!! Potential)Sources)of)Modern)Day)Slavery) William)R.)DiPietro)) Professor!of!Economics!! Daemen!College!

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Advances)in)Social)Sciences)Research)Journal) )Vol.3,)No.1) Publication)Date:Jan.25,2016 DoI:10.14738/assrj.31.1793. ' Potential)Sources)of)Modern)Day)Slavery) William)R.)DiPietro)) ProfessorofEconomics DaemenCollege Abstract) Globally,)the)existence)and)persistence)of)slavery)is)a)major)problem)that)needs)to)be) addressed.)in)addition)to)calling)attention)to)slavery)by)making)slavery)a)high)priority) issue)on)the)national)agenda,)gaining)some)understanding)of)the)sources)of)slavery)is) necessary)for))governments)to)effectively)deal)with)slavery.)this)paper)considers)four) factors) as) potential) determinants) of) slavery) at) the) national) level.) They) are) economic) development,)population)growth,)unemployment,)and)natural)resource)rental)income.) Empirically,)cross)country)regression)analysis)is)undertaken))to)test)whether)these)four) factors)are)of)consequence)for)slavery.)the)results)suggest)that)each)of)the)four)factors) is) relevant) for) slavery,) with) higher) levels) of) economic) development) leading) to) lower) levels) of) slavery,) and) higher) population) growth,) unemployment,) or) rental) income),) leading)to)higher)levels)of)slavery.) INTRODUCTION) It is appalling, but true, that slavery still exists in the modern world. From almost any moral perspective, or from practically any notion of what it means to be civilized, slavery, the ownership of one individual by another, is an abomination. One of the major feasts of the Jewishpeople,thePassover,celebratestheemancipationoftheJewishpeoplefromthecruel fateofslavery.fromarawlsianpointofview,welfareinsocietycanbemaximizedbymaking theworstpossiblestateinsocietyasgoodaspossible.asthereisalmostnothingworsethat can be imagined than for a human being to be in slavery, this means, from a Rawlsian perspective,thatsocialwelfareismaximizedbyminimizingslavery. Inordertoreduceslavery,tobeabletodevisepoliciestoeffectivelycontrolslavery,itisfirst necessarytounderstandthecurrentcausesofslavery,andtheconditionsthatbringitabout. The nation state, at the present time, is the preeminent form of political and social organization. Across nations, the amount of slavery varies considerably. The fundamental questioniswhy.whatarethereasonsfordifferencesintheamountofslaveryacrossnations? This paper investigates whether four potential factors, the level of economic development, population growth, unemployment, and, rent as a source of income are important in explainingdifferencesintheamountofslaverybetweennations. Thepaperisbrokendownintofivesections.Thefirstsectionreviewssomeoftheworkthat hasbeendonelookingatthesourcesofmodernslavery.thesecondsectionpresentsaformal model of modern slavery. The third sections identifies the sources of the variables that are used in the empirical analysis. The fourth section discusses the results of cross country regressionsofslaveryoneconomicdevelopmentandthethreeothervariablesconsideredas potential determinates of slavery. The fifth section closes by offering some concluding remarks. Copyright SocietyforScienceandEducation,UnitedKingdom 210

AdvancesinSocialSciencesResearchJournal(ASSRJ) Vol.3,Issue1JanuaryO2016 BACKROUND)LITERATURE) Balesfeelsthattheessenceofslaveryis,atalltimesandplaces,thecontrolofoneindividualby anotherthoroughactualorpotentialviolence(bales2004).hisanalysisofthehistoricaldata showsthatthepriceofslaverytodayislowerthanatanyothertimeinhistory.hemaintains that the price of slavery today is falling due to an increase in the supply of slavery, and attributes the reasons for this increase to rapid population growth, rising level of impoverishment due to widening income disparities between groups from globalization,and thelackoflawandorderresultingfromgovernmentcorruption.hisregressionanalysis,that uses human trafficking from a country as the dependent variable, indicates that government corruption, infant mortality, the percentage of the