1951-1980年县域农业投入数据构建与农业生产力分析

C. Lee
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However, in-depth studies on agricultural productions in the past are restricted by the shortage of micro-level data covering the periods prior the 1980s.<br><br>In this study, I collected data sources (statistical yearbooks published by each province and county) and constructed databased containing variables regarding major inputs of agricultural productions in the 1960s and 1970s. I examined how major agricultural inputs (including land, labor, agricultural machines, and chemical fertilizers) changed over time and across provinces. By linking the data on inputs with the county-level agricultural production data, I also estimated agricultural production functions, focusing on the production of rice, the most important crop in Korean agriculture.<br><br>The present study is distinct from previous studies on Korean agricultural production in several respects. First, this research investigates agricultural production in Korean prior to 1980 based on county-level data, whereas most of previous studies that looked into the period are largely based on aggregate data of the country as a whole. Secondly, this study is the first to utilize the comprehensive county-level agricultural data on both outputs and inputs that are drawn from statistical yearbooks covering the two decades from 1960 to 1980. Finally, the present studies consider a wider range of agricultural inputs than those included in previous studies, including individual machinery and chemical fertilizer.<br><br>The area planted with all food crops and the size of rice-cultivating area increased and reached the peak in the mid 1965s. Afterwards, it declined over time. During the Korean War (1950 to 1953), the cultivated area temporarily diminished perhaps due to wartime destructions. The area of arable lands considerably differed by province. During the three decades under study, the province with the largest planted area was Gyeongbuk, followed by Jeonnam and Gyeongnam. By the 1970s, Jeonnam overtook Gyeongnam at the number one province in terms of the arable land area.<br><br>The farm population sharply fell from 1949 to 1951 as a consequence of wartime deaths. After the Korean War, the farm population gradually increased until 1967, and then declined over time thereafter. During the three decades under study, the top three provinces in terms of the size of farm population were Jeonnam, Gyeongbuk, and Gyeongnam. Even if the farm population is standardized according to age and gender compositions, these patterns of changes in labor input across times and provinces remain unchanged.<br><br>The number of major agricultural machines, such as power tillers, auto sprays, and tractors, increased sharply from the early 1970s. However, the trends should be cautiously interpreted because the relatively small number of machines in the early 1960s could result from the larger number of missing observations. Nevertheless, it seems evident that the availability of agricultural machines increased over time, although we cannot be sure how much under-reporting affects the real trend. If we compare years 1969 and 1980 when the number of counties with the number of machines reported remained unchanged, the number of power tillers increased more than 30 times. The increasing trend is similar to those of auto sprays and tractors. The patterns of changes in the use of agricultural machines substantially differed by region.<br><br>As in the case of agricultural machines, the use of chemical fertilizers dramatically increased from the early 1970s. Again, however, the trends should be taken cautiously because there were more counties in the 1960s where fertilizer consumption is unreported than in the 1970s. To address such potential problems, I also examined the yearly consumption divided by the number of counties (i.e., the average consumption per county). The results indicate that the rapid increasing trend largely captures the increase in the number of counties reporting fertilizer consumption. Furthermore, large fluctuations in each province’s fertilizer consumption are observed. These results suggest that samples with information on fertilizers should be selected so that variables for chemical fertilizers can be considered in the estimation of agricultural production functions.<br><br>Combining the county-level data on agricultural outputs and inputs, I estimated production functions of rice, the most important crop in Korean agriculture. The variable pertaining to land input is defined as the size the rice-cultivating area (measured in hectare) in each county in a given year. For labor input, I use the standardized population living in farm households cultivating rice. Since variables pertaining to capital inputs are not universally reported in provincial or county Annual Statistics, there is a tradeoff between considering more variables on inputs and additional loss of observations. I attempt to circumvent this problem in the following two ways. Firstly, I estimate agricultural production functions excluding the variable on capital inputs, and then extend the model by including additional capital inputs to examine the effects of the sample selections arising from missing observations of capital inputs. Secondly, I only focus only on major components of capital inputs to achieve a balance between omitted variables and missed observations. Finally, I included only the counties with information on a particular type of capital input (machine or fertilizer) to avoid bias arising from underreporting in early periods.