Rural tourism in Spain: natural resources as sources of competitive ...

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Faculty of Economics,. Department of Business Administration and Accountability,. University of Oviedo, Avd. del Cristo, s/n,. 33 071 Oviedo – Asturias, Spain.
World Review of Entrepreneurship, Management and Sust. Development, Vol. 1, No. 1, 2005

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Rural tourism in Spain: natural resources as sources of competitive advantage Patricia Ordoñez Faculty of Economics, Department of Business Administration and Accountability, University of Oviedo, Avd. del Cristo, s/n, 33 071 Oviedo – Asturias, Spain Fax: 34 985 10 37 08 E-mail: [email protected] *Corresponding author

Jose Parreño and Raul Pino Faculty of Engineering, Department of Business Administration and Accountability, University of Oviedo, Campus de Viesques, edificio energia 33204 Gijon – Asturias, Spain Fax: +34 985 18 20 10 E-mail: [email protected] E-mail: [email protected] Abstract: The aim of this paper is to analyse the state of the art of the Spanish rural tourism sector, as well as performing forecasts for this strategically important sector of Spanish economy. Section 1 of the paper describes rural tourism in Spain, while in Section 2 three time series belonging to this sector are analysed, and then forecasts are calculated by applying Box-Jenkins and Artificial Neural Nets methodologies. Finally, the paper summarises major conclusions and implications for policy makers and managers involved in rural tourism in Spain. Keywords: competitive advantage; rural tourism; Spain. Reference to this paper should be made as follows: Ordoñez, P., Parreño, J. and Pino, R. (2005) ‘Rural tourism in Spain: natural resources as sources of competitive advantage’, World Review of Entrepreneurship, Management and Sust. Development, Vol. 1, No. 1, pp.45–56. Biographical notes: Dr. Patricia Ordoñez works for the Department of Business Administration and Accountability, at the Faculty of Economics of the University of Oviedo, Spain. Her doctoral thesis was entitled Intellectual Capital, Knowledge Management and Human Resource Management: Influence on Organisational Performance. Her teaching and research initiatives focus on the areas of strategic management, knowledge management, intellectual capital measuring and reporting, organisational learning and human resources management. Dr. Jose Parreño works for the Department of Business Administration and Accountability, at the Faculty of Industrial Engineering of the University of Oviedo, Spain. His doctoral thesis was entitled Univariate and Multivariate Box-Jenkins Methodology: Application to the Electricity Market, Tourism and

Copyright © 2005 Inderscience Enterprises Ltd.

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P. Ordoñez, J. Parreño and R. Pino Construction Sectors in Spain. His teaching and research initiatives focus on the areas of technology transfer, production management, and forecasting and applied artificial intelligence. Dr. Raul Pino works for the Department of Business Administration and Accountability, at the Faculty of Industrial Engineering of the University of Oviedo, Spain. His doctoral thesis was entitled Time Series Forecasting with Artificial Neural Nets. An application to the Spanish Electricity Market. His teaching and research initiatives focus on the areas of forecasting, applied artificial intelligence and simulation.

1

Introduction

Rural tourism offers 9,000 accommodations in Spain, which means an average growth of 24.5% during last ten years, according to the report published by the real state consulting company IREA. If we analyse rural tourism in Spain by regions, the region of Castilla-Leon is the most important market for rural tourism in Spain, both in terms of offer and demand, due to its geographical localisation and extension. Catalonia, Cantabria and Asturias occupy a second position, all of them with occupation levels above national average. Its offer includes both interior and coastal tourism. Additionally, IREA report highlights that Murcia and Balearic Islands attract more rural tourists than the actual capacity of accommodation these regions offer. Basque Country, Madrid, and Catalonia exhibit high levels of occupation due to the fact that these regions are simultaneously the basic issuing markets of rural tourism users. The study highlights that the basic driver of this kind of tourism is the appearance of a new demand, built by people who look for open spaces where they can enjoy recreational sport and cultural activities, and are highly interested in the historical and natural heritage. IREA also points out that the delay of the Spanish rural tourism sector is rooted in the strong roots of the ‘sol y playa’ (sun and sand) model that Spain historically experimented. This fact helps to explain why the first initiatives in this area were developed in the northern regions of the country (Asturias, Navarra, and Basque Country), which were relatively marginalised from dominant tourism. Regarding the future, the consulting company recognises that Spanish rural tourism must cope with a number of challenges to achieve a sustainable development, to increase the quality and facilities of the accommodations, get the professionalisation of the sector, create an associate group, standardise the regulating norms, solve the problem of normalised supply, as well as increase the promotion and commercialisation in the external market, basically in Europe. The rural tourism demand has undergone a huge increase in Spain (from 3.5 millions in 1990 to 8.5 millions in 1998). This spectacular increase is related to the process of changes that tourism demand is experimenting at international level, where the motivational changes play a key role. The tourist travels as a result of a need to know the environment and participate in it. This implies a higher valuation of the rural issues, as well as a higher interest in the necessity to preserve the environment. This paper provides an in-depth analysis of rural tourism in Spain.