population below age fourteen, food production,populationpressure,andconflictandsocialunrestmaybeimportantfactorsfor slavery.inaddition,hisregressionanalysis,thatemploysanorderedlogitestimatoranduses an index of slavery as the dependent variable, shows that GDP per capita and the United NationsHumanDevelopmentIndexarerelevantforslavery. Crane looks at slavery from a management perspective (Crane 2011). He develops a comprehensivetheoryofslaverythatconsidersboththeinternalorganizationalcapabilitiesof an organization that can enable it to practice slavery right in the face of illegality, and the external conditions that allows slavery to exist. One of his key organizational capabilities is organizationalaccesstoviolenceandtheeffectiveorganizationalabilitytouseit.afewofhis externalconditionsincludeunemployment,poverty,isolation,andgovernmentweakness. Arocha considers a host of factors that may influence slavery in a country(arocha 2005). In herempirics,sheusesacategoricalindexbasedonexpertopinionsasherdependentvariable, andemploysmaximumlikelihoodestimationonanorderedlogitmodelforacrosssectionof onehundredfortysixcountries.fromtheresultsofherregressions,someofthevariablesthat appear to be relevant for slavery are economic development, political rights, corruption traffickinginandoutofacountry,externaldebt,regionallocation,andfundamentalculture. At least with regard to sex slavery, law may be a relevant factor. In their cross country regressions, Jakobsson and Kotsadam find that slacker prostitution laws, when adjusting for one or more of their control variables (population, GDP per capita, the rule of law, and the share of immigrants in the population),significantly increases both trafficking inflow and victimsfromtrafficking(jakobssonandkotsadam2013). MartinsenpostulatesthattheremaybeanonOlinearrelationshipbetweenmodernslaveryand gender inequality. In her cross country regression analysis, she uses an index of human traffickingoutflowforherdependentvariable,andfinds,whenadjustingforpopulationand GDP per capita, a hump shaped relationship between human trafficking outflow and the percentageofwomeninparliament,andbetweenhumantraffickingoutflowandlaborforce participationofwomen(martinsen2014). Datta and Bales look at six potential determinants of slavery (state stability risk, women' s economic rights, freedom of speech, access to financial services, Eastern European location, and percentage of men over sixty years in age) in a cross section of thirty seven European countriesfor2012(dattaandbales2014).theygeneratetheirownestimatesofthenumbers enslavedbycountryonthebasisofrepresentativesurveydata,andusethenaturallogarithm ofslaveryastheirdependentvariable.theyfindthat,exceptforwomen'seconomicrights,that alloftheothervariablesaresignificantatthefivepercentlevelofsignificanceorbetter,witha Copyright SocietyforScienceandEducation,UnitedKingdom 211

' positive estimated coefficient on state stability risk, access to financial services, location in Eastern Europe, and men over sixty, and a negative coefficient on women's economic rights andfreedomofspeech. Labormigrationmaybeimportantforhumantrafficking.MahmoudandTrebeschhypothesize thathumantraffickingdependscriticallyonemigration(mahmoudandtrebesch2010).they believe that greater emigration reduces the recruitment costs of human trafficking causing greater human trafficking. Mahmoud and Trebesch employ data from household surveys of five Eastern European countries (Belarus, Bulgaria, Moldova, Romania, and Ukraine) experiencinghighlevelsofhumantraffickingtoexaminehumantrafficking.theirregressions indicate,inlinewiththeircentralcontention,thatgreatermigrationprevalencebyhouseholds increasestheincidenceofhumantrafficking.furthermore,theirfindingssuggestthatgreater awarenessoftherisksoftraffickingbyhouseholdsreducestheincidenceofhumantrafficking. Empiricalresearchonhumantraffickingisatitsbeginningstages.Atpresent,thereisnotalot of the existing empirical work on human trafficking, and there is a pressing need for more empirical work in the area. Gozdziak and