Evidence from Puno, Peru
Transcripción
Evidence from Puno, Peru
Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru The impact of mobile phones on profits from livestock activities – Evidence from Puno, Peru Roxana Barrantes Instituto de Estudios Peruanos [email protected] BIOGRAPHY PhD-University of Illinois at Urbana-Champaign. Currently, Principal Researcher at Instituto de Estudios Peruanos (IEP), and Associate Professor, Department of Economics, Pontificia Universidad Católica del Perú. She is member of the Steering Committee of DIRSI (Regional Dialogue for the Information Society) and member of the Scientific Committee of the PICTURE-Africa Research Project. ABSTRACT Besides the work of Jensen (2007), there is little quantitative evidence on the impact that mobile telephony has had on household welfare. In considering the rural household welfare, the possibility is open of finding impacts of information that is accessed via mobile phone in several markets where rural households are usually inserted: agricultural product markets, agricultural services markets, agricultural byproducts; but also in labor markets that often supplement income diversification strategies of these households. Using a database collected to measure the impact of mobile telephony in the welfare of rural households in Puno, Peru, this paper seeks to focus attention on the markets for agricultural products and by-products. The aim is to measure the contribution that has the use of mobile telephony in the profits resulting from the development of agricultural activities, using econometric techniques associated with quasi-experimental methods of impact assessment. How much does the mobile phone contribute to agricultural earnings? What is the differential impact of mobile phone use vis-a-vis scale variables such as farm size or the number of cattle, or diversification, as the total number of crops, or vertical integration, as the production of agricultural products, on the results of farming? We expect to find different impacts depending on the type of use of mobile telephony, ie if used for information to affect the agricultural production function or is used to make marketing decisions. The results can help justify public policy efforts to include mobile telephone service as a basic service as well as the development of specific mobile livelihood services for farmers from the mobile communication technology, yet absent in Latin America. Keywords (Required) Mobile phone use, agriculture, rural areas Latin America, Peru 1. INTRODUCTION In less-developed countries, mobile phones are the preferred means of access to telecommunications services, particularly among the poor, who show different strategies that combine mobile phones to receive calls and public telephones to make calls (Galperin and Mariscal (2007), Barrantes (2007), Gutierrez y Gamboa (2007), Ramírez and De Angoitia (2008), among others). In rural areas, which usually lack fixed telephony and public phones, there was a delay in the expansion and, therefore, adoption of mobile phone service. In addition, poverty is concentrated in rural areas, making them unattractive for commercial service expansion. Despite these difficulties, mobile phones are widely used in rural areas, although subscription to pre-paid phones lags behind use, and post-paid service is almost non-existent. The discrepancy between use and subscription is partly explained by the widespread availability of mobile call services offered by street vendors; this service is essentially a substitute for public phones. Using quantitative data gathered in the area of influence of two rural markets in Puno, in southern Peru, where livestock raising is as important as crop farming, this paper aims to identify the contribution of mobile phone use to profits derived from agricultural activities. The impact of “directly productive” uses, such as communicating with clients, suppliers or Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 1 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru producers’ associations, on agricultural profits is identified. Based on previous work (Barrantes, Agüero, Fernández-Ardevol, 2009) which examined the effect of mobile phone use on household welfare, this paper focuses on the productive side of the agricultural household, and does not consider the possible contribution to family welfare of the inclusion of household members in labor markets. This paper builds upon Barrantes (2010) by focusing on mobile phone users and refining the econometrics for households whose main activity is livestock husbrandry. The evidence shows a strong effect of mobile phone use on profits from livestock, that does not extend to explaining profits from crop farming. Moreover, the distinction introduced in this paper between mobile phone use for obtaining information relevant for the production function and the information needed to marketing decision making is proved to be significant in the case of livestock husbandry. As expected, variables such