<br><br>The results of regressions suggest that land and labor inputs have very strong positive relationship with the amount of rice production. In particular, the size of land input alone explains more than 95% of variations in rice productions across counties and years. If included separately, difference in labor input account for 83% of variations in rice outputs across counties and years. If the two inputs are included at the same time, the coefficient for land (0.99) is estimated much larger in magnitude than that for labor (0.05), confirming the huge importance of land in rice production in the 1960s and 1970s. If the year fixed is controlled, the coefficient for land diminishes by about 0.1 whereas the coefficient for labor increases by roughly the same magnitude. It is likely that year fixed effect captures the contributions of omitted factors that changed over time, including increased capital inputs and technical progress. The regression results imply that such omitted factors are positively related to land input, and negatively related to labor input. This is consistent with the fact that labor input decreased more rapidly than land input during the period under study.<br><br>I also conducted regressions in which a measure capital input (composite index of agricultural machines) is included. The coefficient for machine is positive and statistically significant, but the additional input explains only 3% of the variations in rice production across counties and years. If machine is additionally included, the coefficients for land and labor do not change much. Inclusion of year fixed effect reduces the coefficients for land and machine, whereas the contribution of labor becomes larger in magnitude. In particular, the coefficient for machine diminishes by more than two thirds. This indicates that the estimated contributions of agricultural machines largely capture the changes in capital input and output across times.<br><br>In sum, the results of regression analyses suggest that local rice production in Korea during the period from 1960 to 1979 was largely determined by land and labor inputs. Changes in these two factors explain more than 95% of variations in rice production across counties and years. It is difficult to estimate accurately the contributions of capital inputs to agricultural production because data are available only for selected capital inputs and for selected places and years. The results based on using three major agricultural machines of the time (power tillers, automatic sprays, and tractors) suggest that capital inputs also played significant roles in changing agricultural production, especially across times.<br><br>Given the currently available county-level data on agricultural inputs, it would be reasonable to use the number of major agricultural machines as an index of capital input in estimating agricultural production function. Land, labor, and agricultural machines explain over 98% of the variations in rice production across counties and years. Using the data and estimated regression coefficient for each input, it will be possible to estimate the agricultural total factor productivity as well as each factor productivity in each county and year. I remain it as future research agenda to investigate how natural, institutional and technological factors (such as natural disasters, local organizations, and new methods) affected these measures of local agricultural productivity.<br>","PeriodicalId":14586,"journal":{"name":"IO: Productivity","volume":"1 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2020-09-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Constructing County-Level Data for Agricultural Inputs and Analyzing Agricultural Productivity, 1951-1980\",\"authors\":\"C. Lee\",\"doi\":\"10.2139/ssrn.3693547\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Since the liberation from the Japanese occupation in 1945, South Korea has achieved substantial improvement in the nutritional status of the population, as indicated by the increase in adult heights. 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By linking the data on inputs with the county-level agricultural production data, I also estimated agricultural production functions, focusing on the production of rice, the most important crop in Korean agriculture.<br><br>The present study is distinct from previous studies on Korean agricultural production in several respects. First, this research investigates agricultural production in Korean prior to 1980 based on county-level data, whereas most of previous studies that looked into the period are largely based on aggregate data of the country as a whole. Secondly, this study is the first to utilize the comprehensive county-level agricultural data on both outputs and inputs that are drawn from statistical yearbooks covering the two decades from 1960 to 1980. Finally, the present studies consider a wider range of agricultural inputs than those included in previous studies, including individual machinery and chemical fertilizer.