The goal of this paper is to put some light on the difference between the types of statistical analysis. The two main basic branches in science known as statistics are Descriptive and Inferential statistics. These branches are tighly associated, but yet we can clearly establish a differentiation between them.
Descriptive statistics corresponds to essentially the act of defining characteristics of a statistical measurement. Descriptive statistics is based upon mechanisms and methods employed to organize and summarize raw data. In order to categorize the data from a random sample that is collected, the majority of statisticians use graphs, charts, tables and standard measurements such as averages, percentiles, and measures of variation.
Descriptive statistics are often employed during a baseball season. Baseball statisticians spend a great deal of time and effort examining the data they get from the games and summarizing, categorizing to discover regularities to enlighten the audience. There are many examples that would make this apparent. For example in 1948 there were over 600 games played in the American League. To determine who had the best batting average in that season, you would need a lot of effort. You would need to take the official scores for each game, make a list each batter, compute the results of each time at bat, add the total number of hits, and the total number of times at bat in order to calculate with a batting average. In 1948 the American League player with the top batting average was Ted Williams. But, if your objective is to know who the top 25 players for the year were, the statistical calculations would become increasingly complicated.
The use of computer statistical programs and the capability to incorporate a lot of statistical functions on spreadsheet programs such as Excel implies that more and more complicated and detailed information can be collected, formatted and presented with only a a couple of keystrokes. All this have empowered the sport statisticians to a further degree and they are able to handle massive amounts of data and explore the data in a substantially more systematic way.
Inferential statistics is based upon choosing and measuring the trustworthiness of conclusions about a population parameter based on information from a reduced portion of that population, which is a random sample. Among the many uses of inferential statistics, political predictions ar one good example. In order to be able to attempt to predict who the winner of a presidential election is likely to be, in most of the cases a sample of a few thousand carefully chosen sample of Americans are asked which way they will be voting. From the answers given to this question, statisticians are able to predict, or infer who the general population will vote for with a surprinsingly high level of confidence. Clearly, the fundamental elements in inferential statistics are choosing which members of the general population will be polled and what questions will be asked. Imagine a situation where there is a choice of two candidates, and the polled population, or sample population is asked: Are you planning to vote for X in the upcoming election? the only alternatives for the answer will be either yes, no, or undecided. Based on the results you should be able to determine that 51% of the sample group will Give their vote to Candidate X.
Turning to inferential statistics, you can {predict with a certain degree of confidence that Candidate X will be the winner in the election. Nevertheless, in some cases, the sampling procedure may have given rise to incorrect inferences. A classic example is the 1948 Presidential election. Based on a poll obtained by the Gallup Organization, President Harry Truman believed he would only gain about 45% of the votes and would lose to Republican challenger Thomas Dewey. In fact, as history proves, Truman won more than 49% of the votes and of course, won the election. This incident changed the way samples were collected, and much more rigorous procedures were created to assure that more precise predictions are cast.
Types Of Statistical Analysis
Descriptive statistics is simply the process of defining characteristics of a statistical measurement. Descriptive statistics consist of the procedures and methods employed to organize and summarize raw data. In order to categorize the raw data that is gathered, most statisticians rely on graphs, charts, tables and standard statistical measurements such as averages, percentiles, and measures of variation.
One of the most common uses of descriptive statistics is in sports (all kind of sports). In fact, baseball statisticians spend a great deal of time and effort observing the raw data and summarizing, categorizing to come up with statements of fact regarding the season. For example in 1948 more than 600 games were played in the League. Determining who had the best batting average in that year, you would need a lot of effort. You would need to take the official scores for each game, list each batter, determine the results of each time the player is at bat, and proceed to count the total number of hits and the times at bat. In 1948 the American League player with the highest batting average was Ted Williams. But, if your objective is to know who the top 25 players for the year were, the statistical computations would become increasingly complicated.
The use of modern computers with incredibly powerful applications, and the capability to use a lot of statistical functions on spreadsheet programs such as Excel implies that more and more complicated and detailed information can be collected, formatted and presented with only a few clicks of the mouse. All this have given more power and flexibility to the sport statisticians to a further degree and they are able to handle massive amounts of data and explore the data in a more systematic way.
Now, inferential statistics is based upon choosing and measuring the trustworthiness of conclusions about a population parameter based on information from a reduced portion of that population, which is a random sample. Among the many uses of inferential statistics, political predictions ar a very good example. In order to determine who the winner of a presidential election is likely to be, in most of the cases a sample of a few thousand (or even less) carefully chosen sample of Americans are asked for their vote intention. With this answers statisticians are able to predict, or infer who the general population will vote for with a reasonable confidence level. Obviously, the fundamental elements in inferential statistics are choosing which members of the general population will be chosen and what questions are asked. In a case such as the above, with two candidates, and the polled population, or sample population is asked: Are you planning to vote for X in the upcoming election? the only alternatives for the answer will be either yes, no, or undecided. From the descriptive statistics you should be able to determine that 51% of the sample group will Give their vote to Candidate X.
Applying techniques of inferential statistics, we can {infer in most of the cases that Candidate X will be the winner in the election. Nevertheless, we have to be cautious because the the sampling procedure could have created incorrect inferences. Let's not forget of the classic case of the 1948 Presidential election. Based on a poll obtained by the Gallup Organization, President Harry Truman believed he would only gain about 45% of the votes which would imply losing to Thomas Dewey. As a matter of fact, as history proves, Truman won more than 49% of the votes and of course, and the end result is that he won the election. This caused a change in some of the sampling techniques and the Gallup Organization has correctly predicted the Presidential election winner ever since.
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