Bump provide a comprehensive bibliography of research on human trafficking (Gozdziak and Bump 2008). Of the two hundred eighteen journalarticlestheyidentify,onlythirtyninearedevotedtoempiricalresearch,and,ofthese, onlythirtysixappearinpeerreviewedpublications. FORMAL)MODEL)OF)SLAVERY) Theformalmodelofslaveryconsistsofasingleequationwithitsassociatedpartialderivatives. Theequationisasfollows. S=f(D,P,U,R)δS/δD<0,δS/δP>0,δS/δU>0,δS/δR>0 Intheequation,Sistheamountofslavery,Dstandsforthelevelofeconomicdevelopment,Pis the rate of population growth, U is unemployment, and R is rental income. The partial derivativeofslaverywithregardtodemocracyispositive,butitisnegativewithregardtothe threeothervariables. It is anticipated that slavery will be negatively related to the level of economic development. Anythingthatimprovestheopportunitysetofindividualsinsocietyislikelytoreduceslavery. Higherlevelsofeconomicdevelopmentincreaseboththequantityandqualityofopportunities availabletomembersofsociety.itisabsenceofopportunities,orbad,orpooropportunities, thatputpeopleinapositiontobecomeenslaved. Slavery is also expected to be positively related to population growth. Typically, population growth is highest in the poorest nations, and within nations, among poorest income groups. Thatistosay,populationgrowthisgenerallyhigherfortheverypeoplethatcanleastafford to have children, and for which a larger family leads to further misery. Population growth among the poor makes a bad situation worse. In the extreme, it moves them from a barely manageablesubsistencelifestyletoapositionofindebtednessandofdestitution,makingthem primetargetsforenslavement. The third factor is unemployment. Slavery is predicted to be positively related to unemployment.unemploymentmakespeoplemorevulnerable,and,therefore,leavesthemin a condition more likely to become enslaved. Sustained unemployment eventually places almost anyone in a desperate position in which they are willing to do almost anything to URL:)http://dx.doi.org/10.14738/assrj.31.1793.) 212

AdvancesinSocialSciencesResearchJournal(ASSRJ) Vol.3,Issue1JanuaryO2016 survive, and where they have no means available to defend themselves from any form of exploitation. While underdevelopment, rapid population growth, and high levels of unemployment are factors that may promote conditions that augment the supply of slavery, unlike these three supply factors, the share of natural resource rental income is considered to be a demand factor.forslaverytoexist,theremustbeasetofpeoplewhocanrationalizetothemselves,as wellastoothers,theexistenceofslavery,andwhoarewillingandabletobuyandsellslaves, andtouseandexploitthemfortheirownadvantageandpurposes.inthemodernworld,one likelypotentialsourceformembersofthisgroup,formembersinthisclass,areindividuals whoderiveasubstantialshareoftheirincomesfromnaturalresourcerents. Economicrentscanbeobtainedwithoutanycontributiontoproduction,andtendtopromote thedevelopmentofanaristocraticmindset.thearistocraticmindset,althoughfavoringany and all activities, such as war, that can be used to acquire more land, distains work, and all those who must work in order to survive. Historically, in feudal agrarian societies, rents derived from the land were associated with an extremely powerful class division between aristocratsandothers.themoreanindividualderiveshisincomefromrents,themorethe aristocraticperspectivehasachancetotakeholdofhisbeingandtobecomeanfundamental part of his identity. With the enormous perceived social distance between themselves and others,aristocratsfeelitistheirright,thattheyareentitled,touse,exploit,orenslave,those beneaththem.thus,fromthedemandside,theincidenceofmodernslaveryinanation,the percentage of the population that is enslaved, is expected to be positively related to the percentageofnaturalresourcesrentstogdp. VARIABLE)SOURCES) Slaveryisquantifiedbyusingthepercentageofthepopulationinmodernslaveryfor2014.The numberscomefromtheglobalslaveryindexwebsite(theglobalslaveryindex2015). ThemeasureofeconomicdevelopmentisGDPpercapitafor2010.Thesourceforthedatais