Monthly U.S. citizen departures are collected and reported in Tourism Industries U.S. International Air Travel Statistics (I-92 data) Program.
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The data in this article was obtained from field surveys and through online questionnaires to obtain perception values and expectation values from visitors in tea plantations to assess the level of visitor satisfaction with the quality of tea plantation services. In this survey we researchers obtained 98 respondents. The category of respondents is people who have visited the tea plantation tourist attractions once. The data of this article can be presented to review management knowledge, problem solving and to reveal new insights from survey results.
Tourism statistics traditionally represent an important field of official statistics, since they contribute significantly to the economic and market analysis of the tourism sector in Palestine.
Palestine attracts many tourists who come to tour its highly valued religious and historical sites. The household sample survey conducted from 24 March 2015 to 31 May 2015. Tourism is a key to many countries economy thanks to its significant contribution to GDP. For this reason, PCBS established a statistical program to monitor and produce reliable and timely statistics on the main indicators of tourism activity. This program began in 1996 with the implementation of the Hotel Survey, which provides periodic data on accommodation statistics.
Palestine
Household the Palestine
It consists of all Palestinian households who are staying normally in Palestine during 2015.
Sample survey data [ssd]
The sampling frame was based on master sample which was update in 2013-2014 for (Expenditure and Consumption Survey (PECS) and Multiple Indicator Cluster Survey (MICS)) surveys, and the frame consists from enumeration areas. These enumeration areas are used as primary sampling units (PSUs) in the first stage of the sampling selection.
Sample size: The sample size is 7,690 households for Palestine level, 6,609 households responded.
Sampling Design: Two stage stratified cluster (PPS) sample as following:
First stage: selection of a PPS random sample of 370 enumeration areas.
Second stage: A random systematic sample of 20 households from each enumeration area selected in the first stage.
Sample strata: The population was divided by: 1- Governorate 2- locality type (urban, rural, camps)
Face-to-face [f2f]
The tourism questionnaire was design of the accordance with similar international experiences and with international standards and recommendations for the most important indicators, taking into account the special situation of Palestine.
The data processing stage consisted of the following operations: 1.Editing and coding prior to data entry: all questionnaires were edited and coded in the office using the same instructions adopted for editing in the field.
2.Data entry: The Domestic and Outbound Tourism Survey questionnaire was programmed and the data were entered into the computer in the offices in Nablus, Hebron, Ramallah and Gaza. At this stage, data were entered into the computer using a data entry template developed in Access. The data entry program was prepared to satisfy a number of requirements: ·To prevent the duplication of questionnaires during data entry. ·To apply checks on the integrity and consistency of entered data. ·To handle errors in a user friendly manner. ·The ability to transfer captured data to another format for data analysis using statistical analysis software such as SPSS.
Response rate was 89.5%
Data of this survey may be affected by sampling errors due to use of a sample and not a complete enumeration. Therefore, certain differences are expected in comparison with the real values obtained through censuses. Variances were calculated for the most important indicators and the variance table is attached with the final report. There is no problem with the dissemination of results on national.
The DTS is a large-scale household survey aimed at collecting accurate statistics on the travel behaviour and expenditure of South African residents travelling within the borders of the country. Such information is crucial when determining the contribution of tourism to the South African economy, as well as helping with planning, marketing, policy formulation, and the regulation of tourism-related activities.
The survey had national coverage
Households and individuals
The target population of the survey consists of all private households in all nine provinces of South Africa and residents in workers’ hostels. The survey does not cover other collective living quarters such as students’ hostels, oldage homes, hospitals, prisons and military barracks, and is therefore only representative of non-institutionalised and non-military persons or households in South Africa.
Sample survey data
The sample design for the DTS 2020 was based on a Master Sample (MS) that has been designed for all household surveys conducted by Statistics South Africa.
