Introduction
Interactions between people and wildlife can be positive, neutral or negative (Redpath et al., Reference Redpath, Bhatia and Young2015; Fisher, Reference Fisher2016). Positive interactions include benefits such as pollination, seed dispersal services, pest management and tourism (Zhang et al., Reference Zhang, Ricketts, Kremen, Carney and Swinton2007). Negative interactions include loss of property, crops, livestock, and human lives, and pose a significant challenge to conservation efforts in wildlife reserves (Fernando et al., Reference Fernando, Wikramanayake, Weerakoon, Jayasinghe, Gunawardene and Janaka2005; Naughton-Treves & Treves, Reference Naughton-Treves, Treves, Woodroffe, Thirgood and Rabinowitz2005). Such losses incurred by vulnerable communities can lead to a decreased tolerance for wildlife and may result in retaliatory killings (Ogada et al., Reference Ogada, Woodroffe, Oguge and Frank2003; Holmern et al., Reference Holmern, Nyahongo and Røskaft2007; Kissui, Reference Kissui2008). Ongoing land-use change and sharing of resources between wildlife and people make it imperative to understand the nature of these interactions, to mitigate losses on both sides and foster tolerance.
Understanding the agricultural and livestock husbandry practices that predispose communities to crop damage and livestock predation can facilitate better mitigation efforts (Woodroffe et al., Reference Woodroffe, Frank, Lindsey, ole Ranah and Romañach2007). Commonly used physical preventive mitigation measures include electric, solar and deterrent crop fences, trenches, night-watching, scare devices and livestock-protection dogs (Davies et al., Reference Davies, Wilson, Hazarika, Chakrabarty, Das, Hodgson and Zimmermann2011; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012). Reactive measures include insurance and post hoc compensation schemes (Ogra & Badola, Reference Ogra and Badola2008; Treves et al., Reference Treves, Jurewicz, Naughton-Treves and Wilcove2009). Understanding which factors influence a household's decisions to use mitigation measures is important for managing negative interactions (Ogada et al., Reference Ogada, Woodroffe, Oguge and Frank2003; Karanth & Kudalkar, Reference Karanth and Kudalkar2017).
India provides an ideal context to study human–wildlife interactions because damage to crops and livestock is widespread across various geographical, cultural and ecological contexts (Karanth & Kudalkar, Reference Karanth and Kudalkar2017; Karanth & Surendhra, Reference Karanth, Surendhra and Bhagwat2018). Wildlife such as wild pigs Sus scrofa, nilgai Boselaphus tragocamelus and elephants Elephas maximus are common causes of crop damage, whereas tigers Panthera tigris, leopards Panthera pardus and canids are associated with livestock losses (Karanth et al., Reference Karanth, Nichols, Karanth, Hines and Christensen2010; Karanth & Surendhra, Reference Karanth, Surendhra and Bhagwat2018).
During 2010–2015 compensation was awarded in >81,100 cases of reported conflict across India (Karanth & Gupta, unpubl. data). This number is probably an underestimate, as many incidents are not reported (Ogra & Badola, Reference Ogra and Badola2008; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012; Dhanwatey et al., Reference Dhanwatey, Crawford, Abade, Dhanwatey, Nielsen and Sillero-Zubiri2013; Karanth et al., Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a, Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). Crop and property damage is the most common (71%), followed by livestock predation (21%), with fewer incidents of human injury (6%) and death (< 0.4%) (Karanth & Gupta, unpubl. data).
In contrast to other Indian states, Rajasthan does not have a policy for crop damage but provides compensation payments for livestock loss, human injury and death (Johnson et al., unpubl. data; Karanth & Gupta, unpubl. data). Given the juxtaposition of wildlife and people in the state, understanding people's attitudes towards wildlife and wildlife reserves is essential to wildlife conservation efforts. We investigated attitudes towards wildlife-related loss of crops and livestock, damage to property, and human injury and death, among people living near four reserves. We also examined factors that influence the use of mitigation measures, and experiences with compensation. We sought to understand people's attitudes towards wildlife, reserves and wildlife-related losses, and in doing so to influence existing park management policies and practices in Rajasthan.