theworldbank(worldbank2014). Population growth, the unemployment rate, and the percentage of natural resource rents to GDP are all for the year 2010. Just like the GDP per capita data, the data for these variables comesfromtheworldbank. EMPIRICAL)RESULTS) Table I shows the results of cross country regressions of slavery, as measured by the percentageofthepopulationinslavery,onthefourfactors,thelevelofeconomicdevelopment, populationgrowth,theunemployment rate, and the percentage of natural resource rents to GDP. Table)I:)Cross)Country)Regressions)Of)Slavery)On)Economic)Development)And)Other)Potential) Determiannts) (1) (2) (3) (4) CONSTANT.5663.3754.1282.0990 (10.35) (6.36) (1.39) (1.095) * * DEVELOPMENT O.0000057 O.00000075 O.0000068 O.0000065 Copyright SocietyforScienceandEducation,UnitedKingdom 213

' (O2.73) * (O3.92) * POPGROWTH.1432 (5.95) * (O3.60) *.1686 (6.84) * UNEMPLOYMENT.0226 (3.45) * (O3.52) *.1298 (4.79) *.0209 (3.25) * RENTSTOGDP.0084 (3.09 * RSQ.046.223.280.322 N 158 158 156 156 The table is organized in the following way. The first column provides a list of the potential explanatory variables that can enter the regression equations. The remaining four columns showtheresultsoffourdifferentregressions.thesefourregressionequationsarenumbered in the first row. If and when a variable enters an equation, then its estimated coefficient is givenintheappropriaterowandcolumninthetablewithitsindividualtostatisticunderneath in parenthesis. The presence of an asterisk below the individual tostatistic indicates that a variableissignificantattheonepercentlevelofsignificanceorbetterinthatequation.thero squared value for each equation is provided in the second to the last row, and finally, the numberofcountriesenteringanequation(thesamplesize)isshowninthelastrow. The table contains four equations. The first is an equation of slavery, as measured by the percentageofthepopulationinslavery,oneconomicdevelopmentalone.thesecondregresses slavery on both economic development and on population growth. The third adds the unemployment rate as an additional explanatory variable to economic development and population growth. Finally, the fourth is a regression of slavery on all four factors, economic development, population growth, the unemployment rate, and the percentage of natural resourcerentalincometogdp. Theresultsprovidestrongsupportforthepositionthatthefourfactors,thelevelofeconomic development,populationgrowth,theunemploymentrate,andtheshareofnaturalresources rents in GDP are important for slavery, as measured by the percentage of the number of peopleinslaverytothepopulation.anytimeanyoneofthefourfactorsenteranequation,the factorissignificantattheonepercentlevelofsignificanceorbetter.allfourfactorsalsohave their appropriate signs. The estimated coefficients indicate that higher levels of economic developmentreducesslavery,whileratesofpopulationgrowth,unemployment,orincreased natural resources rental share increases slavery. When all four factors are used together (equation (4)), they explain over thirty two percent in the cross country variation of the percentage of slavery to the population in a sample consisting of one hundred and fifty six countries. CONCLUSION) From the regression results, it appears that each of the four factors considered to be of theoreticalimportanceformoderndayslaverymattersformodernslavery.thus,accordingto thefindingsofthepaper,aprofileofahighslaverycountry,acountrywithahighpercentage of slavery to population relative to other countries, is a country existing at a low level of economicdevelopment,withahighrateofpopulationgrowth,substantialunemployment,and URL:)http://dx.doi.org/10.14738/assrj.31.1793.) 214