The Master Sample used a two-staged, stratified design with probability-proportional-to-size (PPS) sampling of PSUs from within strata, and systematic sampling of dwelling units (DUs) from the sampled primary sampling units (PSUs). A self-weighting design at provincial level was used. Stratification was done in two stages: Primary stratification was defined by metropolitan and non-metropolitan geographic area type. During secondary stratification, the Census 2011 data were summarised at PSU level. The following variables were used for secondary stratification: household size, education, occupancy status, gender, industry and income.
Computer Assisted Telephone Interview
Flights without a full package, Annual Average, Use electronic programs, Government Procedures and Bureaucracy, Workers, Total tourism establishments, Constraints facing setting up or practicing economic activities, Electricity Price, Access to Telecommunication (Phone & Internet), Road Passenger Transport, Number of international passengers, Water Price, Percentage distribution of tourism establishments which use electronic programs, Flights within a full package, Low demand, Percentage %, Labour Laws & Regulations, Electricity Supply (without interruption), Laptop, Percentage distribution of tourism establishments which use social media, Employees, Hotel rooms, Salaries and wages, Availability of Skilled Labour, Inbound international flights, Tourism Direct Gross Value Added, Water Passenger Transport, Number of local passengers, Average duration of residence in accommodation units, Other Activities, Professionals, Other Activities, Non-cloud Data, Railways Passenger Transport, Percentage distribution of devices used in tourism establishments, Operating surplus, Fuel Price, Managers, nights, Operating expenditure, Main Activity, Non-Saudi, Operating rate of international flights, Major performance indicators for passengers transport services, Licenses & Permits, Do not use social media, Cultural Activities, Outbound international flights, Land Passenger Transport, Workers problems, Furniture Apartments, Major challenges facing business environment development, There are constraints, Female, Transport Equipment Rental, Percentage distribution of tourism establishments that have cloud data, Number of available seats for international flights, Average daily price for accommodation units in Saudi Riyal, Number of available seats for local flights, Operating revenues distribution, Food and Beverage Serving Activities, Local Competition, Travel Agencies and Reservation Services, Cloud Data, Operating rate of local flights, Do not have Accounting Books, Security & Stability, Benefits and allowances, Water Supply (without interruption), Railway Passenger Transport, Percentage distribution of accounting books or budget usage, Percentage of sold flights for passengers by flight type, Operating revenues, Other Specific Tourism Characteristic Services, Government Inspection Procedures, Number, Fuel Supply (without interruption), Access to Finance, Thousands Riyals, Accommodation for Visitors, Total compensations, Gross value added of the tourism industries = operating revenues - operating expenses, Technicians, Local flights, Saudi Riyal per day, Total, Do not use electronic programs, Land / Rent of Space, Have Accounting Books, Retail trade of Country-Specific Tourism Characteristic Goods, No constraints, Air Passenger Transport, Employment percentage, Saudi, Occupancy rate for accommodation units, Handheld or tablet, Average daily income for accommodation units in Saudi Riyal, Desktop (PC), Specialists, -, Sports and Recreational Activities, Use social media, Number of employees, wages and Salaries, compensation, Flight, Tourism Establishments Survey, Economic Activity, Occupations
Saudi Arabia
Explore the Tourism Establishments Survey dataset in Saudi Arabia to uncover key insights on economic activities, workers, government procedures, and more. Access data on airline passengers, accommodation rates, transportation services, and challenges facing the tourism industry. Discover valuable information to enhance your understanding of the tourism sector in Saudi Arabia.Follow data.kapsarc.org for timely data to advance energy economics research..Preliminary estimated data based on supply and use tables.Gross value added of the tourism industries = operating revenues - operating expenses.Notes:Full package deals: packages that include the flight ticket as well as other services, such as the hotel booking, car rental... etc. Source: Administrative data from the Ministry of Human Resources and Social Development, Ministry of Tourism and the Saudi Railway Company