Study area
We selected four relatively understudied non-tiger reserves in Rajasthan state: Jaisamand Wildlife Sanctuary, Kumbhalgarh & Todgarh Raoli Wildlife Sanctuary, Phulwari ki Nal Wildlife Sanctuary and Sitamata Wildlife Sanctuary, hereafter Jaisamand, Kumbhalgarh, Phulwari and Sitamata, respectively (Table 1; Fig. 1). Vegetation in these reserves comprises mainly dry deciduous forests and scrublands (Robbins et al., Reference Robbins, McSweeney, Chhangani and Rice2009), and the reserves support populations of wolves Canis lupus, leopards, sloth bears Melursus ursinus, hyaenas Hyaena hyaena, and ungulates such as the sambar Cervus unicolor, spotted deer Axis axis, nilgai and four horned antelope Tetracerus quadricornis (Chhangani et al., Reference Chhangani, Robbins and Mohnot2008; Robbins et al., Reference Robbins, McSweeney, Chhangani and Rice2009). The settlements around the reserves are agropastoral, depending on livestock husbandry, subsistence and commercial agriculture (Chhangani et al., Reference Chhangani, Robbins and Mohnot2008).
Methods
Household surveys
During January–March 2014 trained volunteers and research assistants surveyed 2,233 households in 1,096 villages within a radius of 10 km of the four study reserves (Table 1). This radius was chosen based on the known movement of wildlife outside reserve boundaries (Chhangani et al., Reference Chhangani, Robbins and Mohnot2008; Robbins et al., Reference Robbins, McSweeney, Chhangani and Rice2009; Karanth et al., Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a, Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). We divided the study area (9,920 km2) into 620 grid cells and surveyed households in 502 cells, excluding 118 that did not contain any households (Table 1). Respondents answered structured, semi-structured and open-ended questions in Hindi. Informed consent was obtained verbally from each respondent prior to administering the survey and using the data. We were unable to obtain written consent because respondents had low levels of literacy and were uncomfortable signing documents.
Adult respondents were questioned about their attitudes towards wildlife and the wildlife reserves. They provided information on family size, education levels, agricultural practices, land and livestock ownership, animal husbandry practices, and access to communal lands. Specifically, respondents were asked about their household's negative interactions with wildlife (damage to crops or property, livestock predation, human injury or death), following protocols described in Karanth et al. (Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a). The questions regarding these interactions were restricted to the most recent year, to minimize recall errors. We also enquired about the use of mitigation measures, and access to and reporting of compensation. In addition to the variables derived from the survey data, we also derived distance to the closest wildlife reserve, distance to the closest water body and elevation for each household, to serve as landscape predictors in our models in ArcGIS 10.4 (ESRI, Redlands, USA). We used the land use/land cover information from the Natural Resources Census Project of the National Remote Sensing Centre (2014), and elevation data from the Advanced Spaceborne Thermal Emission and Reflection Radiometer Global Digital Elevation Map available through the NASA Land Processes Distributed Active Archive Center (NASA, 2011).
Variable and model selection
We selected nine variables of interest for attitudes towards wildlife and wildlife reserves, 17 for crop damage, 13 for livestock predation, 15 for mitigation against crop damage, and 12 for mitigation against livestock predation (Supplementary Table S1). We calculated Pearson's correlations for the covariates to check for collinearity (Pearson, Reference Pearson1895).
To model household attitudes towards wildlife and wildlife reserves we questioned respondents about the importance of protecting wildlife reserves, and whether they would value wildlife more in the absence of negative interactions. We expected positive associations for male respondents, owning more agricultural land, and more years of schooling, and for households that experienced fewer negative interactions (Browne-Nuñez et al., Reference Browne-Nuñez, Jacobson and Vaske2013; Karanth & Kudalkar, Reference Karanth and Kudalkar2017).
To model crop damage and use of mitigation against crop damage, we used only data from 2,095 households that grew crops. Similarly, to model livestock predation and use of mitigation against livestock predation we used only data from 1,981 households that owned livestock. As our response variables were binary, we constructed binary logistic regression models to parse out the effects of our covariates.
