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What are the characteristics of quantitative data? Explain how quantitative data analysis and interpretation takes place.

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In-Brief

Introduction

Quantitative data is the value of data in the form of counts or numbers where each data set have the unique numerical value association. Quantitative Statistical Analysis type of data is a quantifiable form of data used for mathematical calculations and statistical analysis. Quantitative data measure various parameters controllable due to the ease of mathematical derivations—quantitative data collected for statistical analysis using survey, polls, or questionnaires to the target audience.

Quantitative data analysis

For Quantitative Data Analysis Services, you will work with quantitative data such as time, height, weight, price, cost, profit, distance and temperature. It is the form of data expressed in the form of numerical. With quantitative data, we usually try to answer the question involving quantity, frequency, size. There are two main types of quantitative data they are discrete and continuous. Discrete data consist of a limited number of values, and continuous data has an unlimited number of values that include fractions and decimals.

Characteristics of Quantitative Data

The Secondary Qualitative Data Analysis data is of two types discrete and continuous. Discrete data is the data that consist of a limited amount of values. Continous is the type that consists of unlimited values. Continuous type id further classified into two types they are, interval and ratio. Interval data is quantitative data measured along a scale.A classic example of interval data is the data collected on a thermometer—its gradation or markings are equidistant.

The data that takes up numerical value withnumeric properties come under this category. Unlike categorical data that takes numerical values with descriptive characteristics, thenStatistical Analysis of Qualitative Data exhibits numeric values.

The scale or order determined by Statistical analysis of quantitative business research. Example the number begins with 1 to 3 can be written as 1,2,3 or 3,2,1 when arranged in descending or ascending orders.

The arithmetic operations, like addition, subtraction on the quantitative data is standard. Almost all statistical analysis method utilizes this method.

The data measurement has the standardized measuring scale that limits the data calculation. As said in ordinal data that has a correct order, but has no standard scale.

This data analyzed using descriptive and inferential statistical methods, depending on the aim of the research engaged.

The data visualization technique used by the quantitative data includesscatter plot, dot plot, stacked dot plot, histograms, etc.

Tools used in the analysis

Quantitative Data Analysis & Interpretation

Data Preparation:

The first step in Quantitative Dissertation and Research Consulting and interpretation is data preparation, where raw data changed into meaningful and readable data.

Step 1: Data Validation

It is done to find out whether Data collection carried out without any bias

Step 2: Data Editing

An extensive set of SPSS Statistics help, and data analysis services inevitably help to evade errors, so when there is a need to edit. During this process, completeness and consistencyare also checked.

For example, completeness means leaving the field blank, which is a case of incompleteness. In another case, we may have the respondent who entered the wrong data.

Step 3: Coding and Data Entry

It is the process of qualifying quantitative data for analysis, which involves grouping and assigning values to the response.

Step 4: Data Transformation

Professional help with statistical analysis of Data analysis service helps to transform into a different format—for example, reducing a 5 pointLikert-type scale into three categories.

Conclusion

Quantitative data is the most widely used data type in the research. It is probably due to its ease of computation and compatibility with statistical analysis method. In quantitative data analysis, we consider a sample population to classify features and construct more complex statistical models in an attempt to explain the observed result. Then the findings may be extended to a large population, and the comparison is made between the sample population. Quantitative data collected through a standard procedure by making it easy for researchers to rewrite past research or build on current ones.

References

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