: the optimal pattern of con-

            nectivity among individuals depends on the problem

            being solved.

            This study did not systematically manipulate as-

            pects of test functions, but there are grounds for

            speculation

            as

            to an explanation for the interaction. As

            en in Appendix 2, the Sphere and Ronbrock func-

            tions are unimodal, with smooth surfaces. The

            Griewank function depicted in two dimensions looks

            like a bumpy bowl that slopes gradually toward the

            global optimum textured with many slight local op-

            tima. The Rastrigin function though features many

            different ,functions Wheels performed better than Angeline, P. J. Evolutionary optimization ver-

            -

            might be that the buffering Circles on Rastrigin only

            -

            effect of communicating through a “hub” slows the

            population’s attraction toward the population best, pre-

            venting premature convergence on local optima. Thus

            a hypothesis can be propod for later rearch: cen-

            tralized Wheel topologies may perform better on of America,

            strongly multimodal landscapes.

            Some effects may be due to the convergence en-

            forced by the constriction coefficient. Interestingly,

            one study with the Vmnx-type particle swarm reported Clerc, M., and Kennedy,

            much poorer results on three of the functions

            -

            but Particle Swarm: Explosion, Stability, and Conver-

            the “standard” particle swarm performed better on the gence in a Multi-Dimensional Complex Space.

            Rastrigin function (Angeline,

            1998). (1996).

            This may suggest Eberhart, R. C., Simpson, P., and Dobbins, R.

            that constriction is disadvantageous on problems with Computational Intelligence PC Boston:

            many good local optima. On the other hand, that study

            implemented slightly different forms of the func-

            tions, including initialization ranges, and informal

            testing with the current programs found that the con-

            stricted version performed much better than the stan- Hopfield, J. J. Neurons with graded respon

            dard form on all functions. have collective computational properties like tho

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            Figure

            1.

            Sociometric topologies ofpopulations of size Top left is circle, top right is the

            12. K=2,

            same neighborhood with “small-world” shortcuts. the lower left is a “wheel” configuration,

            two

            On

            and lower right is the wheel with small-world changes.

            two

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            by

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            I I

            91.6434190 46.7294972

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            Appendix Functions tested. sphere function. Top right: Griewank. Bottom left: Ronbrock. Bottom

            2.

            Top

            Iej:

            right: Rastrigin. All functions are plotted for their full range as reported in the text.

            1938

            Authorized licend u limited to: SUN YAT-SEN UNIVERSITY. Downloaded on January 19, 2010 at 22:42 from IEEE Xplore. Restrictions apply.

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