We expected households that were closer to the reserves and water bodies to experience more crop damage and livestock predation (Chhangani et al., Reference Chhangani, Robbins and Mohnot2008; Dhanwatey et al., Reference Dhanwatey, Crawford, Abade, Dhanwatey, Nielsen and Sillero-Zubiri2013; Karanth, Reference Karanth2016; Karanth & Surendhra, Reference Karanth, Surendhra and Bhagwat2018). For crop damage, we expected households growing a greater variety of crops and with larger land holdings to experience more raiding (Chhangani et al., Reference Chhangani, Robbins and Mohnot2008; Karanth & Surendhra, Reference Karanth, Surendhra and Bhagwat2018). Additionally, we expected larger households using more mitigation measures to experience less raiding (Davies et al., Reference Davies, Wilson, Hazarika, Chakrabarty, Das, Hodgson and Zimmermann2011; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a,Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). We predicted households owning larger herds of livestock and using communal lands for grazing would experience higher levels of livestock predation (Bradley & Pletscher, Reference Bradley and Pletscher2005; Michalski et al., Reference Michalski, Boulhosa, Faria and Peres2006; Chhangani et al., Reference Chhangani, Robbins and Mohnot2008). We also expected predation would be negatively associated with a higher number of mitigation measures and household members (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a).
We anticipated that use of mitigation against crop damage would be positively associated with households owning more agricultural land, growing a greater variety of crops, having a longer history of negative interactions, having more members and being more educated (Fernando et al., Reference Fernando, Wikramanayake, Weerakoon, Jayasinghe, Gunawardene and Janaka2005; Sitati et al., Reference Sitati, Walpole and Leader-Williams2005; Karanth & Nepal, Reference Karanth and Nepal2012; Karanth & Kudalkar, Reference Karanth and Kudalkar2017). Similarly, we predicted that use of mitigation against livestock predation would be positively associated with households owning more agricultural land and larger livestock herds, having a longer history of negative interactions, having more members and being more educated (Karanth & Nepal, Reference Karanth and Nepal2012; Karanth & Kudalkar, Reference Karanth and Kudalkar2017). We also anticipated a negative association of mitigation use and distance to the reserve (Karanth & Kudalkar, Reference Karanth and Kudalkar2017).
We built a priori models for each of the six response variables, assessed their fit using Akaike's information criterion corrected for a small sample size (AICc), and identified significantly associated variables (Burnham & Anderson, Reference Burnham and Anderson2002). Using the AICc weights to assess a model's fit relative to its parsimony, we selected our top models. Based on a priori predictions, we constructed 15 models for crop damage, 15 for livestock predation, 15 for mitigation against crop damage, 14 for mitigation against livestock predation, six for importance of wildlife reserves and six for whether the household would value wildlife more in the absence of negative interactions. We used the top models (cumulative AICc weights > 0.95) to calculate the probability estimate of each of the response variables.
Results
General household characteristics
Despite sustained efforts to include more women in our surveys, 78% of respondents were men (Table 1). The majority of households (62%) included a member with > 8 years of school education (Table 1). Most households (93%) reported owning a mean of 0.4 ha (range 0–21 ha) of agricultural land (ranging from 88% in Kumbhalgarh to 97.5% in Phulwari).
Twenty-eight percent of households reported the existence of communal land in their community (ranging from 9% in Phulwari to 42% in Kumbhalgarh), used primarily for grazing domestic animals. Among these, 17% reported that there were restrictions on the use of communal land, such as open/closed seasons and limits on fuelwood collection (ranging from 12% in Sitamata to 24% in Phulwari).
The majority (77.5%) of surveyed households reported they had experienced negative human–wildlife interactions, such as losses of crops, livestock and/or property, in the preceding year (ranging from 69% in Phulwari to 83% in Jaisamand). For 50% of respondents the frequency of interaction seemed to increase during periods with less rainfall.
Attitudes towards wildlife and wildlife reserves
Many respondents believed that protecting wildlife reserves for wild animals was important (85%) and stated they would value wildlife more in the absence of negative interactions and losses (73%) (Supplementary Table S2). We explored factors associated with households’ support for protection of wildlife reserves. As expected, our two top-ranked models suggested that females were more likely to have negative associations compared to males (β = −0.32 ± SE 0.15; Supplementary Table S3). As predicted, respondents with more education were more supportive of protecting wildlife reserves for animals (β range = 0.47–0.81, SE = 0.21–0.26). We estimated that the probability of a household supporting the protection of wildlife reserves was 0.85 ± SE 0.02 (Table 2). Households in Sitamata were significantly more supportive than those in other reserves (ANOVA test, P < 0.05).
