Wednesday, December 4, 2019

The Value Of The Real Estate Business †MyAssignmenthelp.com

Question: Discuss about the Value Of The Real Estate Business. Answer: Introduction Real estate business is one of the most lucrative businesses in the world market today. Investors tend to change from temporary/ short term investment to a permanent investment (Spertino et al, 2013). As compared to other businesses, real estate business in most of the cases experience continuous increase in the value. The business involves both buying of a bare piece of land and selling, putting up a house structure on a piece of land then sell and also just buying and selling of already built houses. The value in the real estate business tends to be appreciating all the time due to value increase in the pieces of land (Tiwari White, 2010). Before venturing into real estate business, there are various factors that the business people need to consider just like in other normal business opportunities. Negotiation skills are some of the required attributes for those aspiring to engage in real estate business or those who already are running the business (Rothaermel, 2015). These skill s are deemed important in this kind of business especially when negotiating prices with the willing buyers and the willing sellers. On top of that, prior knowledge about the trending price is as well helpful for they act as the reference point at the time of negotiating prices with the customers so that prices are not overstated or understated (Bewayo, 2015). Another key factor to consider is the population of the location of the business. Population is always allied with good business performance (Graham et al, 2011). As a result therefore, highly dense populated areas tend to have businesses thriving well than those in less dense populated areas (Hahan et al, 2011). The business was then chosen to be situated and operate in five cities such as Belton, Terratae, Mount, Domaine and Hills. The services that will be rendered by the real estate agency in these cities will be buying pieces of land, constructing houses, renting out houses, leasing houses and selling the built houses to the willing buyers. Since the business is from new investors and the business is still new, thorough market research incorporated with advertisements should be held viable to make the business have wider coverage in the cities. Televisions, radios, newspapers, magazines, social media and other platforms should be engaged in carrying out the advertisement to crea te awareness to the public to expand and win the trust of the customers. Advertisement will also ensure that wider market is covered and that the business stands a better chance of competing with the competitors favorably (Wagner et al, 2013). In connection to that, advertisement will wipe off the middlemen from the channel. As a result therefore, to have all of these done, more man power have to be engaged in the business and the more the number of workers, the larger the size of the business. In this case, the business size will be relatively big since more professional services will need to be hired. The prospected customers for this business are the residence and the willing investors who would be looking for apartments for hire in the cities. Research questions In order to identify and know what happened in the previous market in the previous years, data was collected covering the location of business (cities), the number of bathrooms houses in the cities were having, the number of bedrooms, the total number of rooms houses had in the cities, the advertisement cost and the prices that were labeled against the house in different cities. Data was to be used to construct research questions that would be helpful in identifying the behavior of the market and to find the strategies to venture into the market in the defined cities. Some of the objectives that were identified in this report were to determine if there was relationship between the listed cost and the final sale of the houses. Secondly comes to determine the relationship between all rooms the houses had and the listed cost and lastly, to determine the relationship between all the rooms a house has and the final sale. All these stated objectives will only be met if the research questio ns are answered. The first question then becomes; Which is the best city to invest in among the five sampled cities? Cost labeled against every product is one of the determinants of the value the product hold. Depending on the persuasive and the bargaining power of the involved parties in the buying and selling process, the listed cost can at sometimes be higher than the final sale. In the case where the listed cost is lower than the final sale, then it is either the product has been sold at a discount or the buyer had higher bargaining power than the seller. And if the real estate product had higher final sale than the listed cost, then it is either that the value of the real estate product had appreciated due to some added values to the product or the seller had higher bargaining power than the buyer. As a result to that therefore, we are interest to have a question that Is there relationship between listed cost and the final sale? Responding to this question will help the owner of the business know how to treat the two or consider them at any time they are making any transaction. It is in the minds of the many without proof that a house with the highest number of rooms will have the highest listed cost as compared to others that were having less number of rooms. To ascertain the change and the effect, this report is therefore bound to answering the question Is there a relationship between (All rooms) and the listed cost of the houses in the cities? Any sort of relationship that is found existing between these two variables will mean that any change in the number of rooms will definitely have effect on the listed cost. Lastly, we have also sparked interest in determining the relationship that exist between all rooms a house has and the final sale of the house. As a result therefore, we pose a question: Is there relationship between all rooms a house has and the final sale of the house? response to this question will also be viable to the decision makers of the business in that they will be required to consider the number of rooms a house has in labeling the final sale of the house irrespective of whether the buyer has higher bargaining power than him/her. Selected statistical methods Some of the selected statistical methods for use in this research were Pearsons correlation coefficient (r). This statistical method will help to identify the relationships that exist between variables to