<br><br>The area planted with all food crops and the size of rice-cultivating area increased and reached the peak in the mid 1965s. Afterwards, it declined over time. During the Korean War (1950 to 1953), the cultivated area temporarily diminished perhaps due to wartime destructions. The area of arable lands considerably differed by province. During the three decades under study, the province with the largest planted area was Gyeongbuk, followed by Jeonnam and Gyeongnam. By the 1970s, Jeonnam overtook Gyeongnam at the number one province in terms of the arable land area.<br><br>The farm population sharply fell from 1949 to 1951 as a consequence of wartime deaths. After the Korean War, the farm population gradually increased until 1967, and then declined over time thereafter. During the three decades under study, the top three provinces in terms of the size of farm population were Jeonnam, Gyeongbuk, and Gyeongnam. Even if the farm population is standardized according to age and gender compositions, these patterns of changes in labor input across times and provinces remain unchanged.<br><br>The number of major agricultural machines, such as power tillers, auto sprays, and tractors, increased sharply from the early 1970s. However, the trends should be cautiously interpreted because the relatively small number of machines in the early 1960s could result from the larger number of missing observations. Nevertheless, it seems evident that the availability of agricultural machines increased over time, although we cannot be sure how much under-reporting affects the real trend. If we compare years 1969 and 1980 when the number of counties with the number of machines reported remained unchanged, the number of power tillers increased more than 30 times. The increasing trend is similar to those of auto sprays and tractors. The patterns of changes in the use of agricultural machines substantially differed by region.<br><br>As in the case of agricultural machines, the use of chemical fertilizers dramatically increased from the early 1970s. Again, however, the trends should be taken cautiously because there were more counties in the 1960s where fertilizer consumption is unreported than in the 1970s. To address such potential problems, I also examined the yearly consumption divided by the number of counties (i.e., the average consumption per county). The results indicate that the rapid increasing trend largely captures the increase in the number of counties reporting fertilizer consumption. Furthermore, large fluctuations in each province’s fertilizer consumption are observed. These results suggest that samples with information on fertilizers should be selected so that variables for chemical fertilizers can be considered in the estimation of agricultural production functions.<br><br>Combining the county-level data on agricultural outputs and inputs, I estimated production functions of rice, the most important crop in Korean agriculture. The variable pertaining to land input is defined as the size the rice-cultivating area (measured in hectare) in each county in a given year. For labor input, I use the standardized population living in farm households cultivating rice. Since variables pertaining to capital inputs are not universally reported in provincial or county Annual Statistics, there is a tradeoff between considering more variables on inputs and additional loss of observations. I attempt to circumvent this problem in the following two ways. Firstly, I estimate agricultural production functions excluding the variable on capital inputs, and then extend the model by including additional capital inputs to examine the effects of the sample selections arising from missing observations of capital inputs. Secondly, I only focus only on major components of capital inputs to achieve a balance between omitted variables and missed observations. Finally, I included only the counties with information on a particular type of capital input (machine or fertilizer) to avoid bias arising from underreporting in early periods.<br><br>The results of regressions suggest that land and labor inputs have very strong positive relationship with the amount of rice production. In particular, the size of land input alone explains more than 95% of variations in rice productions across counties and years. If included separately, difference in labor input account for 83% of variations in rice outputs across counties and years. If the two inputs are included at the same time, the coefficient for land (0.99) is estimated much larger in magnitude than that for labor (0.05), confirming the huge importance of land in rice production in the 1960s and 1970s. If the year fixed is controlled, the coefficient for land diminishes by about 0.1 whereas the coefficient for labor increases by roughly the same magnitude. It is likely that year fixed effect captures the contributions of omitted factors that changed over time, including increased capital inputs and technical progress. The regression results imply that such omitted factors are positively related to land input, and negatively related to labor input. This is consistent with the fact that labor input decreased more rapidly than land input during the period under study.<br><br>I also conducted regressions in which a measure capital input (composite index of agricultural machines) is included. 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引用次数: 0