We also examined whether in the absence of negative interactions households would value wildlife and its protection more, and found one top-ranked model (Supplementary Table S3). In comparison to Kumbhalgarh, households around Phulwari (β = −1.32 ± SE 0.14) and Sitamata (β = −0.86 ± SE 0.18) were less likely and households around Jaisamand (β = 0.52 ± SE 0.26) were more likely to value wildlife in the absence of negative interactions. Absence of negative interactions with wildlife was less likely to improve women's tolerance for wildlife compared to men's (β = −0.36 ± SE 0.14). As expected, education was positively associated with valuing wildlife (β range = 0.62–1.16). Furthermore, households that experienced crop damage (β = 1.53 ± SE 0.17) and livestock predation (β = 0.84 ± SE 0.21), and used mitigation, were positively associated with valuing wildlife in the absence of negative interactions (β = 0.65 ± SE 0.16). The estimated probability of a household's value for wildlife increasing in the absence of negative interactions was 0.74 ± SE 0.03, ranging from 0.55 ± SE 0.04 in Phulwari to 0.89 ± SE 0.02 in Jaisamand. The probabilities differed significantly among the reserves (ANOVA test, P < 0.05).
Crop and property damage
Households cultivated > 22 crops, including both food and non-food crops, such as cereals (92%), pulses and legumes (51%), oilseeds (42%), millets (20%) and cotton (10%). Many households (47%) reported having changed their farming practices in the previous 10 years. Crop production was most affected by lack of rain (89%) and irrigation (71%), whereas farming practices were changed depending on the availability of and access to development assistance (28%), new markets (11%), input factors (11%) and government support (10%).
Many households (76%) reported experiencing crop damage, ranging from 69% in Phulwari to 83% in Jaisamand (Supplementary Table S2), with a statistically significant difference in crop damage across reserves (Fisher test, P < 0.05). Respondents attributed crop damage to 20 species, the top-ranked being nilgai (75%), jackal Canis aureus (28%) and wild pig (28%) (Supplementary Table S2). A majority of households (91%) that experienced crop damage were affected in July and August. The frequency of crop damage was high, with 89% of households experiencing > 10 incidents per year. The difference in history of crop damage between reserves was statistically significant (Fisher test, P < 0.05).
Although levels of crop damage varied, 47% of respondents reported losing 26–50% of their crop in the previous year. The subsequent loss of income from crop damage amounted to a mean of USD 164 (INR 11,000), with a maximum loss of USD 14,925 (INR 1,000,000 at USD 1 = INR 67) (Supplementary Table S2). Losses experienced by households around Phulwari were significantly lower compared to the other three reserves (ANOVA test, P < 0.05). Property damage was rare, being reported by a single household in Kumbhalgarh.
We modelled household vulnerability to crop damage and found six top-ranked models (cumulative AICc weight >0.95) (Supplementary Table S5). Contrary to expectations, households located at higher elevations were found to be positively associated with higher levels of crop damage (β = 0.73 ± SE 0.16) (Supplementary Table S3). As predicted, we observed that households that grew more crops suffered more crop damage (β = 0.92 ± SE 0.20). However, crop damage was also positively associated with households that used mitigation measures against crop damage (β = 4.02 ± SE 0.17). We did not find any other factors of significance associated with crop damage among our top-ranked models. The mean estimated probability of crop damage was 0.79 ± SE 0.01 across all four reserves, ranging from 0.67 ± SE 0.02 in Phulwari to 0.86 ± SE 0.01 in Kumbhalgarh. The estimates for Phulwari were significantly lower than those for the other three reserves (ANOVA test, P < 0.05).
Livestock predation
The majority of households surveyed (89%) owned livestock, ranging from 83% in Kumbhalgarh to 92% in Phulwari. There was no significant shift in livestock ownership during the 10 years prior to the survey. Fifteen percent of surveyed households reported experiencing a livestock predation incident in the previous year (Supplementary Table S2). The difference in livestock predation reported between the four reserves was statistically significant (Fisher test, P < 0.95). Predation was attributed to eight species, the most important being leopards (56%), jackals (27%) and wolves (12%) (Supplementary Table S2). The frequency of predation incidents varied from once per year (40%) to > 10 times per year (16%). The subsequent loss of income from livestock predation amounted to a mean of USD 69 (INR 4,600), with a maximum loss of USD 1,492 (INR 100,000). Kumbhalgarh experienced significantly greater losses than Phulwari and Sitamata, and similar losses to Jaisamand (ANOVA, P < 0.05).