be tested as stated in the research questions. The value of r will show whether or not the relationship was strong positive if the value of r is positive and close to 1 or strong negative if the value of r is negative and close to -1 (Keith, 2014). The hand calculation of Pearsons coefficient will be as follows; Descriptive statistics such as the mean, variance and standard deviation of the collected quantitative data will be calculated as shown below; Mean = where i= 1, 2, 3, where n is sample size Mean will be calculated for listed cost and final sale for the sampled cities. Mean is important in determining the characteristic of the dataset (Schielzeth, 2010). To calculate the variance denoted by (S2) for the sample of the data from the dataset and it was done as follows; Variance (S2) = where from the formula, standard deviation is now the square root of variance and it is denoted by letter S when it is calculated for a sample. S = The dataset will also be represented in figures such as the scatter plot and box and whisker for the variables of interest i.e. listed cost, final sale and all rooms. The scatter plot will help us visualize the trend line between the plotted variables whereas the shape of the data represented in the variables will be shown in box and whisker plot. Technical analysis In response to question one, the line graph was used to compare how the listed cost and the final sale was changing with the sampled cities. As a result, final sale was slightly above the listed cost in most of the cities. The cost were seen appreciating in Belton city and the trend even continued to shoot higher in Domaine city. A sharp drop was recorded through to Hills city and remained almost constant at all the time when data was being collected. In Mount city, the listed cost and final sale were slightly increasing and higher than that in Hills where lastly, both the final sale were still on the rise in Terratae city with listed cost taking a sharper increase than Final sale. Bedrooms Bathrooms All rooms Listed ($000) Final Sale ($000) Advertising expenditure ($000) Bedrooms 1 Bathrooms 0.816468 1 All rooms 0.947519 0.930913 1 Listed ($000) 0.898309 0.891372 0.954659 1 Final Sale ($000) 0.880324 0.9083 0.950101 0.980465 1 Advertising expenditure ($000) 0.696894 0.62631 0.726355 0.76513 0.757146 1 The correlation coefficient (r) for the test of relationship between listed cost and final sale was 0.980465 showing that there almost perfect positive correlation between the two variables. This means that the higher the listed cost the higher the final sale, this responds to the second question. Similar test was conducted to test for the relationship between all rooms and the listed cost. The value of r was 0.954659 indicated near perfect positive correlation and that increase in the number of all rooms leads to an increase in the listed cost. This responds to the third question. In response to the forth question, correlation was tested between all rooms and final sale and the value of r was found to be 0.950101 that showed near perfect correlation. This can as well be interpreted to mean that higher number of rooms attracted higher final sale. All rooms, listed cost and final sale showed positive skewness and that higher were more than lower costs. The scatter plot above was to confirm for the strength of the relationship between final sale and listed cost that was shown to be at 96.13% and that most of the plotted points were concentrated around the trend line. All rooms showed to have influence on the final sale. From the collected data, relationship between the two variables was found to be at 90.27% as indicated by coefficient of determination (R2). Results and discussions From the research questions in response to question one indicated that it was crystal clear that in the previous years the business performed particularly in Domaine city. The prices of the real estate products were the highest and stood high as compared to other cities. It was therefore an advice to John Hikins and George Main real estate agency to prioritize Domaine city as the best destination for venturing real estate business. As opposed to that, Hills city recorded the lowest real estate business performance with no significant signs of showing increase in the trend as from figure 1. As a result therefore, the real estate agency is advised consider other cities over it and if at all it is to be considered, then it should be based on other factors otherwise it should be given low priority. Terratae is another city that had shown sharp price increase of the real estate products and the graph still shows that the trend was to continue for some time in the future. This makes the ci ty one of the best investment places for real estate business. The number of rooms (All rooms) in the cities were found to have influence in both the listed prices and the final sale for the houses. Due to that, near perfect positive correlation was recorded in the test of relationship between all rooms, listed cost and final sale. The coefficient of determinant showed all the strengths at over 90% to mean that all the tested relationships had near perfect positive correlation. References Bewayo, E. D. (2015). Uganda entrepreneurs: why are they in business.Journal of Small Business Strategy,6(1), 67-78. Graham, J. R., Hanlon, M., Shevlin, T. (2011). Real effects of accounting rules: Evidence from multinational firms investment location and profit repatriation decisions.Journal of Accounting Research,49(1), 137-185. Hahn, E. D., Bunyaratavej, K., Doh, J. P. (2011). Impacts of risk and service type on nearshore and offshore investment location decisions.Management International Review,51(3), 357-380. Keith, T. Z. (2014).Multiple regression and beyond: An introduction to multiple regression and structural equation modeling. Routledge. Rothaermel, F. T. (2015).Strategic management. McGraw-Hill Education. Schielzeth, H. (2010). Simple means to improve the interpretability of regression coefficients.Methods in Ecology and Evolution,1(2), 103-113. Spertino, F., Di Leo, P., Cocina, V. (2013). Economic analysis of investment in the rooftop photovoltaic systems: A long-term research in the two main markets.Renewable and Sustainable Energy Reviews,28, 531-540. Tiwari, P., White, M. (2010).International real estate economics. Palgrave Macmillan. Wagner, T. M., Benlian, A., Hess, T. (2013, January). The Advertising Effect of Free--Do Free Basic Versions Promote Premium Versions within the Freemium Business Model of Music Services?. InSystem Sciences (HICSS), 2013 46th Hawaii International Conference on(pp. 2928-2937). IEEE.

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