as the household’s commercial orientation or the vertical integration of the production process are also important in explaining the level of profits attained. Because mobile phone use is very recent for these producers, the median length of use being 12 months, information relevant to production processes that is gathered by using the mobile phone does not yet have a significant impact on crop production and does not have the expected effect on livestock production. The structure of the paper is as follows. This introduction is followed by a brief description of the study area. The next section describes the analytical framework. Econometric results are presented in the fourth section. The paper ends with final comments and pending research questions. 2. DESCRIPTION OF THE STUDY ZONE The information used in this study was collected in June and July 2008 as part of the study of “Mobile Communications and Development in Latin America,” funded by the Fundación Telefónica and led by the Universitat Oberta de Catalunya (UOC). A random sample of homes was chosen in the areas of influence of two markets in the Puno region, in southern Peru 1 , to evaluate the impact of the introduction of mobile telephones on daily life in rural homes. One person between ages 13 and 70 was randomly chosen from each household to learn about mobile phone use. This informant was given an additional questionnaire about the use of mobile phones and other ICTs in general. The markets were chosen controlling for similar key characteristics: altitude and population. Altitude is a very important geographical constraint in the area of the Collao Plateau, which is part of the Lake Titicaca ecosystem. 2 Local altitudes on the plateau exceed 3,500 meters above sea level. Unlike the rest of the Peruvian Andes, it is basically flat, with few of the steep slopes that make productive activity difficult. Although the slopes are relatively gentle, households in this area of Puno face extreme weather conditions during the day and/or throughout the year. In winter, they suffer ground frost, which hits them hard and for which they are not prepared. Besides geography, the study looked for similarities in the size of the villages, measured by number of inhabitants, and the poverty level of the households, using unmet basic needs as the indicator. 3 The markets were chosen based on those three basic criteria. The markets chosen were in Asillo and Taraco, in the provinces of Azángaro and Huancané, respectively. From Juliaca, the commercial capital of Puno, it takes about an hour to reach either of them on a paved road.4 Asillo’s market day is Sunday, while the Taraco market is on Thursday. Both are held from 5 a.m. to 3 p.m. Six districts were identified in the Asillo market area and 10 in the area near the Taraco market. Table 2.1 shows the poverty indicator based on the number of unmet basic needs (UBN) for the households in the sample surveyed for the qualitative study. Three of every four households have at least one UBN, which is well above the nationallevel indicator. Table 2.1 Unsatisfied Basic Needs (UBN) in the study area Indicator No UBN 1 A map can be found in the annex. 2 See Parodi (1995). 3 See Feres y Mancero (2001). Sample* 24% Asillo* 20% Taraco* 27% Puno** 26% Peru** 41% 4 Both villages can be reached from Lima via Juliaca (San Román province), which has an airport. The flight takes about an hour and a half. Once in Juliaca, visitors can travel to Asillo by public transportation (bus). The fare is S/.4.00 Sol (US$ 1.30) and the journey takes about two hours. Visitors can travel to Taraco from Juliaca by rural vans (called “combis”), a trip that takes about 45 minutes and costs S/.2.50 (US$0.83). Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 2 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru 1 UBN 2 UBN 3 UBN 4 UNB 5 UBN 33% 29% 11% 3% 0% 33% 28% 15% 4% 0% 32% 30% 8% 3% 0% 20% 24% 18% 10% 1% 19% 18% 14% 8% 1% Source: * Survey (Barrantes, 2008) and ** ENAHO (National Living Standards Survey) 2007, for Puno and Peru. 3. FRAMEWORK FOR ANALYSIS It is widely recognized that in developing countries, mobile telephony, chiefly for low-income sectors and rural areas, has given people their first opportunity to access telecommunications. When people use mobile telephones, they obtain information and lower the costs of communicating, helping them establish more solid positions in markets, gain access to new markets, and increase their income by reducing losses from price dispersion. Jensen (2007) conducted the study that has had the greatest impact on knowledge of the effects of mobile telephones, by demonstrating that rent dissipation caused by incomplete information is reduced by using mobile telephones, which supports the law of a single price and the efficient working of markets, in the context of fresh fish markets in Kerala, India. Similarly, with evidence collected in Niger, Aker (2008) found that the use of mobile telephones reduced price dispersion in the grain market; the