We modelled the risk of livestock loss and found four top-ranked models (cumulative AICc weights >0.95) (Supplementary Table S6). Among the landscape factors, as expected, distance to reserve had a negative association (β = −0.35 ± SE 0.15) and elevation had a positive association (β = 0.52 ± SE 0.16) with livestock predation (Supplementary Table S3). Ownership of 6–10 head of livestock (β = 0.62 ± SE 0.24) and > 20 head of livestock (β = 1.11 ± SE 0.34) had significant positive association with the risk of predation. Mitigation use was also strongly positively associated with livestock predation (β = 3.26 ± SE 0.16). The mean estimated probability of livestock predation ranged from 0.1 in Phulwari (SE = 0.012) to 0.24 in Kumbhalgarh (SE = 0.03) and was significantly higher for the latter in comparison to the other three reserves (ANOVA test, P < 0.05).
Human injury and death
Incidents of human injury were rare (0.3% in Phulwari and 0.6% in Kumbhalgarh), and were most frequent during December, January and February (Supplementary Table S2). Injuries were attributed to wolves (25%), leopards (25%), hyaenas (25%), sloth bears (25%), wild pigs (12.5%), nilgai (12.5%), and four-horned antelope (12.5%).
Mitigation measures
We questioned householders regarding their use of mitigation measures to protect their crops, livestock and themselves. To mitigate against crop damage, night-time watching was used by 57% of households, followed by lighting and scare devices (48%), fencing (42%), use of guard animals (22%) and removal of bush and forest (12%) (Supplementary Table S2). Use of mitigation against livestock predation was lower, and common measures included watching livestock more closely (15%) and fencing (8%) (Supplementary Table S2).
Few householders (18%) stated that they would act as a group rather than individually to mitigate losses on communal land. Most of these households (89%) participated in communal mitigation activities by attending community meetings. Many (74%) stated that they were likely to cooperate with local officials if asked to try specific measures.
We modelled the use of mitigation to reduce crop damage and livestock predation. We found six top-ranked models each for mitigation use against crop damage and against livestock predation (cumulative AICc weight > 0.95) (Supplementary Tables S7 & S8). In contrast to our predictions, households further away from the reserves were more likely to use mitigation measures against crop damage (β = 0.31 ± SE 0.16). As expected, number of years of crop damage was positively associated with mitigation use, with the association being strongest for 6–10 years (β = 1.68 ± SE 0.35). Households whose members had more education were also significantly positively associated with mitigation use (β range = 0.49–0.99, SE range = 0.27–0.34). Amongst species responsible for crop damage, the wild pig was the only one that had a significant positive association with mitigation use (β = 0.37 ± SE 0.22). The estimated mean probability of mitigation use against crop damage across the four reserves was 0.86 ± SE 0.02 (Table 2). The probability was relatively similar across the reserves, ranging from 0.84 ± SE 0.03 in Phulwari to 0.87 ± SE 0.02 in Kumbhalgarh and Jaisamand. Estimates for Kumbhalgarh were significantly higher than for the other reserves, and estimates for Phulwari were the lowest among the reserves (ANOVA test, P < 0.05).
Contrary to our predictions, use of mitigation against livestock predation was positively associated with distance to reserve (β = 0.34 ± SE 0.14). As expected, livestock ownership had a positive association with mitigation use, the relationship being strongest for households with 16–20 head of livestock (β = 1.49 ± SE 0.44). Households that had experienced livestock predation for over a decade (β = 1.59 ± SE 0.35) and for 1–5 years (β = 1.07 ± SE 0.42) were positively associated with mitigation use. There was a strong positive association between mitigation use by households and the predation of livestock by leopards (β = 2.29 ± SE 0.34), wolves (β = 2.22 ± SE 0.55) and jackals (β = 1.38 ± SE 0.39). Contrary to our expectations, households including a member with > 12 years of schooling were less likely to mitigate against livestock predation compared to households whose members were illiterate (β = −0.58 ± SE 0.31). The estimated mean probability of mitigation use against livestock predation was low 0.21 ± SE 0.02) (Table 2), ranging from 0.14 ± SE 0.02 in Phulwari and Jaisamand to 0.28 ± SE 0.03 in Kumbhalgarh, with the estimate for the latter being the highest among the reserves (ANOVA test, P < 0.05).