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Iran IR: International Tourism: Number of Arrivals data was reported at 4,942,000.000 Person in 2016. This records a decrease from the previous number of 5,237,000.000 Person for 2015. Iran IR: International Tourism: Number of Arrivals data is updated yearly, averaging 1,961,500.000 Person from Dec 1995 (Median) to 2016, with 22 observations. The data reached an all-time high of 5,237,000.000 Person in 2015 and a record low of 568,000.000 Person in 1995. Iran IR: International Tourism: Number of Arrivals data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s Iran – Table IR.World Bank.WDI: Tourism Statistics. International inbound tourists (overnight visitors) are the number of tourists who travel to a country other than that in which they have their usual residence, but outside their usual environment, for a period not exceeding 12 months and whose main purpose in visiting is other than an activity remunerated from within the country visited. When data on number of tourists are not available, the number of visitors, which includes tourists, same-day visitors, cruise passengers, and crew members, is shown instead. Sources and collection methods for arrivals differ across countries. In some cases data are from border statistics (police, immigration, and the like) and supplemented by border surveys. In other cases data are from tourism accommodation establishments. For some countries number of arrivals is limited to arrivals by air and for others to arrivals staying in hotels. Some countries include arrivals of nationals residing abroad while others do not. Caution should thus be used in comparing arrivals across countries. The data on inbound tourists refer to the number of arrivals, not to the number of people traveling. Thus a person who makes several trips to a country during a given period is counted each time as a new arrival.; ; World Tourism Organization, Yearbook of Tourism Statistics, Compendium of Tourism Statistics and data files.; Gap-filled total;
Objectives of the Survey The survey provided data on The main purposes of the inbound visit. The length of stay of the visit. The amount and mode of expenditure during the visit
Report Structure This report comprises five chapters The first chapter presents the background of the Inbound Tourism Survey 2005, and the objectives of the survey The second chapter presents the main definitions used in the report The third chapter exhibits the main findings of Inbound Tourism Survey The fourth chapter discusses the methodology used in this survey The fifth chapter presents the quality of the data of the survey
Palestinian Terriotry
Household in the palestinian territory
Palestinian Households
Sample survey data [ssd]
Sample and Frame The sample is a two-stage stratified cluster random sample
Target Population
All the Palestinian households living within the Palestinian Territory
Sampling Frame
Sampling frame is a master sample from the Population, Housing and Establishment Census 1997. It consists of a list of enumeration areas, which were used as PSU's in the first stage of selection
Sampling Design
The sample of this survey is a sub-sample of Labour Force Survey (LFS) sample, that is conducted every 13 weeks. The total sample of LFS is about 7,627 households distributed over 13 weeks. The sample of the inbound tourism survey occupies 13 weeks of the first quarter 2006 of LFS
Stratification
In designing the sample of LFS, four levels of stratification were made
Stratification by governorate.
Stratification by place of residence which comprises:
(a) Urban (b) Rural (c) Refugee camps
Stratification by locality size.
Stratification by classifying localities, excluding governorate capitals, into three strata based on the ownership of households within these localities of durable goods
Sample Unit In the first stage, the sampling units are the enumerator areas (clusters) in the master sample. In the second stage, the sampling units are the households
Face-to-face [f2f]
Survey's Questionnaire The inbound tourism survey questionnaire was designed in accordance with similar country experience and with international standards and recommendations for the most important indicators, taking into account the special situation of the Palestinian Territory
Data Processing
The data processing stage consisted of the following operations
Editing and coding before data entry All questionnaires were edited and coded in the office using the same instructions adopted for editing in the field
Data entry At this stage, data was entered into the computer using a data entered template written in Access The data entry program was prepared to satisfy a number of requirements such as
Duplication of the questionnaires on the computer screen
Logical and consistency check of data entered
Possibility for internal editing of question answers
Maintaining a minimum of digital data entry and fieldwork errors
User friendly handling
Possibility of transferring data into another format to be used and analyzed using other statistical analytic systems such as SPSS
Response rate 88.6%
Sampling Errors These types of errors evolved as a result of studying a part of the society and not all of it. For this survey, variance calculations were made for type of expenditure during the inbound visit, be careful when you want to use these values
Non Sampling Errors These errors are due to non-response cases as well as the implementation of surveys In this survey, these errors emerged because of (a)the special situation of the questionnaire itself which depends on type of estimation (b)diversity of sources (e.g. the interviewers, respondent, editors, coders, data entry operator …etc)
The sources of these errors can be summarized in
Some of the households were not in their houses and the interviewers couldn't meet them
Some of the households didn't show attention toward the questionnaire.