decrease was greater in more remote markets with less access. It is important to note that these two studies focus on the role of the information mobile telephones provide in marketing activities, not in those related to what economists will call the production function. Esselaarc et al. (2007) studied the impact of ICTs in small businesses and microenterprises in 13 countries in Africa. The main finding was that these technologies are highly productive inputs, because they reduce transaction costs and provide greater market access both for the formal and informal sectors. They stress the use of mobile phones, reporting an immediate benefit because they are easy to use and are widely available. As in other research (Galperin and Mariscal, 2007; De Silva and Zainuden, 2007), this study distinguished between the owner of the telephone (subscriber) and the user. Due to affordability constraints, the user may not necessarily be the subscriber. In fact, survey figures show that 76 percent of interviewees are service users, and of these, just two-thirds are subscribers. The mobile telephone is shared by members of one family or by various friends. There is also a considerable supply of calls through mobile phones for public use, by street vendors or chalequeros who offer the service, or through phone booths or telecenters. 5 This study begins with a simple household production function model, to explain not the level of production, but the level of profit from livestock and crop farming. While the interaction between those activities is recognized, this study separates the estimated profit from crops from the profit from livestock. In each case, direct sales and by-products are added. While the former constitute a primary activity, the latter represent processing, postulated to give greater added value to primary production. Profit (the difference between revenue and costs) is therefore due to two factors: production and marketing. In the area of production, I argue that profit depends on the level of certain stocks of human and natural capital. Marketing management is also the outcome of decisions linked to stock flows, reflected in the degree of insertion in markets. Besides these variables, which are typically discussed in the literature, and which explain small farmers’ production decisions and outcomes, this study also includes characteristics and perceptions of the use of mobile phones for obtaining information for production and marketing decisions. The variables, their definitions and the underlying hypothesis are summarized in Table 3.1. The variables chosen to reflect human capital stock are: total size, indicated by the number of household members; the proportion of adults, which reflects the importance of the most productive labor; and accumulated human capital, based on the educational level of the household member with most years of schooling. 5 Chalequeros are people who hire out mobile telephones by the minute. They usually work in village squares or on busy street corners and they wear bright-colored vests (hence the name, which comes from the Spanish word for vest, chaleco). Their rates are lower than public telephone and pre-paid phone rates. Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 3 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru I also consider variables associated with the use of the mobile telephone as a production input:using the mobile phone to communicate with clients, suppliers or producers belonging to associations, which indicates a connection with marketing decisions; using the mobile phone to obtain information about crop or livestock production, which indicates a connection with production decisions; or a perception that communication has improved with the use of the mobile telephone. The models include a dummy variable that places the household in the area of influence of a particular market, with Taraco having a value of zero. In the case of natural capital, crop farming is distinguished from livestock raising. For crop farming, the model considers average farm plot size, which indicates the possibility of achieving economies of scale in production; the number of plots, which reflects both a possible strategy for reducing climate risks and the division of land, which is an obstacle to the increases in efficiency that are possible with a higher productive scale; and the number of crops, which shows crop diversity and risk reduction, as well as a lack of specialization, which can negatively affect profit. Market orientation and production results are measured by various ratios. First, as an indicator of the importance of primary activities, is the relative importance of crop sales in total sales. Second is the relative importance of crop production for making agricultural by-products, which shows vertical integration; and the proportion of fodder crops in total agricultural production. The third factor is the importance of the main crop as an indicator of specialization and possible associated efficiencies. The