Compensation
Most households (84%) that experienced losses did not seek assistance. Furthermore, Rajasthan state does not have a compensation scheme for crop damage (Johnson et al., unpubl. data; Karanth & Gupta, unpubl. data). Of the 16 households that reported incidents of livestock predation by wildlife to the government, six received compensation. Five households received < USD 15 (INR 1,000) and one received USD 15–75 (INR 1,000–5,000).
Discussion
Our household survey data from four reserves in Rajasthan provide insights about the relationships between people, wildlife and reserves. Many respondents (85%) considered protecting wildlife reserves to be important despite the legal restrictions on resource use, and experiencing negative human–wildlife interactions. We did not find any differences in people's attitudes towards the reserves, but found differences in attitudes towards human–wildlife interaction. Absence of negative interactions was more likely to be correlated with attitudes towards wildlife among households around Jaisamand, compared to Phulwari, Sitamata and Kumbhalgarh. As Jaisamand has the highest incidence of negative interactions, we suggest that supporting households incurring frequent wildlife-related losses could increase their tolerance for wildlife. Similar to findings from Nepal and Tanzania, households with more education were more likely to value wildlife reserves and wildlife in the absence of negative interactions (Holmern et al., Reference Holmern, Nyahongo and Røskaft2007; Karanth & Nepal, Reference Karanth and Nepal2012). Overall, female respondents viewed both wildlife reserves and wildlife less favourably compared to men. These findings concur with previous research that has found that women sometimes bear a larger burden of wildlife-related losses than men, which results in a negative attitude towards wildlife and wildlife reserves (Ogra & Badola, Reference Ogra and Badola2008; Gore & Kahler, Reference Gore and Kahler2012; Browne-Nuñez et al., Reference Browne-Nuñez, Jacobson and Vaske2013).
The mean estimated probability of experiencing wildlife-related crop damage across the four reserves was 0.79. This is similar to Ranthambore National Park (0.76), but lower than estimates from Kanha Tiger Reserve (0.93) and reserves in Karnataka (0.91) (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a). Distance to the reserve did not influence the occurrence of crop damage significantly, similar to Ranthambore and reserves in Karnataka, where crop-raiding wildlife have been found to exist outside reserves (Karanth et al., Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a, Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). Households at higher elevations were more likely to experience crop damage, unlike in previous studies (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a, Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). Furthermore, households that grew a greater variety of crops were more likely to experience crop damage (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a).
Our estimated probability of livestock predation in reserves in Rajasthan (0.17) was significantly lower than the estimates from Ranthambore (0.38) and Kanha (0.60) but comparable to reserves in Karnataka (0.19) (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a,Reference Karanth, Naughton-Treves, Defries and Gopalaswamyb). Proximity to the reserves increased the risk of livestock predation, suggesting losses may be associated with carnivores emerging from the reserves, or people grazing livestock inside reserves (Michalski et al., Reference Michalski, Boulhosa, Faria and Peres2006; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a; Dhanwatey et al., Reference Dhanwatey, Crawford, Abade, Dhanwatey, Nielsen and Sillero-Zubiri2013). We also found households at higher elevations or with larger livestock herds were more likely to experience livestock predation, similar to studies from the Amazon and the USA, and a pan-India study of 5,000 households (Bradley & Pletscher, Reference Bradley and Pletscher2005; Michalski et al., Reference Michalski, Boulhosa, Faria and Peres2006; Karanth et al., Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a; Karanth & Kudalkar, Reference Karanth and Kudalkar2017). Livestock loss has been found to be positively associated with grazing inside reserves in the Western Ghats, Central India and other parts of the world (Woodroffe et al., Reference Woodroffe, Frank, Lindsey, ole Ranah and Romañach2007; Chhangani et al., Reference Chhangani, Robbins and Mohnot2008; Kissui, Reference Kissui2008; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a). In Rajasthan, livestock is commonly grazed in high elevation areas and wildlife reserves, and therefore encouraging people to stall-feed could reduce livestock loss.
Unlike in Central India and the Western Ghats, use of mitigation in the study reserves had a positive relationship with occurrence of crop damage and livestock predation, suggesting that either the mitigation measures were ineffective or they were employed as a reactive measure (Davies et al., Reference Davies, Wilson, Hazarika, Chakrabarty, Das, Hodgson and Zimmermann2011; Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Gopalaswamy, Prasad and Dasgupta2013a). This finding is supported by a parallel study of 11 reserves across India (Karanth & Surendhra, Reference Karanth, Surendhra and Bhagwat2018).