Some errors occurred due to the way the questions were asked by interviewers
Misunderstood of the questions by the respondents
Answering the questions related to consumption by making estimations
Objectives of the Survey: The survey provided data on: The members of the household that took part in the trip. The main purposes of the visit. The main characteristics of the households that conducted/did not conduct trips. The length of stay of the trips. The amount and mode of expenditure during the trips.
The Palestinian Territory
Household the Palestinian Territory
Household the Palestinian Territory
Sample survey data [ssd]
Sampling Frame Sampling frame is a master sample from the Population, Housing and Establishment Census 1997. It consists of a list of enumeration areas, which were used as PSU's in the first stage of selection
Sampling Design The sample of this survey is a sub-sample of Labour Force Survey (LFS) sample, that is conducted every 13 weeks. The total sample of LFS is about 7,563 households distributed over 13 weeks The sample of the Outbound Tourism Survey occupies 11 weeks of the first quarter 2005 of LFS
Stratification:
In designing the sample of LFS, four levels of stratification were made
Stratification by governorate.
Stratification by place of residence which comprises
(a) Urban (b) Rural (c) Refugee camps
Stratification by locality size
. Stratification by classifying localities, excluding governorate capitals, into three strata based on the ownership of households within these localities of durable goods
Sample Unit: In the first stage, the sampling units are the enumerator areas (clusters) in the master sample. In the second stage, the sampling units are the households
Face-to-face [f2f]
Survey's Questionnaire The Outbound Tourism survey questionnaire was designed in accordance with similar country experience and with international standards and recommendations for the most important indicators, taking into account the special situation of the Palestinian Territory.
Data Processing
The data processing stage consisted of the following operations:
Editing and coding before data entry: All questionnaires were edited and coded in the office using the same instructions adopted for editing in the field.
Data entry: At this stage, data was entered into the computer using a data entered template written in Access. The data entry program was prepared to satisfy a number of requirements such as:
Duplication of the questionnaires on the computer screen.
Logical and consistency check of data entered.
Possibility for internal editing of question answers.
Maintaining a minimum of digital data entry and fieldwork errors.
User friendly handling.
Possibility of transferring data into another format to be used and analyzed using other statistical analytic systems such as SPSS.
response rate 85%
Sampling Errors: These types of errors evolved as a result of studying a part of the society and not all of it. For this survey, variance calculations were made for the purpose of outbound trips specially in Gaza strip.
Non Sampling Errors: These errors are due to non-response cases as well as the implementation of surveys. In this survey, these errors emerged because of (a) the special situation of the questionnaire itself which depends on type of estimation (b) diversity of sources (e.g. the interviewers, respondent, editors, coders, data entry operator …etc).
The Domestic and Outbound Tourism Survey 2010 as an additional component of tourism statistics on internal tourism. The main objective of this survey is to provide basic information about the demand aspect of tourism for use in the Tourism Satellite Accounts system in the Palestinian Territory. This survey provides statistical data on domestic and outbound tourism, including expenditure during trips to tourist resorts, trips conducted by households, destination countries, and the facilities and services available in the resorts visited by resident households in the Palestinian Territory.
Palestinian Territory
Households
All the households
Sample survey data [ssd]
The sampling frame consists of all enumeration areas defined in the Population, Housing and Establishment Census 2007. Each enumeration area consists of buildings and housing units comprising an average of 124 households. These enumeration areas are used as primary sampling units (PSUs) in the first stage of the sampling selection. Sampling Design: The sample for this survey is the same as that of the Labour Force Survey (LFS), which has been conducted quarterly by PCBS since 1995. The Domestic and Outbound Tourism survey is attached with the LFS in the first quarter of 2011. Sample Strata: The population was divided by: 1- Governorate (16 governorates) 2- Type of Locality (urban, rural, refugee camp) Sample Size: The estimated sample size is 7,820 households in the West Bank and Gaza Strip.