analysis of livestock husbrandry differs from that of crop farming in the definition of natural capital variables and the ratios that reflect market orientation. As natural capital variables, the study considers the number of species of animals, which is an indicator of diversification and risk reduction, but which is also an obstacle to obtaining the benefits of specialization; the number of heads of the most valuable kind of animals, as an indicator of productive specialization; and average pasture size. The variables used to analyze market insertion reflect the relative importance of certain types of production: livestock value compared to total added value, as an indicator of the importance of primary activities; the value of the main species compared to the total for all livestock, as an indicator of specialization; the importance of fodder crops; and the value of the main by-product as a percentage of all by-products. Table 3.1: Variables included in the econometric analysis Variable Indicator Agricultural profit Type Measurement unit Definition / Hypothesis Continuous (Current Soles) Agricultural profit is he difference between revenue and total agricultural expenditure. Agricultural income is the sum of the total value of agricultural production, the value of agricultural by-products and the total value of forest production. Agricultural expenditure is the sum of wages, animal and machine hiring and other inputs. Continuous (Current Soles) Livestock profit is the difference between revenue and total livestock expenditure. Livestock income is the sum of the value of revenue from livestock activity (sale of animals) and the total value of livestock by-products. Endogenous variable Livestock profit Human capital Number of household members Discrete Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 The value of this variable is the total number of members in each household. A higher value is related to higher profits, because it minimizes the need to hire labor. 4 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru Proportion of adults en in household Continuous (Real number between 0 and 1) This ratio is the quotient of adults per household (between ages 15 and 65) divided by the total number of household members. A higher ratio means higher profit, reflecting a more productive labor force. Highest level of education achieved by a household member Discrete Whole number A household member with more education can have a positive impact on productivity. Number of plots Discrete Whole number The value is the number of plots of the household. A higher number may be related to land fragmentation, which results in difficulties in achieving economies of scale. It could therefore be associated with low productivity, which negatively affects the level of agricultural profit. Average plot size Continuous (Hectares) A smaller average plot size may adversely affect productivity and thus the level of agricultural profit Discrete (Whole number) A larger number of crops in the portfolio is expected to be associated with lower levels of agricultural income and difficulties in specialization, which makes it more difficult to achieve economies of scale. Natural capital Agriculture Number of crops Number of species Discrete Whole number Natural Capital – Livestock production Productive results and market orientation Agriculture The number of species of animals raised by the household. A higher number of species shows greater diversification and thus a reduced risk, which can have a positive impact on livestock profit level. Number of head of the main animal Discrete Whole number The main animal is the one that contributes the greatest added value associated with livestock. A larger number of animals is expected to be associated with greater livestock profit. Value of production of fodder crops per hectare tilled (including own and rented) Continuous (Current Soles) Higher value implies greater productivity, and greater agricultural profit is therefore expected. Ratio: Value of fodder crops / Total value of agricultural production Continuous (Real number between 0 and 1) For greater integration of crops and livestock, the importance of fodder crops may reflect vertical integration and be associated with higher profit levels. Ratio: Value of production Continuous This ratio reflects the importance of Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 5 Barrantes Production outcomes and market orientation – livestock production Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru devoted to making agricultural by-products / Total value of agricultural production (between 0 and 1) vertical integration and may reflect higher profit levels. Ratio: Value of main crop / Total value of agricultural production Continuous (between 0 and 1) Indicates greater specialization and is related to higher productivity and profit. Livestock raising household Dichotomous = 1 if agricultural household If a crop-farming household also raises livestock, the result could be risk reduction