Rural tourism in Spain

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Rural tourism in Spain

Table 1 shows that in 2004, Spanish rural tourism offered its accommodations to a total number of 1,758,596 tourists. Of this outstanding figure, 1,592,168 tourists were residents of Spain and the rest came from abroad. The average number of days spent in rural accommodations in Spain was 3.13 days. The autonomous region that received the highest number of travellers was Castilla-Leon (368,664 travellers in total) and the region that received the smallest number of travellers was La Rioja (16,899 travellers in total). The region in which travellers spent more days on average was Canary Islands (8.49 days) and the region in which travellers spent least days was Galicia (2.10 days). Table 1

Number of tourists, days and average days in rural tourist sector in 2004 Number of travellers

Autonomous regions Total

Number of nights

Total

Residents in Spain

Residents in abroad

Total

Residents in Spain

Residents in abroad

Average days

1,758,596

1,592,168

166,428

5,506,223

4,553,571

952,652

3.13

Andalucía

90,141

71,259

18,880

309,457

217,126

92,331

3.43

Aragón

96,678

88,799

7,881

355,803

315,285

40,519

3.68

Asturias (Principado)

92,207

89,153

3,050

398,169

382,050

16,119

4.32

Balearic Islands

43,469

8,810

34,661

341,090

47,730

293,361

7.85

Canary Islands

31,753

12,141

19,610

269,735

69,183

200,553

8.49

Cantabria

143,683

131,998

11,685

397,543

361,458

36,084

2.77

Castilla – León

368,664

353,661

15,003

897,404

855,887

41,520

2.43

Castilla-La Mancha

87,108

85,472

1,636

231,450

225,168

6,279

2.66

Catalonia

207,722

192,639

15,087

678,973

585,279

93,694

3.27

Comunidad Valenciana

114,823

108,403

6,419

373,247

339,233

34,015

3.25

Extremadura

58,538

54,205

4,330

129,949

118,443

11,504

2.22

Galicia

164,024

150,900

13,125

344,839

318,043

26,796

2.10

Madrid

57,794

55,810

1,983

127,818

121,563

6,256

2.21

Murcia

30,521

29,943

578

110,102

105,348

4,756

3.61

Navarra

66,691

64,229

2,463

253,002

240,898

12,104

3.79

Basque Country

87,890

78,702

9,187

244,214

209,884

34,331

2.78

Rioja

16,899

16,042

857

43,429

40,996

2,433

2.57

Ceuta and Melilla



Inter-annual rate

19.60

– 20.17

– 14.47





22.66

21.93

Source: Spain’s National Statistics Institute (2005)

– 26.28

– 2.55

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If we have a look at Table 2, we observe that, according to estimations, there were 8,236 operating accommodations and 71,508 beds in rural tourist sector in Spain in 2004. On average, the level of occupation was 20.80% and this increased to 33.06 during weekends. The estimated number of employees working in the rural tourist sector was 13,506. The autonomous region with the biggest number of operating rural accommodations was Castilla-Leon (1,445), followed by Catalonia (1,204), and Asturias (724). Table 2

Rural accommodations in Spain by autonomous regions

Autonomous regions Total

No. of operating rural accommodations No. of beds Level of (estimation) (estimation) occupation 8,236

71,508

20.80

Level of occupation during weekends

Level of occupation by bedrooms

No. of employees

33.06

23.52

13,506

Andalucía

481

4,034

20.66

31.08

24.16

936

Aragón

641

4,825

19.82

30.21

22.22

733

Asturias (Principado)

724

4,939

21.59

28.50

22.58

969

Balearic Islands

136

2,265

40.80

43.84

43.55

765

Canary Islands

630

3,058

23.99

25.68

36.80

978

Cantabria Castilla – León Castilla-La Mancha

272

4,602

23.04

35.01

24.41

495

1,445

12,683

19.19

35.87

21.04

2,391

569

4,357

14.39

28.79

16.21

845

1,024

8,242

22.32

38.06

25.23

1,524

Comunidad Valenciana

606

6,148

16.47

24.61

20.81

954

Extremadura

184

2,153

16.39

29.29

17.45

321

Galicia

430

4,976

18.59

28.12

19.97

747

Madrid

103

1,576

22.12

43.79

28.32

324

Murcia

286

2,080

14.36

25.36

16.02

557

Navarra

413

2,711

25.15

45.03

26.89

545

Basque Country

227

2,280

28.92

43.71

31.30

342

66

579

20.23

36.92

20.68

80













2.70

3.70

2.84

20.25

Catalonia

Rioja Ceuta and Melilla Inter-annual rate

17.75

19.19

Source: Spain’s National Statistics Institute (2005)

Table 3 exhibits the distribution (in percentages) of Spanish travellers according to the autonomous region from which the travellers come from.

