Questões da Prova FCC - 2016 - Prefeitura de Teresina - PI - Analista Tecnológico – Analista de Geoprocessamento

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Q731032 Inglês

Atenção: As questões de números 56 a 60 referem-se ao texto apresentado abaixo. As cores originais dos mapas 2, 3 e 4 foram alteradas para visualização em tons de cinza. 

Using analysis, we can feel confident in the spatial patterns we see, and in the decisions that we make.

Putting your data on a map is an important first step for finding patterns and understanding trends. Here we’re looking at crimes that happened in San Francisco, about 37,000 of them. Looking at the points on a map, can you find the clusters or patterns in this point data? Can you decide where the police department should allocate its resources? Just looking at points on a map is often not enough to answer questions or make decisions using this kind of point data. That’s where the spatial analysis tools in ArcGIS come in. 

                                     

We’ve all seen heat maps on TV or in web application-beautiful maps that show high-density areas in bright red, and low-density areas in blue. These maps are used to visualize crime, disease, and a whole host of other types of data and information. These heat maps can be a great first step in a visual analysis of your data  they can also be very subjective. What does that mean? Well, the two heat maps shown below reflect the same San Francisco Crime data, and were created using the same tool. The only difference is the criteria that were used to decide what appears very dark (high density) and what appears very light (low density). These types of cartographic elements that we incorporate into our maps can have a huge impact on the story that the map tells. 

                                           

If the decisions that you’re trying to make as a result of your analyses are important, and they usually are, you’ll want to minimize subjectivity as much . A great way to minimize the subjectivity in your pattern analysis is to use a hot spot analysis, which incorporates a simple spatial statistic to determine if the patterns that you’re seeing are statistically significant or not. The hot spot map is shown here.

                                                    

So what makes this type of map any less subjective than density-based heat maps? The very dark areas on hot spot maps are statistically significant clusters of high values (hot spots), and the very light areas are statistically significant clusters of low values (cold spots). What’s dark and what’s light is always based on statistical significance. Using hot spot analysis, we can feel confident in the spatial patterns that we see, and in the decisions that we make.(Adapted from: http://resources.arcgis.com/en/communities/analysis/017z00000015000000.htm


O texto NÃO afirma que
Alternativas
Q731031 Inglês

Atenção: As questões de números 56 a 60 referem-se ao texto apresentado abaixo. As cores originais dos mapas 2, 3 e 4 foram alteradas para visualização em tons de cinza. 

Using analysis, we can feel confident in the spatial patterns we see, and in the decisions that we make.

Putting your data on a map is an important first step for finding patterns and understanding trends. Here we’re looking at crimes that happened in San Francisco, about 37,000 of them. Looking at the points on a map, can you find the clusters or patterns in this point data? Can you decide where the police department should allocate its resources? Just looking at points on a map is often not enough to answer questions or make decisions using this kind of point data. That’s where the spatial analysis tools in ArcGIS come in. 

                                     

We’ve all seen heat maps on TV or in web application-beautiful maps that show high-density areas in bright red, and low-density areas in blue. These maps are used to visualize crime, disease, and a whole host of other types of data and information. These heat maps can be a great first step in a visual analysis of your data  they can also be very subjective. What does that mean? Well, the two heat maps shown below reflect the same San Francisco Crime data, and were created using the same tool. The only difference is the criteria that were used to decide what appears very dark (high density) and what appears very light (low density). These types of cartographic elements that we incorporate into our maps can have a huge impact on the story that the map tells. 

                                           

If the decisions that you’re trying to make as a result of your analyses are important, and they usually are, you’ll want to minimize subjectivity as much . A great way to minimize the subjectivity in your pattern analysis is to use a hot spot analysis, which incorporates a simple spatial statistic to determine if the patterns that you’re seeing are statistically significant or not. The hot spot map is shown here.

                                                    

So what makes this type of map any less subjective than density-based heat maps? The very dark areas on hot spot maps are statistically significant clusters of high values (hot spots), and the very light areas are statistically significant clusters of low values (cold spots). What’s dark and what’s light is always based on statistical significance. Using hot spot analysis, we can feel confident in the spatial patterns that we see, and in the decisions that we make.(Adapted from: http://resources.arcgis.com/en/communities/analysis/017z00000015000000.htm


Segundo o texto,
Alternativas
Q731030 Inglês

Atenção: As questões de números 56 a 60 referem-se ao texto apresentado abaixo. As cores originais dos mapas 2, 3 e 4 foram alteradas para visualização em tons de cinza. 

Using analysis, we can feel confident in the spatial patterns we see, and in the decisions that we make.

Putting your data on a map is an important first step for finding patterns and understanding trends. Here we’re looking at crimes that happened in San Francisco, about 37,000 of them. Looking at the points on a map, can you find the clusters or patterns in this point data? Can you decide where the police department should allocate its resources? Just looking at points on a map is often not enough to answer questions or make decisions using this kind of point data. That’s where the spatial analysis tools in ArcGIS come in. 

                                     

We’ve all seen heat maps on TV or in web application-beautiful maps that show high-density areas in bright red, and low-density areas in blue. These maps are used to visualize crime, disease, and a whole host of other types of data and information. These heat maps can be a great first step in a visual analysis of your data  they can also be very subjective. What does that mean? Well, the two heat maps shown below reflect the same San Francisco Crime data, and were created using the same tool. The only difference is the criteria that were used to decide what appears very dark (high density) and what appears very light (low density). These types of cartographic elements that we incorporate into our maps can have a huge impact on the story that the map tells. 