through diversification, but also higher diversification and difficulties in achieving economies of scale. Value of fodder production per hectare tilled (including own and rented) Continuous (Current Soles) Higher value implies greater productivity, so higher livestock profit is expected. Importance of by-product sales compared to total added value of livestock production Continuous (Real number between 0 and 1) This ratio shows the relative weight of livestock by-products in the total added value. This may be related to greater productivity and thus be associated with higher levels of livestock profit. Importance of main byproduct sales compared to total livestock by-product sales Continuous (From 0 to 1) Indicates greater specialization and is related to greater livestock productivity and profit. Dichotomous = 1 if mobile was used for that purpose. Multiplicative variable that establishes interaction between the variable “use of information from third parties for agricultural production” and the variable “use of mobile phone for obtaining information”. Dummy – used mobile to get information about … --either agricultural crops or livestock production Continuous (months) Length of time mobile phone has been used Mobile phone as production input Categorical Under 1 year. From 12 to 24 months Over 24 months Having used a mobile phone for a longer time reflects greater familiarity with it and knowledge of its use. This may help in obtaining information. Dichotomous = 1 if mobile was used for that purpose. The variable considers the informant who uses the mobile phone to communicate with clients and/or suppliers and/or members of producers associations or cooperatives. Decreased transaction costs can have a positive effect on the levels of profits. In the OLS models, only communication with clients or suppliers is considered. The IV models add communication with members of producers’ associations or public Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 6 Used mobile phone to communicate with clients, suppliers or members of producers’ associations (dummy) Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru agencies. Location Dummy if perceived improvement in communication Dichotomous =1 if communication is perceived to have improved a little or greatly If the informant perceives improvement in communication, this may signal full integration of the mobile phone into everyday activities. Market Dichotomous = 1 if the market is in Asillo. A location variable. 4. EMPIRICAL ANALYSIS The empirical strategy is to explain the level of earnings in the respective activity (crop or livestock). The level of profits can be explained or per capita household level. Unlike Barrantes (2010), where the emphasis was placed on comparing users versus non-mobile users, this paper emphasizes the different potential uses of mobile phones both in the field of marketing decisions and of the production sphere as well. Hence the analysis is restricted to agricultural households where the informant is a user and also is the head of household or spouse. The emphasis is thus placed in elucidating the role of using the mobile phone in decisions related to agricultural production in the dimensions affecting the production function. It is postulated that the mobile phone plays a role as a productive input, when it allows to access information more cheaply and timely than other ICT. The effect of using this information is different when it pertains to aspects related to the production function, ie the combination of inputs to produce, as compared to those aspects related to marketing, ie, decisions of the time and place of sale. Consequently, the effect of mobile phone use will be different if it involves decisions on production or on marketing decisions. To account for the varied possible productive uses of the mobile phone, several indicators were used as regressors: whether the informant used the mobile phone to get information for the production process (agricultural or livestock), whether information obtained from family members was used in production combined with whether the mobile phone was used to communicate with family; and if the informant used the mobile phone to communicate with customers, suppliers, similar businesses, association, cooperative, or any support institution. The first two correspond to uses that would affect the production function and the last indicator reflects mobile use to affect marketing decisions. Obviously, agricultural production or livestock production or the respective by-products, depend on other inputs as well as other controls - such as, for example, the location of the fair. The variables and indicators used can be found in Table 3.1, and were explained in the previous section. It is important to stop and explain a key element of the empirical strategy, which is the use of instrumental variables. It seeks to unravel the problem of causality involved when the mobile phone is used as an explanatory variable of the level of profits, as it reflects