AdvancesinSocialSciencesResearchJournal(ASSRJ) Vol.3,Issue1JanuaryO2016 arelativelylargeshareofnationalincomecomingfromnaturalresourcerents.inessence,itis likelytobeacountrywithasubstantialandgrowingamountofpoorpeoplewithlittleorno opportunities, coupled with an elite that finds no scruples to enslave the masses, and who, politically,mayevenconsiderslaveryasanecessityinordertokeepthelowerclassincheck, and,who,personally,mayviewtheabilitytoownslavesasacomponentoftheirclassidentity. Policywise,toreduceslavery,eachofthefourcharacteristicsofamodernhighslavecountry needstobeaddressed. First, economic development needs to be promoted in the high slave country so that more opportunities are available to the people in the country, especially to the poor. This may be extremelydifficult,notjusteconomically,becauseoftheenormouseconomichurdlesthathave to be overcome, but politically, since the elites, the people that are in control of the government, are more than contented with the status quo, as they are currently living quite nicelyandhavehighstatusintheprevailingsocialstructure. Second,populationgrowthneedstobebroughtundercontroltoavoidaMalthusiantrap.The poor need to be educated to use moral means or birth control to have smaller families. Internationally, theability of people to legally emigrate from high population growth, low opportunitiescountriestohighopportunity,highlydeveloped,countriesmustbecomemore, notless,ofapossibility. Third, unemployment must be reduced. Conditions favorable forbusiness and investment havetobecreated.thegovernmentneedstoprovidenecessaryinfrastructure.investmentin thecountrymustbecomeprofitableandnotundulyriskytoundertake. Fourth, when substantial rents from natural resources exist, these rents somehow, either throughtaxationorsomeothermeans,needtobechanneledawayfromarenterclass,and usedfortheeconomicdevelopmentofthecountry. References) Arocha,LorenaDominguez.2005."ContemporaryFormsofSlavery:AnempiricalAnalysis." http://iussp2005.princeton.edu/papers/52594,june,12,2015. Bales,Kevin.2004."TestingaTheoryofModernSlavery."http://pclt.cis.yale.edu/glc/events/cbss/Bales.pdf,June 10,2015. Datta,MontiNarayanandKevinBales.2014."SlaveryinEurope:Part2,TestingaPredictiveModel."Human RightsQuarterly,36(2),277O295, http://scholarship.richmond.edu/cgi/viewcontent.cgi?article=1025&context=polisciofacultyopublications&seio redir=1&referer=http%3a%2f%2fscholar.google.com%2fscholar%3fhl%3den%26q%3ddatta%2band%2bbal es%2bslavery%2bin%2beurope%2bpart%2b2%252c%2btesting%2ba%2bpredictive%2bmodel%26btng%3d %26as_sdt%3D1%252C33%26as_sdtp%3D#search=%22datta%20bales%20slavery%20europe%20part%202% 2C%20testing%20predictive%20model%22,June16,2015. Crane,Andrew.2011."ModernSlaveryasaManagementPractice:ExploringtheConditionsandCapabilitiesfor HumanExploitation."AcademyofManagementReview,38(1),pp.49O69. Gozdziak,ElzbietaandMicahN.Bump.2008."DataandResearchonHumanTrafficking:BibliographyofResearch OBasedLiterature."GeorgetownUniversity,InstitutefortheStudyofInternationalMigration, https://repository.library.georgetown.edu/bitstream/handle/10822/551495/data_research_trafficking.pdf?sequ ence=1,june16,2015. Jakobsson,NiklasandAndreasKotsadam.2013."TheLawandEconomicsofInternationalSexSlavery: ProstitiutionLawsandTraffickingforSexualExploitation."UniversityofGothenburg,WorkingPapersin Economics,No.458,https://gupea.ub.gu.se/bitstream/2077/22825/4/gupea_2077_22825_4.pdf,June15,2015. Copyright SocietyforScienceandEducation,UnitedKingdom 215

' Mahmoud,TomanOmarandChristophTrebesch.2010.TheEconomicsofHumanTraffickingandLabor Migration:MicroOevidencefromEasternEurope.JournalofComparativeEconomics38(2),pp.173O188, http://www.iza.org/conference_files/leilli2010/trebesch_c4269.pdf,june15,2015. Martinsen,KristineGran.2014.:ModernSlaveryOAnEmpiricalAnalysisofSourceCountriesofHumanTrafficking andtheroleofgenderequality."https://www.duo.uio.no/bitstream/handle/10852/40982/1/moderno slavery.pdf,june15,2015. Rawls,John.1971.ATheoryofJustice.Boston:HarvardUniversityPress. TheGlobalSlaveryIndex.2015.TheGlobalSlaveryIndexfor2014,http://d3mj66ag90b5fy.cloudfront.net/wpO content/uploads/2014/11/global_slavery_index_2014_final_lowres.pdf,june1,1014. WorldBank.2014.WorldDevelopmentIndicators, http://databank.worldbank.org/data/views/variableselection/selectvariables.aspx?source=worldodevelopmento indicators,may20,2014. URL:)http://dx.doi.org/10.14738/assrj.31.1793.) 216