The design of the questionnaire was based on the experiences of similar countries, as well as on international standards and recommendations for the most important indicators, taking into account the special situation of the Palestinian Territory.
The data processing stage consisted of the following steps: Editing and coding before data entry: All questionnaires were edited and coded in the office using the same instructions adopted for editing in the field Data entry At this stage, data was entered into the computer using a data entry template designed in Access. The data entry program was created to satisfy a number of requirements such as Duplication of the questionnaires on the computer screen Check on the logic and consistency of data entered Possibility for internal editing of replies to questions Maintaining a minimum of digital data entry and fieldwork errors User friendly handling Possibility of transferring data into another format to be used and analyzed using other statistical analysis systems, such as SPSS
The response rate in the West Bank was 95% and in the Gaza Strip it was 97%.
Sampling Errors Data from this survey may be affected by sampling errors due to use of a sample and not a complete enumeration. Therefore, certain differences are anticipated in comparison with the real values obtained via census. Variance was calculated for the most important indicators: the variance table is attached with the final survey. There is no problem with the dissemination of results at national and regional level (North, Middle and South of West Bank and Gaza Strip) However, the indicator of average expenditure during a trip shows a high variance, as explained in the statistical tables Non-Sampling Errors Non-sampling errors are probable at all stages of the project, during data collection, or processing. This is referred to as non-response errors, response errors, interviewing errors, and data entry errors. To avoid errors and reduce their effects, great efforts were made to train the fieldworkers intensively. They were trained in how to conduct the interview, what to discuss and what to avoid, how to carry out a pilot survey, along with practical and theoretical training
This dataset is based on a sustainability perception survey conducted at Perla Ecological Park, located in the Northern Ecuadorian Amazon, during December 2024 and January 2025. A total of 383 visitors participated in the study, which aimed to: (1) quantify and compare key sustainability indicators across PERLA’s management zones, (2) identify the most influential predictors of overall sustainable performance, and (3) derive and prioritize a set of integrated strategies that balance ecological conservation with economic viability.
The survey instrument included Likert-scale, dichotomous, and thematic categorical items designed to assess public perceptions on tourism sustainability, natural and cultural resource management, institutional support, and visitor satisfaction. The research was carried out through a collaborative effort among multiple public universities and independent researchers, including two international institutions—one of them based in Ecuador—as part of a broader scientific initiative to inform evidence-based sustainability planning in protected areas.
This dataset provides valuable insight for researchers, practitioners, and policymakers interested in sustainable tourism, visitor management, and participatory planning in biodiversity-rich environments.
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Historical chart and dataset showing Euro Area tourist spending by year from 1995 to 2019.
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Statistics South Africa provides data on international tourism based on secondary data obtained from the South African Department of Home Affairs. The information from this data used by stakeholders to measure and understand international tourism in South Africa. Detailed information about national domestic tourism is limited, however and there was a need to collect more detailed information on domestic tourism in order to better understand and measure the contribution of the tourism industry towards the national economy. The Domestic Tourism Survey (DTS) is aimed at addressing this need by collecting accurate statistics on the travel behaviour and expenditure of South African residents travelling within and outside the borders of South Africa. Such information is crucial in determining the contribution of tourism to the South African economy as well as helping with planning, marketing, policy formulation and regulation of tourism-related activities. This survey provides data on domestic tourism activity during the period December 2009 May 2010. For, this in addition to the basic demographic information collected in the majority of household surveys conducted by Statistics South Africa, the DTS covers five areas specifically related to travel and expenditure patterns. These include trips taken by the household, domestic day trips by the respondent and/or other household members, domestic day trips by other household members (without the respondent), domestic overnight trips by the respondent and/or other household members, domestic overnight trips by other household members (without the respondent).
Calculating the number of inbound visitors using air, sea and land transportationSource: Inbound Tourism Survey
In 2024, the number of international tourist arrivals worldwide recorded a **** percent annual increase. That year, global inbound tourist arrivals were just *** percent lower than in 2019, reaching **** billion.
