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Bhat, Anil
- Agricultural Marketing in Hills:A Socio-Economic Analysis of Rajmash Marketing under North-Western Himalayan Region of J&K
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Affiliations
1 Division of Agricultural Economics and Agri-Business Management, SKUAST- J, Main Campus, Chatha (J&K), IN
1 Division of Agricultural Economics and Agri-Business Management, SKUAST- J, Main Campus, Chatha (J&K), IN
Source
International Research Journal of Agricultural Economics and Statistics, Vol 8, No 2 (2017), Pagination: 325-329Abstract
The Himalayan region extends all along the Northern boundary of India. The diverse ecohabitat of Himalayan region hosts a wide range of plant diversity as well as crop diversity on which native people rely for their food and nutritional security. Traditionally, agriculture on hills was practiced on a subsistence basis but, with the development of means of transport, storage facilities and other infrastructure, hill agriculture has become commercial in character. The present study has been carried out in Bhaderwah and Bhalla blocks of Doda district of J&K state which fall in the North-Western Himalayan region of J&K state. A sample of 100 farmers was drawn for the present study which comprised of 78 marginal farmers, 14 small farmers and 8 medium farmers. Primary data were used to analyze the results.The results revealed that both marketable surplus as well as marketed surplus was higher in case of medium farmers followed by small farmers and marginal farmers. It was found that three types of marketing channels mainly channel-I (Producer - Village Trader - Retailer – Consumer), channel-II (Producer – Retailer – Consumer) and channel-III (Producer – Consumer) were involved in the marketing of Rajmash in the study area. The total marketing cost and marketing margin was found higher in channel-I followed by channel-II and channel-III. The results also indicated that the marketing efficiency of channel-III (1.85) was highest as compared to channel-II (1.44) and channel-I (1.28) and the producer’s share in consumer’s rupee was also maximum in channel-III (97.51 %) followed by channel-II (82.49 %) and channel-I (76.25 %) in the study area.Keywords
Rajmash, Marketable Surplus, Marketed Surplus, Marketing Efficiency.References
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- Bhat, A., Kachroo, J. and Kachroo, D. (2011). Economic appraisal of kinnow production and its marketing under North-Western Himalayan region of Jammu.Agric. Econ. Res. Rev.,24 (2) : 283-290.
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- Sharma, P. K., Dwivedi, S. and Jamwal, S. (2013). Agricultural marketing in hills: Problems and opportunities. Hill Agriculture: Econ. & Sustain., pp. 263- 271.
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- Validation of two Parameter Function Height Diameter Models
Abstract Views :214 |
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Authors
Affiliations
1 Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), IN
2 Sher-e-Kashmir University of Agricultural Sciences and Technology of Kashmir, Kashmir (J&K), IN
1 Sher-e-Kashmir University of Agricultural Sciences and Technology of Jammu, Jammu (J&K), IN
2 Sher-e-Kashmir University of Agricultural Sciences and Technology of Kashmir, Kashmir (J&K), IN
Source
International Research Journal of Agricultural Economics and Statistics, Vol 9, No 2 (2018), Pagination: 331-334Abstract
Eleven nonlinear height diameter models were fitted and developed for Pinus trees based on individual tree height and diameter at breast height data (n=300) collected from block Langate of Kashmir province in India. Fitting of height diameter models using non-linear least square regression showed that all the parameters across all models were significant. In order to test the predictive performance of the models 10- folded cross-validation technique was used in this study. Comparison of AIC, RMSE, ME and Ad-R2 values for the training and validation data showed that most of the non-linear HD models capture the height diameter relationships for Pinus trees. Validation results suggest that Naslund -2 HD model provide the best height predictions in case of Pinus tree.Keywords
Height, Diameter, Cross Validation, Pinus.References
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