Rural tourism in Spain Table 3

Distribution of Spanish travellers according to the autonomous region from which they come

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50 Table 3

P. Ordoñez, J. Parreño and R. Pino Distribution of Spanish travellers according to the autonomous region from which they come (continued)

Rural tourism in Spain

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Table 4 shows the number of travellers and days spent in rural accommodations in Spain. Germany and Great Britain are the countries from which more travellers come to Spain to spend their holidays in rural accommodations. As shown in Table 4, Luxembourg residents are not very interested in Spanish rural tourism as just 126 travellers arrived from this country last year. Table 4

Travellers and number of nights (by country of origin) Travellers

Countries

Nights

Total

%

Total

%

Total

1,758,596

100.00

5,506,223

100.00

Residents in Spain

1,592,168

90.54

4,553,571

82.70

Residents abroad

166,428

9.46

952,652

17.30

Total residents abroad

166,429

100.00

952,652

100.00

Total residents in EU (excluding Spain)

146,390

87.96

862,769

90.56

42,872

25.76

386,803

40.60

Germany Austria

1,091

0.66

5,134

0.54

Belgium

6,695

4.02

34,697

3.64

Denmark

960

0.58

4,395

0.46

Finland

693

0.42

2,309

0.24

France

27,864

16.74

112,414

11.80

Greece

441

0.26

1,666

0.17

11,742

7.06

58,678

6.16

Ireland

2,951

1.77

8,421

0.88

Italy

5,188

3.12

17,610

1.85

126

0.08

607

0.06

4,881

2.93

20,154

2.12

39,575

23.78

205,351

21.56

The Netherlands

Luxembourg Portugal Great Britain Sweden

1,309

0.79

4,533

0.48

6,246

3.75

35,801

3.76

420

0.25

3,265

0.34

USA

5,777

3.47

27,777

2.92

Rest of American continent

5,713

3.43

15,669

1.64

408

0.25

2,626

0.28

1,475

0.89

4,744

0.50

Other European countries Africa

Asia Other countries

Source: Spain’s National Statistics Institute (2005)

Finally, Table 5 shows the evolution of rural tourism in Spain. April, July, August, October and December are the five months of the year in which more travellers use rural accommodations in Spain.

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Table 5

Evolution of rural tourism in 2004 (travellers, nights and average days) Number of travellers

Total

Number of nights

Total

Residents in Spain

Residents in abroad

Total

Residents in Residents in Spain abroad

Average days

1,758,596

1,592,168

166,428

5,506,223

4,553,571

952,652

3.13

January

70,849

66,678

4,171

208,329

180,214

28,115

2.94

February

104,443

96,594

7,849

235,900

190,546

45,354

2.26

March

125,951

117,170

8,781

307,260

252,914

54,346

2.44

April

174,200

159,920

14,280

505,696

429,423

76,273

2.90

May

132,581

114,288

18,293

318,005

234,411

83,594

2.40

June

141,732

124,760

16,972

373,810

287,611

86,199

2.64

July

177,595

154,357

23,238

678,454

538,929

139,525

3.82

August

243,318

219,522

23,796

1,239,459

1,072,338

167,122

5.09

September

145,345

125,190

20,155

442,117

337,149

104,968

3.04

October

178,684

164,659

14,025

474,188

394,246

79,942

2.65

November

115,199

106,801

8,397

262,211

215,191

47,020

2.28

December

148,700

142,229

6,471

460,793

420,599

40,194

3.10

Source: Spain’s National Statistics Institute (2005)

3

Forecasting rural tourism in Spain

The time series analysed in this paper belong to the rural tourism sector in Spain, and have been obtained from the Tempus data base at the Spanish Statistical Institute (INE) website (www.ine.es): •

total number of Spanish tourists



total number of foreign tourists



total number of rural accommodations open.