the access to information as a productive input, when it could well be that the level of earnings accounts for the highest probability of using the mobile as productive input, as communication is key to successfully penetrate markets. Then, using the 2SLS procedure, the productive use of mobile phones is instrumented with three variables: being a subscriber, to be a user for a longer period of time, and to perceive a higher quality of service. The database contained information from households that stated that their permanent activity was crop farming (699) and those that said they were dedicated to raising livestock (690). There could be some overlap, because the two activities tend to be complementary for rural families (667 households). However, since the goal was to identify the impact of mobile use as a productive input, the regression analysis only included households where the informant was a mobile phone user. Therefore, the total number of households for each kind of activity shrank: from 699 to 427 for agriculture, and from 690 to 393, in for raising livestock. Similarly, households are grouped by main crop, or by the most important type of herd, or main byproduct. The hypothesis to justify this strategy rests on the different productive cycles and marketing of various products, which can be more clearly appreciated when isolated regressions are run. The descriptive statistics for all variables used can be found in Appendix 1. 4.1. Profit from raising livestock The set of regressions explaining the level of profits attained from raising livestock –be it total level or per capita— can be found in Table 4.1. Models 1 and 2 consider all households, while regressions 3, 4, and 5 consider households which raise vacuno criollo, and regression 6 is run on milk producers –what is considered a by product of livestock raising. Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 7 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru The results of the regressions, run on the natural logarithm of the dependent variable, are shown in Table 4.1., and reflect an appropriate overall goodness of fit for all models. Further tests were run on both coefficient bias, and instrument strength, yielding acceptable results. 6 The use of mobile phones to communicate with clients, suppliers and members of producers’ associations shows the expected positive sign and is statistically significant in all models. On the other hand, the use of mobile phones to gather information to decide on productive aspects of raising livestock show a negative sign and is statistically significant only when all raising livestock households are considered. The effect of mobile use runs in opposite directions in the sample: positive for communications for marketing and negative for directly productive use –those affecting the production function. Insertion in fodder markets and specialization, reflected in the relative importance of the main by-product in total value added, are statistically significant and show the expected positive sign. Livestock size also positively influences the level of profits. Livestock profits are not affected by market location, as shown by the coefficient on Fair. In Model 2, variables of scale of production (number of most important animal heads) and the variables that indicate vertical integration (fodder crops and the importance of by-products in total livestock production), are also significant. In the latter case, it is interesting that the greater the importance of byproducts, the smaller the profits from raising livestock, indicating an internal subsidy. Human capital variables are not significant in any of the models. 6 Shown in Table 4.1 by the Cragg-Donald statistic and the F-Test for excluded instruments. Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 8 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru Table 4.1. Regression Results Livestock HH Dependent variable (ln) Explanatory variables Mobile phone used to communicate with clients and suppliers, similar businesses, producers’ associations or support agencies Mobile phone used information about production to Model 1 Per capita profits when respondent is user and head of household or spouse 0,4406106 * (0,2458339) Vacuno criollo HH Model 2 Profits when respondent is user and head of household or spouse Model 3 Per capita profits when respondent is user and head of household or spouse Milk producers Model 4 Model 5 Profits when respondent is user and head of household or spouse 0,5798816 ** (0,2684291) Model 6 Profits when respondent is user and head of household or spouse 0,457231 ** (0,2592699) 0,6686473 * (0,271398) 0,571353 ** (0,2567895) 0,7134942 ** (0,2871292) -0,111385 ** (0,0656013) -0,1182095 (0,078197) -0,105943 (0,0724004) -0,1055344 (0,073036) -0,1080199 (0,0830563) 0,0122159 (0,0099088) 0,012208 (0,0095558) -0,0028791 (0,0092092) 0,0128619 (0,1153263) -0,0679248 (0,1082217) obtain livestock -0,1226931 (0,0279835) ** Highest level of education reached by a member of household -0,0001607 (0,0085812) Share of adults in household Ratio: Total value of livestock byproducts/Total added value of livestock production Ratio: Sales value of main byproduct/total value of livestock byproducts Value fodder production per hectare tilled (includes own and rented) Number of species Number of heads of main animal -0,0441548 (0,1033706) -0,2516858 *** (0,0789144) -0,2075331 *** (0,0757046) -0,4251128 *** (0,1120549) -0,3508229 ** (0,0978637) -0,3599909 *** (0,1032908) -0,6868591 *** (0,0972016) 0,3066641 *** (0,0637117) 0,2949658 *** (0,0608551) 0,3650294 *** (0,0770273) 0,3333376 ** (0,07137) 0,3317105 *** (0,0714842) 0,2131643 *** (0,0625804) 0,0000742 ** (0,0000296) 0,0000681 ** (0,0000277) 0,0000488 (0,0000299) 0,0000432 * (0,0000243) 0,0000469 * (0,0000275) 0,0000495 * (0,0000267) 0,1244187 *** (0,0279835) 0,1549703 *** (0,0273239) 0,0389867 (0,0415321) 0,0743231 * (0,0401105) 0,0750054 * (0,0402174) 0,0348474 (0,0321752) 0,0001586 *** Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 0,0001264 ** 0,0001214 ** 9 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru (0,0000498) (0,0000532) (0,0000487) Fair (Asillo = 1) 0,1231607 * (0,0676947) 0,096161 (0,0620557) 0,0425908 (0,0748523) Constant 6,726398 *** (0,0800741) 7,892213 *** (0,1173034) 7,023034 *** (0,1291656) Goodness of Fit Statistics Number of observations Degrees of freedom Cragg-Donald Statistic F-test for overall instruments Centered R2 Uncentered R2 0,0229301 (0,069978) 8,032066 *** (0,1280472) 0,135 * (0,0711188) 8,01232 *** (0,1438166) 8,555354 *** (0,1455535) 393 7 393 10 253 7 253 8 253 10 294 9 11,463 2,21 * 0,1113 9,377 2,80 ** 0,1569 8,699 2,35 * 0,0814 7,438 3,07 ** 0,1587 7,041 2,97 ** 0,1554 6.480 2.76 ** 0.1008 0,9957 0,9972 0,9956 0,9973 0,9973 0.9975 Instruments: Length of use of mobile, perception of improved quality, terminal owner Stock-Yoho Critical Values: 5% maximal IV relative bias 13,91 10% maximal IV relative bias 9,08 20% maximal IV relative bias 6,46 30% maximal IV size 5,39 10% maximal IV size 15% maximal IV size 20% maximal IV size 25% maximal IV size Standard errors in parenthesis *** Significance level = 0,01 ** Significance level = 0,05 * Significance level = 0,10 Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 10 22,30 12,83 9,54 7,80 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru 4.2. Crop farming profit The hypothesis is that the level of profit from crop farming, either total or per plot, depends on the levels of human capital and natural capital stock, the degree of specialization and market orientation, and the use of mobile telephones to facilitate access to information and reduce overall transaction costs. None of the models showed statistically significant results for any of our variables indicating mobile phone use. FINAL COMMENTS Using quantitative evidence gathered in the area of influence of two rural markets in Puno, in southern Peru, this paper shows the positive effect of mobile phone use on profits from livestock production in rural households. Higher profits are explained by the use of mobile phones by heads of households or spouses who make calls to clients, suppliers, similar businesses, producers’ associations or support agencies. In contrast to our initial expectation, the econometric results did not extend to agricultural profits. None of the postulated variables indicating mobile phone use, either for production or marketing decision making, were significant in explaining agricultural profits. The underlying hypothesis in the econometric modeling is that the cost of looking for new markets for a particular product is lower than the cost of adopting new techniques, which may be associated with modification of the product. Information leading to product modification may take longer to permeate entrenched agricultural practices that have proven to reduce risk over the years. The possible positive effects of the use of mobile phones on profit of raising livestock, occur first in marketing and are not yet manifested or perceived in defining parameters for production, that is obtaining information about raising particular animals or producing by-products. This possible differentiated effect could mainly be a response to the fact that these decision-makers have used mobile phones for only a short time, an average of barely over a year -16 months. During that time, they have made many more marketing decisions about the farm household’s products or by-products than about production (decisions associated with the crop cycle or animal reproduction cycle). Given this length of use, it may be too early to assess the directly productive impact of mobile phone use for these rural producers. Nevertheless, it is important to note the statistically differentiated effects observed when explaining agricultural profits compared to livestock profits. The latter appear more conclusive than the former. This could be because the production time frame is more flexible for livestock production than crop farming. The qualitative