Contrary to our predictions, use of mitigation against both crop and livestock losses was positively associated with distance to reserve. Unexpectedly, although households whose members had more education were more likely to use mitigation against crop damage, the opposite was true in the case of livestock predation (Dickman, Reference Dickman2010). We also confirmed that households with larger herds were more likely to use mitigation. Additionally, the uptake of mitigation against crop damage and livestock predation was highest for households reporting 6–10 years and > 10 years of negative interactions, respectively. Our findings concur with studies from Sri Lanka and Kenya, and parallel studies in India (Fernando et al., Reference Fernando, Wikramanayake, Weerakoon, Jayasinghe, Gunawardene and Janaka2005; Sitati et al., Reference Sitati, Walpole and Leader-Williams2005; Karanth & Kudalkar, Reference Karanth and Kudalkar2017). Species also appeared to play a role, with households more likely to use mitigation measures if they experienced crop damage by wild pigs, or livestock predation by wolves, jackals or leopards.
Unlike other states in India, Rajasthan does not have a statewide compensation scheme for crop and property damage (Karanth & Gupta, unpubl. data), and the state's forest administration appears to have a lack of understanding of the levels of crop damage experienced by communities around reserves (Johnson et al., unpubl. data). Nonetheless, the low rates of compensation did not seem to influence the level of tolerance for wildlife among households, which was generally high. No household surveyed reported using killing as a way to mitigate human–wildlife interaction. However, continued economic losses could drive people to engage in retaliatory killing, as has occurred at other sites (Holmern et al., Reference Holmern, Nyahongo and Røskaft2007). The lack of evidence regarding mitigation effectiveness is a cause for concern and necessitates further field-based evaluations. Compensation for losses incurred could partially ease the burden placed on people and increase their ability to cope with losses related to wildlife. This would require the Government of Rajasthan to improve its policies in line with most other Indian states, which routinely compensate people (Karanth & Gupta, unpubl. data). In addition to policy improvements, people could also benefit from assistance in applying for compensation via conservation interventions such as the Wild Seve project in Karnataka, which has assisted 8,000 families file claims in 29 months, using mobile technology (K. Karanth, pers. obs.).
Our large sample size of 2,233 households decreases the possibility of bias caused by self-reporting of losses, and replicates well-established methodology from studies conducted in Central India and the Western Ghats (Karanth et al., Reference Karanth, Gopalaswamy, DeFries and Ballal2012, Reference Karanth, Naughton-Treves, Defries and Gopalaswamy2013b). Further field-based research that monitors interaction and develops intervention mechanisms such as Wild Seve is essential to long-term conservation success. Our survey and modelling approaches are easily adaptable and replicable. Understanding people's attitudes towards wildlife and wildlife reserves, and estimating losses caused by wildlife, is a first step in developing locally relevant conservation interventions that sustain human livelihoods and promote tolerance towards wildlife in shared spaces.
Acknowledgements
We thank the Wildlife Conservation Society (WCS), the Indian Institute of Management Udaipur (IIMU), Nicholas School of Environment, Duke University, the Centre for Wildlife Studies, and the Rajasthan forest department. We acknowledge contributions from Anjana, Anubhav, Dhee, Dincy, Libby, Parvathi, Rachana, Rashmi, Shalini and Vinod, and thank the volunteers Abhijeet, Achintya, Akanksha, Akhil, Amit, Archana, Avik, Bhaskar, Devendra, Dhwani, Durga, Gautam, Himanshu, Kaushiki, Lynette, Mayukh, Neha, Pranesh, Radhika, Sahila, Samyukta, Shashank, Shivona, Srinivasan, Sushmita, Tista and Tsongjing for their efforts in the field. We thank IIMU, Duke University and WCS for financial support.
Author contributions
KK developed the research questions, collected and analysed data and wrote the article. SJ analysed data and contributed to the writing. EW guided the research and contributed to the writing.
Biographical sketches
Krithi Karanth studies species distributions, wildlife tourism, human–wildlife conflicts, voluntary resettlement and land-use change. Shivangi Jain is a social scientist interested in natural resource governance, sustainable livelihoods and environmental economics. Erika Weinthal’s research interests include global environmental politics and governance, political economy of resource use, and climate change adaptation.