All the three time series are composed of 51 monthly observations, from January 2001 to March 2005 and the time plots are depicted in Figures 1–3. Figure 1

Total number of Spanish tourists

Rural tourism in Spain Figure 2

Total number of foreign tourists

Figure 3

Total number of rural accommodations open

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Figures 1 and 2 show that number of Spanish and foreign tourists time series exhibit a strongly seasonal pattern, as expected, given the fact that tourism is a seasonal sector. The order of this annual seasonality is twelve, as the series are composed of monthly observations. In Figures 1 and 2, it can also be appreciated that these series show a slightly increasing trend. Spanish tourists series reaches a global maximum value every year in August and three local maximum peaks in April, October, and December. Foreign tourists series reaches similar maximum values in July and August, and two local maximums in April and December. Figure 3 shows that the number of rural accommodations open series is not as strongly seasonal as the number of tourists ones; instead, it shows a stronger increasing trend. Each year, the number of rural accommodations open reaches a maximum peak in August, and minimum values in December and January, despite of the fact that Spanish tourists increase during December. With these data, forecasts are going to be calculated for the period April–December 2005. To obtain these forecasts, two well-known forecasting methods are used: Box-Jenkins (1970) and Artificial Neural Nets. Many authors have approached the issue of forecasting tourism time series in Spain (Esteban, 1993, 1997; González and

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Moral, 1995; Espasa, 1996; García-Ferrer and Queralt, 1997), as well as in other countries (Martin and Witt, 1989; Witt and Witt, 1995; Kulendran and King, 1997; Kulendran and Witt, 2001; Song et al., 2003).

3.1 Forecasts Figures 4–6 show the forecasts calculated with Box-Jenkins (BJ) and Neural Nets (NN) methods for the period April–December 2005. Figure 4

Forecasts for Spanish tourists

Figure 5

Forecasts for foreign tourists

Figure 6

Forecasts for rural accommodations open

Rural tourism in Spain

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Figures 4 and 5 show that both methods perform similar forecasts for both Spanish and foreign tourists series, predicting the three peaks in August, October and December for Spanish tourists, and the July-August similar values for the foreign tourists series. However, the two forecasting methods do not perform such similar forecasts for rural accommodations open, as can be seen in Figure 6: The shape of these curves is similar, and so does forecasting values for April, May, and June; but there is a gap between the forecasting curves during the period July–November.

4

Conclusions

Section 1 of the paper analyses the current situation of rural tourism in Spain. In particular, the paper describes the situation of this sector in terms of number of travellers (Spanish and non-Spanish residents), Spanish regions from which resident tourists come and countries from which non-resident tourists come, average number of days tourists spend in Spanish rural accommodations and more. The results obtained from forecasting three key time series from the rural tourism sector are important, not only for tourism companies when they come to decision-taking, but also for local and central administrations when they come to establish their policies in the field.

References Box, G.E.P. and Jenkins, G.M. (1970) Time Series Analysis: Forecasting and Control, Holden Day, San Francisco. Espasa, A. (1996) ‘Características de la demanda en los estudios econométricos sobre el turismo e implicaciones de política económica y de estrategia empresarial’, Información Comercial Española, Vol. 749, pp.77–88. Esteban, A. (1993) ‘Previsiones de la demanda turística’, Información Comercial Española, Vol. 749, pp.89–97. Esteban, A. (1997) ‘La demanda turística internacional’, La actividad turística española en 1996, AECIT, Vol. 1997, pp.39–47. García-Ferrer, A. and Queralt, R.A. (1997) ‘A note on forecasting international tourism demand in Spain’, International Journal of Forecasting, Vol. 13, pp.539–549. González, P. and Moral, P. (1995) ‘An analysis of the international tourism demand in Spain’, International Journal of Forecasting, Vol. 11, pp.233–251. Kulendran, N. and King, M.L. (1997) ‘Forecasting international quarterly tourist flows using error-correction and time series models’, International Journal of Forecasting, Vol. 13, pp.319–327. Kulendran, N. and Witt, S.F. (2001) ‘Cointegration vs. least squares regression’, Annals of Tourism Research, Vol. 28, pp.291–311. Martin, A. and Witt, F. (1989) ‘Forecasting tourism demand: a comparison of the accuracy of several quantitative methods’, International Journal of Forecasting, Vol. 5, pp.1–13. Song, H., Witt, S.F. and Jensen, T.C. (2003) ‘Tourism forecasting: accuracy of alternative econometric models’, International Journal of Forecasting, Vol. 19, pp.123–141.

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Spain’s National Statistics Institute (INE) (2005) Encuesta de Ocupación en Alojamientos Turísticos, Alojamientos de turismo rural, www.ine.es Witt, S.F. and Witt, C.A. (1995) ‘Forecasting tourism demand: a review of empirical research’, International Journal of Forecasting, Vol. 11, pp.447–475.

Website IREA (2005) IREA’s report on rural tourism. www.irea.es.