摘要

自1945年从日本占领下解放以来,南朝鲜在人口的营养状况方面取得了实质性的改善,成年人身高的增加表明了这一点。最近的研究表明,当地食物供应的增加是1960年以前出生的人身高增加的一个重要因素。除了作为改善营养状况的长期因素具有重要意义外,考虑到当时韩国农业部门的相对规模,在1960年代和1970年代衡量农业生产力并确定其主要因素本身也是一个重要问题。然而,过去对农业生产的深入研究由于缺乏覆盖1980年代以前时期的微观数据而受到限制。在本研究中,我收集了数据来源(各省、县出版的统计年鉴),构建了包含20世纪60年代和70年代农业生产主要投入变量的数据库。我研究了主要农业投入(包括土地、劳动力、农业机械和化肥)是如何随着时间和省份的变化而变化的。通过将投入数据与县级农业生产数据联系起来,我还以韩国农业中最重要的作物水稻的生产为重点,估算了农业生产函数。本研究在几个方面不同于以往对韩国农业生产的研究。首先,本研究基于县级数据调查了1980年之前韩国的农业生产,而之前大多数研究都是基于整个国家的汇总数据。其次,本研究首次利用了从1960年至1980年二十年的统计年鉴中得出的关于产出和投入的县级综合农业数据。最后,本研究考虑的农业投入比以前的研究范围更广,包括个别机械和化肥。所有粮食作物的种植面积和水稻种植面积都有所增加,并在20世纪65年代中期达到顶峰。之后,它随着时间的推移而下降。在朝鲜战争期间(1950年至1953年),耕地面积可能由于战争破坏而暂时减少。各省的耕地面积差别很大。在调查的30年间,种植面积最大的地区依次是庆北、全南、庆南。到20世纪70年代,全南的耕地面积超过了庆南,成为全国第一。从1949年到1951年,由于战时死亡,农场人口急剧下降。朝鲜战争后,农场人口逐渐增加,直到1967年,然后随着时间的推移下降。在调查的30年间,农业人口最多的3个地区分别是全南、庆北、庆南。即使根据年龄和性别构成对农场人口进行标准化,这些不同时期和省份的劳动力投入变化模式仍然保持不变。从20世纪70年代初开始,主要农业机械的数量急剧增加,如动力播种机、自动喷雾器和拖拉机。然而,应该谨慎地解释这些趋势,因为1960年代早期相对较少的机器可能是由于大量的观测缺失造成的。然而,很明显,随着时间的推移,农业机械的可用性增加了,尽管我们不能确定少报的情况对实际趋势有多大影响。如果我们比较1969年和1980年,当报告的机器数量保持不变的县的数量时,动力分蘖机的数量增加了30多倍。增加趋势与汽车喷雾剂和拖拉机相似。农业机械使用的变化模式因地区而异。与农业机械的情况一样,化肥的使用从20世纪70年代初开始急剧增加。然而,我们应该再次谨慎对待这些趋势,因为20世纪60年代没有报告肥料消耗的县比20世纪70年代多。为了解决这些潜在的问题,我还检查了年消费量除以县的数量(即每个县的平均消费量)。结果表明,快速增长的趋势在很大程度上反映了报告肥料消费量的县的数量的增加。此外,还观察到各省化肥消费量波动较大。这些结果表明,应选择具有肥料信息的样本,以便在估计农业生产函数时考虑化肥的变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing County-Level Data for Agricultural Inputs and Analyzing Agricultural Productivity, 1951-1980
Since the liberation from the Japanese occupation in 1945, South Korea has achieved substantial improvement in the nutritional status of the population, as indicated by the increase in adult heights. Recent studies suggest that increase in local food availability was an important contributing factor of the increased heights of the individuals born prior to 1960. Besides its significance as a long-term factor of improvement in nutritional status, measuring agricultural productivity and determining its major factors in the 1960s and 1970s is an important issue in its own right given the relative size of the Korean agricultural sector at the time. However, in-depth studies on agricultural productions in the past are restricted by the shortage of micro-level data covering the periods prior the 1980s.

In this study, I collected data sources (statistical yearbooks published by each province and county) and constructed databased containing variables regarding major inputs of agricultural productions in the 1960s and 1970s. I examined how major agricultural inputs (including land, labor, agricultural machines, and chemical fertilizers) changed over time and across provinces. By linking the data on inputs with the county-level agricultural production data, I also estimated agricultural production functions, focusing on the production of rice, the most important crop in Korean agriculture.

The present study is distinct from previous studies on Korean agricultural production in several respects. First, this research investigates agricultural production in Korean prior to 1980 based on county-level data, whereas most of previous studies that looked into the period are largely based on aggregate data of the country as a whole. Secondly, this study is the first to utilize the comprehensive county-level agricultural data on both outputs and inputs that are drawn from statistical yearbooks covering the two decades from 1960 to 1980. Finally, the present studies consider a wider range of agricultural inputs than those included in previous studies, including individual machinery and chemical fertilizer.

The area planted with all food crops and the size of rice-cultivating area increased and reached the peak in the mid 1965s. Afterwards, it declined over time. During the Korean War (1950 to 1953), the cultivated area temporarily diminished perhaps due to wartime destructions. The area of arable lands considerably differed by province. During the three decades under study, the province with the largest planted area was Gyeongbuk, followed by Jeonnam and Gyeongnam. By the 1970s, Jeonnam overtook Gyeongnam at the number one province in terms of the arable land area.

The farm population sharply fell from 1949 to 1951 as a consequence of wartime deaths. After the Korean War, the farm population gradually increased until 1967, and then declined over time thereafter. During the three decades under study, the top three provinces in terms of the size of farm population were Jeonnam, Gyeongbuk, and Gyeongnam. Even if the farm population is standardized according to age and gender compositions, these patterns of changes in labor input across times and provinces remain unchanged.

