5 Strategies for Making a Good Analysis and Writing Results

Analysis and Writing Results
The analysis is an essential part of decision-making. When there is a lot of information available the decision-making becomes more difficult. Without analysis, the results and decisions are doubtful, uncertain, and very risky. But a proper analysis and results derived from these analysis makes the decision right and supports the decision with evidence. Analysis and result writing is considered as the most integral part. It is not just one step, it is a complete process that is based on several steps.

Strategies for Making a Good Analysis:

What You Need For Analysis:

According to a PhD dissertation writing service, for making an authentic, valuable, and result-driven analysis, the following things are required
  • Right and authentic data
  • Purpose of Analysis
  • Impact of Analysis
  • Right Tools for Analysis
  • Strategies for Data Analysis

Define Your Purpose or Goal:

The first step of analysis is defining the purpose of analysis. The purpose is a question or problem under investigation. For example, the question might be ‘what is the impact of modification in federal labor law on the policy of company’s labor law?’ or ‘How mush operational and manufacturing cost will increase by the 10% increase in the demand of the product?’ or ‘How the use of Whatsapp for homework is affecting the learning of children under 16?’ The question for analysis must be quantifiable, strong, understandable, and succinct.

Define Process for Measuring:

In this step, you have to decide what you have to measure and how to measure it rightly. Think thoroughly about the type of data that you need for answering the question. When you have a question for analysis, it is not just one question. It has many sub-questions. Through the data that you collect you have to answer the sub-questions as well. Secondly, you have to decide that how you will measure the data. This question is dependent of the data type. You also have to consider the time constraints, tools and apparatus, and unit of measuring.

Data Collection:

When you have a clearly defined question and purpose of analysis, and you know what and how you have to measure, you have to gather and organize the data for making analysis. Before you gather new data, figure out what data could be gathered from existing databases or sources close by. Gather this data first. Always remember to use authentic sources for gathering data otherwise the analysis and results will not be useful and authentic.

Decide a record putting away and naming framework early to help all entrusted colleagues team-up. This interaction saves time and forestalls colleagues from gathering similar data twice. Assuming you need to accumulate data through perception or meetings, build up a meeting layout early to guarantee consistency and save time. Keep your gathered data coordinated in a log with assortment dates and add any source notes as you go (counting any data standardization performed). This training approves your decisions as it were.

Making Analysis:

After you've gathered the correct data to address your question from Step 1, it's the ideal opportunity for more profound data analysis. Start by controlling your data in various manners, for example, plotting it out and discovering relationships or by making a table in Excel. A table allows you to sort and channel data by various factors and allows you to compute the mean, greatest, least, and standard deviation of your data. As you control data, you may discover you have the specific data you need, yet more probable, you may have to amend your unique question or gather more data. In any case, this underlying analysis of patterns, relationships, varieties, and exceptions assists you with zeroing in your data analysis on better responding to your question and any doubt others may have.

Strategies for Writing Results:

After the successful completion of the analysis, you have to interpret and write the results of your analysis. For interpreting and writing result keep the following points in mind
  • No matter how much genuine the data is, or how much good analysis you have done, there are still chances that a hypothesis is rejected.
  • During interpretation check whether the data you have analyzed is proving the answer to your question
  • Are there any restraints related to your assumptions?
  • Is there any point or angle that your data is not covering?
  • Is your data is giving the results against or in favor of your hypothesis?

If your understanding of the data holds up under these questions and contemplations, at that point you probably have reached a gainful resolution. The last advance is to utilize the consequences of your data analysis cycle to choose your best strategy.

Albert Barkley

Hello, my name is Albert Barkley. I am working as education consultant with a UK based firm after completion of my PhD. I like to write on different social, tech and education trends.

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