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BE: International Tourism: Receipts data was reported at 7.447 USD bn in 2020. This records a decrease from the previous number of 10.581 USD bn for 2019. BE: International Tourism: Receipts data is updated yearly, averaging 10.581 USD bn from Dec 2001 (Median) to 2020, with 19 observations. The data reached an all-time high of 15.249 USD bn in 2014 and a record low of 7.447 USD bn in 2020. BE: International Tourism: Receipts data remains active status in CEIC and is reported by World Bank. The data is categorized under Global Database’s Belgium – Table BE.World Bank.WDI: Tourism Statistics. International tourism receipts are expenditures by international inbound visitors, including payments to national carriers for international transport. These receipts include any other prepayment made for goods or services received in the destination country. They also may include receipts from same-day visitors, except when these are important enough to justify separate classification. For some countries they do not include receipts for passenger transport items. Data are in current U.S. dollars.;World Tourism Organization, Yearbook of Tourism Statistics, Compendium of Tourism Statistics and data files.;Gap-filled total;
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Tourist Arrivals in the United States decreased to 5634382 in May from 5957985 in April of 2025. This dataset provides - United States Tourist Arrivals- actual values, historical data, forecast, chart, statistics, economic calendar and news.
http://www.geologyontario.mndm.gov.on.ca/terms_of_use.htmlhttp://www.geologyontario.mndm.gov.on.ca/terms_of_use.html
The Regional Tourism Profiles contain tourism statistics at the regional level. The profiles include reports on visits, spending, the number of tourism related businesses, hotel performance and itemized tourism receipts.
The market size of the global tourism sector grew significantly in 2023 over the previous year, totaling around *** trillion U.S. dollars. Despite the sharp annual increase, global tourism revenue remained below pre-pandemic levels. As forecast, the market size of the tourism sector worldwide was estimated at *** trillion U.S. dollars in 2024. What is the economic impact of travel and tourism? In 2023, the total contribution of travel and tourism to global GDP, including the direct, indirect, and induced impact of these markets, was estimated at nearly ** trillion U.S. dollars, almost recovering from the impact of the COVID-19 pandemic. Similarly, the number of travel and tourism jobs worldwide was just around *** percent below pre-pandemic levels in 2023, with these industries generating, directly and indirectly, *** million jobs. What are the most popular travel destinations worldwide? Both before and after the COVID-19 pandemic, France topped the ranking of the most visited countries by inbound tourists worldwide. In 2023, the number of inbound tourist arrivals in France peaked at *** million, the highest figure reported to date. That year, Spain, the United States, and Italy followed on the list. Meanwhile, the United States was the country with the highest international tourism receipts worldwide in 2023, ahead of Spain and the United Kingdom.
Tourism statistics is considered one of the traditional and important fields of official statistics. These statistics serve as an important input in the economic and market analysis of tourism sector in Palestine
Palestinian Territory is considered attractive area for tourists due to the presence of many religious and historical resorts for all nations. Tourism sector is considered one of the leading sectors in the Palestinian economy, which is supposed to have significant contribution to the GDP. Therefore, PCBS established a statistical programme to supervise and implement the production of reliable and timely statistics on the main indicators of tourism activity. This programme has started in 1995 through conducting the hotel survey in order to provide periodic data on accommodation statistics.
PCBS is pleased to introduce this report on the domestic tourism survey 2006, as an additional component of tourism statistics programme beside the outbound and inbound tourism. The main objective of the domestic tourism survey is to provide basic information on domestic tourism in the Palestinian Territory.
This report provides statistical data on domestic tourism, including the expenditure during the trip and tourist resorts, trips conducted by households, and the available facilities and services in the resorts visited by the Palestinian households in 2006.
Palestinian Territory.
Palestinian Households
Palestinian Households.