evidence gathered for the study (Aronés, León y Barrantes, 2009), showed that timely contact with a veterinarian was key to increasing livestock productivity; this was achieved by using the mobile phone. No similar key use of the mobile phone was documented for crop production. On the other hand, emphasizing calls to clients and suppliers as an indicator of the productive use of the mobile telephone overlooks the fact that these households’ information networks are crisscrossed by solid kinship relations in contexts in which market transactions have not yet permeated a wide array of activities, as they would in more modern or urban areas of the country. It is difficult to determine when a call to a relative stops being ‘unproductive’ and becomes a productive call (i.e., related to a decision about where to sell, price, inputs, etc.). Clearly this is an area for further investigation. ACKNOWLEDGMENTS I would like to thank several IEP young researchers: Ramón Díaz for initial discussions, which helped me define the approach; Ramiro Burga, who pursued the econometrics; Aileen Agüero, who contributed to the literature review, and Oscar Madalengoitia, who drafted the map. Comments by Jonathan Donner, Mireia Fernandez-Ardevol and participants at the Conference on Development and Information Technologies: Mobile Phones and Internet in Latin America and Africa: What Benefits from the most disadvantaged? held in Barcelona in October 2009, are greatly appreciated. The usual disclaimer applies. REFERENCES 1. Aker, J. (2008) Does digital divide or provide? The impact of cell phones on grain markets in Niger. Berkeley: University of California. http://are.berkeley.edu/~aker/cell.pdf (20/04/09). 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Puno and the areas of influence of the Asillo and Taraco markets Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 13 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru Appendix 1 – Descriptive Statistics All monetary figures are expressed in Soles. Current exchange rate: 2.8 soles per American dollar. Subset: Respondent is user and head of family or spouse, and raising livestock; N=393 Variable Mean Median SD Min. Max. %Yes %No ln Profit per cáp 7.14 7.04 0.50 6.35 9.31 ln Profit 8.36 8.30 0.48 7.57 10.42 0.43 0.38 0.34 0.00 1.00 10.75 12.00 3.26 1.00 16.00 Ratio adults HH 0.62 0.60 0.25 0.00 1.00 Relative importance of main byproduct 0.43 0.43 0.43 0.00 1.00 751.34 180.00 1229.61 0.00 7045.46 2.37 2.00 0.94 1.00 6.00 16.36 2.00 252.20 0.00 5000.00 Market 0.55 1.00 0.50 0.00 1.00 55% 45% Mobile-intra-fam-info 0.80 1.00 0.40 0.00 1.00 80% 20% Quality perception 0.70 1.00 0.46 0.00 1.00 70% 30% Terminal owner 0.64 1.00 0.48 0.00 1.00 64% 36% 16.40 12.00 15.38 1.00 120.00 0.15 0.00 0.36 0.00 1.00 15% 85% Relative products importance of by- Max edu HH Agri-livestock VI per ha. Number of species Size of main species Length of use Mobile-extra-familiar Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 14 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru Subset: Respondent is mobile phone user and head of household or spouse, raising vacuno criollo; N=253 Variable Mean Median SD Min. Max. %Yes %No ln Profit per cáp 7.17 7.11 0.50 6.35 9.31 ln Profit 8.39 8.32 0.48 7.57 10.42 0.40 0.35 0.34 0.00 1.00 10.60 12.00 3.31 1.00 16.00 Ratio adults HH 0.63 0.60 0.24 0.00 1.00 Relative importance of main byproduct 0.36 0.00 0.42 0.00 1.00 1049.21 350.00 1425.89 0.00 7045.46 2.50 2.00 0.92 1.00 6.00 23.38 2.00 314.27 0.00 5000.00 Market 0.39 0.00 0.49 0.00 1.00 39% 61% Mobile-intra-fam-info 0.73 1.00 0.45 0.00 1.00 73% 27% Quality perception 0.78 1.00 0.41 0.00 1.00 78% 22% Terminal owner 0.61 1.00 0.49 0.00 1.00 61% 39% 16.91 12.00 16.64 1.00 120.00 0.16 0.00 0.37 0.00 1.00 16% 84% Relative importance products of by- Max edu HH Agri-livestock VI per ha. Number of species Size of main species Length of use Mobile-extra-familiar Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 15 Barrantes Impact of mobile phone on agricultural profits from livestock activities Evidence from Puno, Peru Subset: Respondent is Mobile phone user and head of household or spouse, and milk producers; N=294 Variable Mean Median SD Min. Max. %Yes %No ln Profit per cáp 7.23 7.15 0.48 6.35 9.05 ln Profit 8.45 8.38 0.45 7.61 10.16 0.54 0.48 0.30 0.00 1.00 10.69 12.00 3.26 1.00 16.00 Ratio adults HH 0.62 0.60 0.25 0.00 1.00 Relative importance of main byproduct 0.52 0.74 0.42 0.00 1.00 749.85 200.00 1229.92 0.00 7045.46 2.52 2.00 0.90 1.00 6.00 20.31 2.00 291.54 0.00 5000.00 Market 0.62 1.00 0.49 0.00 1.00 63% 37% Mobile-intra-fam-info 0.84 1.00 0.37 0.00 1.00 84% 16% Quality perception 0.69 1.00 0.46 0.00 1.00 70% 30% Terminal owner 0.60 1.00 0.49 0.00 1.00 60% 40% 16.22 12.00 15.60 1.00 120.00 0.16 0.00 0.36 0.00 1.00 16% 84% Relative products importance of by- Max edu HH Agri-livestock VI per ha. Number of species Size of main species Length of use Mobile-extra-familiar Proceedings of the 4th ACORN-REDECOM Conference Brasilia, D.F., May 14-15th, 2010 16