The number of major agricultural machines, such as power tillers, auto sprays, and tractors, increased sharply from the early 1970s. However, the trends should be cautiously interpreted because the relatively small number of machines in the early 1960s could result from the larger number of missing observations. Nevertheless, it seems evident that the availability of agricultural machines increased over time, although we cannot be sure how much under-reporting affects the real trend. If we compare years 1969 and 1980 when the number of counties with the number of machines reported remained unchanged, the number of power tillers increased more than 30 times. The increasing trend is similar to those of auto sprays and tractors. The patterns of changes in the use of agricultural machines substantially differed by region.

As in the case of agricultural machines, the use of chemical fertilizers dramatically increased from the early 1970s. Again, however, the trends should be taken cautiously because there were more counties in the 1960s where fertilizer consumption is unreported than in the 1970s. To address such potential problems, I also examined the yearly consumption divided by the number of counties (i.e., the average consumption per county). The results indicate that the rapid increasing trend largely captures the increase in the number of counties reporting fertilizer consumption. Furthermore, large fluctuations in each province’s fertilizer consumption are observed. These results suggest that samples with information on fertilizers should be selected so that variables for chemical fertilizers can be considered in the estimation of agricultural production functions.

Combining the county-level data on agricultural outputs and inputs, I estimated production functions of rice, the most important crop in Korean agriculture. The variable pertaining to land input is defined as the size the rice-cultivating area (measured in hectare) in each county in a given year. For labor input, I use the standardized population living in farm households cultivating rice. Since variables pertaining to capital inputs are not universally reported in provincial or county Annual Statistics, there is a tradeoff between considering more variables on inputs and additional loss of observations. I attempt to circumvent this problem in the following two ways. Firstly, I estimate agricultural production functions excluding the variable on capital inputs, and then extend the model by including additional capital inputs to examine the effects of the sample selections arising from missing observations of capital inputs. Secondly, I only focus only on major components of capital inputs to achieve a balance between omitted variables and missed observations. Finally, I included only the counties with information on a particular type of capital input (machine or fertilizer) to avoid bias arising from underreporting in early periods.

The results of regressions suggest that land and labor inputs have very strong positive relationship with the amount of rice production. In particular, the size of land input alone explains more than 95% of variations in rice productions across counties and years. If included separately, difference in labor input account for 83% of variations in rice outputs across counties and years. If the two inputs are included at the same time, the coefficient for land (0.99) is estimated much larger in magnitude than that for labor (0.05), confirming the huge importance of land in rice production in the 1960s and 1970s. If the year fixed is controlled, the coefficient for land diminishes by about 0.1 whereas the coefficient for labor increases by roughly the same magnitude. It is likely that year fixed effect captures the contributions of omitted factors that changed over time, including increased capital inputs and technical progress. The regression results imply that such omitted factors are positively related to land input, and negatively related to labor input. This is consistent with the fact that labor input decreased more rapidly than land input during the period under study.

I also conducted regressions in which a measure capital input (composite index of agricultural machines) is included. The coefficient for machine is positive and statistically significant, but the additional input explains only 3% of the variations in rice production across counties and years. If machine is additionally included, the coefficients for land and labor do not change much. Inclusion of year fixed effect reduces the coefficients for land and machine, whereas the contribution of labor becomes larger in magnitude. In particular, the coefficient for machine diminishes by more than two thirds. This indicates that the estimated contributions of agricultural machines largely capture the changes in capital input and output across times.

In sum, the results of regression analyses suggest that local rice production in Korea during the period from 1960 to 1979 was largely determined by land and labor inputs. Changes in these two factors explain more than 95% of variations in rice production across counties and years. It is difficult to estimate accurately the contributions of capital inputs to agricultural production because data are available only for selected capital inputs and for selected places and years. The results based on using three major agricultural machines of the time (power tillers, automatic sprays, and tractors) suggest that capital inputs also played significant roles in changing agricultural production, especially across times.

Given the currently available county-level data on agricultural inputs, it would be reasonable to use the number of major agricultural machines as an index of capital input in estimating agricultural production function. Land, labor, and agricultural machines explain over 98% of the variations in rice production across counties and years. Using the data and estimated regression coefficient for each input, it will be possible to estimate the agricultural total factor productivity as well as each factor productivity in each county and year. I remain it as future research agenda to investigate how natural, institutional and technological factors (such as natural disasters, local organizations, and new methods) affected these measures of local agricultural productivity.
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