                                           

If the decisions that you’re trying to make as a result of your analyses are important, and they usually are, you’ll want to minimize subjectivity as much . A great way to minimize the subjectivity in your pattern analysis is to use a hot spot analysis, which incorporates a simple spatial statistic to determine if the patterns that you’re seeing are statistically significant or not. The hot spot map is shown here.

                                                    

So what makes this type of map any less subjective than density-based heat maps? The very dark areas on hot spot maps are statistically significant clusters of high values (hot spots), and the very light areas are statistically significant clusters of low values (cold spots). What’s dark and what’s light is always based on statistical significance. Using hot spot analysis, we can feel confident in the spatial patterns that we see, and in the decisions that we make.(Adapted from: http://resources.arcgis.com/en/communities/analysis/017z00000015000000.htm


Um sinônimo para ‘huge’, no trecho ‘can have a huge impact on the story that the map tells’, é
Alternativas
Q731029 Inglês

Atenção: As questões de números 56 a 60 referem-se ao texto apresentado abaixo. As cores originais dos mapas 2, 3 e 4 foram alteradas para visualização em tons de cinza. 

Using analysis, we can feel confident in the spatial patterns we see, and in the decisions that we make.

Putting your data on a map is an important first step for finding patterns and understanding trends. Here we’re looking at crimes that happened in San Francisco, about 37,000 of them. Looking at the points on a map, can you find the clusters or patterns in this point data? Can you decide where the police department should allocate its resources? Just looking at points on a map is often not enough to answer questions or make decisions using this kind of point data. That’s where the spatial analysis tools in ArcGIS come in. 

                                     

We’ve all seen heat maps on TV or in web application-beautiful maps that show high-density areas in bright red, and low-density areas in blue. These maps are used to visualize crime, disease, and a whole host of other types of data and information. These heat maps can be a great first step in a visual analysis of your data  they can also be very subjective. What does that mean? Well, the two heat maps shown below reflect the same San Francisco Crime data, and were created using the same tool. The only difference is the criteria that were used to decide what appears very dark (high density) and what appears very light (low density). These types of cartographic elements that we incorporate into our maps can have a huge impact on the story that the map tells. 

                                           

If the decisions that you’re trying to make as a result of your analyses are important, and they usually are, you’ll want to minimize subjectivity as much . A great way to minimize the subjectivity in your pattern analysis is to use a hot spot analysis, which incorporates a simple spatial statistic to determine if the patterns that you’re seeing are statistically significant or not. The hot spot map is shown here.

                                                    

So what makes this type of map any less subjective than density-based heat maps? The very dark areas on hot spot maps are statistically significant clusters of high values (hot spots), and the very light areas are statistically significant clusters of low values (cold spots). What’s dark and what’s light is always based on statistical significance. Using hot spot analysis, we can feel confident in the spatial patterns that we see, and in the decisions that we make.(Adapted from: http://resources.arcgis.com/en/communities/analysis/017z00000015000000.htm


Completa o período, indicado pela lacuna II:

Alternativas
Q731028 Inglês

Atenção: As questões de números 56 a 60 referem-se ao texto apresentado abaixo. As cores originais dos mapas 2, 3 e 4 foram alteradas para visualização em tons de cinza. 

Using analysis, we can feel confident in the spatial patterns we see, and in the decisions that we make.

Putting your data on a map is an important first step for finding patterns and understanding trends. Here we’re looking at crimes that happened in San Francisco, about 37,000 of them. Looking at the points on a map, can you find the clusters or patterns in this point data? Can you decide where the police department should allocate its resources? Just looking at points on a map is often not enough to answer questions or make decisions using this kind of point data. That’s where the spatial analysis tools in ArcGIS come in. 

                                     

We’ve all seen heat maps on TV or in web application-beautiful maps that show high-density areas in bright red, and low-density areas in blue. These maps are used to visualize crime, disease, and a whole host of other types of data and information. These heat maps can be a great first step in a visual analysis of your data  they can also be very subjective. What does that mean? Well, the two heat maps shown below reflect the same San Francisco Crime data, and were created using the same tool. The only difference is the criteria that were used to decide what appears very dark (high density) and what appears very light (low density). These types of cartographic elements that we incorporate into our maps can have a huge impact on the story that the map tells. 

                                           

If the decisions that you’re trying to make as a result of your analyses are important, and they usually are, you’ll want to minimize subjectivity as much . A great way to minimize the subjectivity in your pattern analysis is to use a hot spot analysis, which incorporates a simple spatial statistic to determine if the patterns that you’re seeing are statistically significant or not. The hot spot map is shown here.

                                                    

So what makes this type of map any less subjective than density-based heat maps? The very dark areas on hot spot maps are statistically significant clusters of high values (hot spots), and the very light areas are statistically significant clusters of low values (cold spots). What’s dark and what’s light is always based on statistical significance. Using hot spot analysis, we can feel confident in the spatial patterns that we see, and in the decisions that we make.(Adapted from: http://resources.arcgis.com/en/communities/analysis/017z00000015000000.htm


A palavra que preenche corretamente a lacuna I é
Alternativas
Respostas
1: E
2: B
3: C
4: A
5: D