Sample survey data [ssd]
Sample and Frame The sample is a two-stage stratified cluster random sample
Target Population All the Palestinian households living within the Palestinian Territory
Sampling Frame Sampling frame is a master sample from the Population, Housing and Establishment Census 1997. It consists of a list of enumeration areas, which were used as PSU's in the first stage of selection
Sampling Design The sample of this survey is a sub-sample of Labour Force Survey (LFS) sample. The total sample of LFS is about 7,552 households distributed over 13 weeks. The sample of the domestic Tourism Survey occupies 13 weeks of the first quarter 2007 of LFS.
Stratification
In designing the sample of LFS, four levels of stratification were made
- Stratification by governorate.
- Stratification by place of residence which comprises
(a) Urban (b) Rural (c) Refugee camps
- Stratification by locality size
- Stratification by classifying localities, excluding governorate capitals, into three strata based on the ownership of households within these localities of durable goods
Face-to-face [f2f]
The domestic Tourism survey questionnaire was designed in accordance with similar country experience and with international standards and recommendations for the most important indicators, taking into account the special situation of the Palestinian Territory.
Data Processing
The data processing stage consisted of the following operations:
1. Editing and coding before data entry: All questionnaires were edited and coded in the office using the same instructions adopted for editing in the field
2. Data entry: At this stage, data was entered into the computer using a data entered template written in Access. The data entry program was prepared to satisfy a number of requirements such as:
- Duplication of the questionnaires on the computer screen
- Logical and consistency check of data entered
- Possibility for internal editing of question answers
- Maintaining a minimum of digital data entry and fieldwork errors
- User friendly handling
- Possibility of transferring data into another format to be used and analyzed using other statistical analytic systems such as SPSS
86% Response Rate
Statistical Errors Data of Domestic Tourism survey affected by statistical errors due to use the sample, therefore, the emergence of certain differences from the real values expect obtained through surveys. It had been calculated variation of the most important indicators exists and the facility with the report. And the dissemination levels of the data were particularized at the regional level in the West Bank (North, Middle, South) and Gaza Strip, due to the sample design and the variance calculations for the different indicators
Non-Statistical Errors Non-statistical errors are probable in all stages of the project, during data collection or processing. This is referred to as non-response errors, response errors, interviewing errors, and data entry errors. To avoid errors and reduce their effects, great efforts were made to train the fieldworkers intensively. They were trained in how to carry out the interview, what to discuss and what to avoid, carrying out a pilot survey and practical and theoretical training during the training course
Also data entry staff was trained on the entry program that was examined before starting the data entry process. To have a fair idea about the situation and to limit obstacles, there was continuous contact with the fieldwork team through regular visits to the field and regular meetings with them during the different field visits. Problems faced by fieldworkers were discussed to clarify any issues
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This dataset contains responses to a survey examining the effects of climate change on tourists' destination choices and preferences for sustainable tourism in Greece. The survey was conducted between August 1st and August 26th, 2024, with 580 participants recruited via snowball sampling from social media platforms targeting travel groups. Inclusion criteria required participants to be over 18 years of age and either have visited Greece in the past three years or plan to visit within the next three years. The survey explores various factors influencing tourists’ travel decisions, such as climate change awareness, perceptions of climate risks (e.g., temperature rise, wildfires), and preferences for sustainable practices (e.g., recycling, eco-friendly accommodations). The data also includes demographic information such as age, gender, education, employment status, and household income. Key findings from the data reveal that traditional factors like cost, safety, and beaches remain dominant in tourists' destination choices, while climate concerns such as temperature rise and wildfires significantly influence destination selection. Notably, there is a growing preference for destinations that prioritize sustainability, although respondents perceive the tourism industry’s response to climate change as insufficient. This dataset can be used to analyze how climate risk perceptions shape tourist behavior, the role of sustainability in travel decisions, and the potential for climate change to alter tourism patterns in Greece. It also provides insights into demographic variations in climate awareness and sustainable tourism preferences, offering a foundation for targeted communication and policy development to enhance resilience in Greece’s tourism sector.
Monthly U.S. citizen departures are collected and reported in Tourism Industries U.S. International Air Travel Statistics (I-92 data) Program.