Working with Inferential Statistics
Working with Inferential Statistics
Introduction
Inferential statistics is the method used to draw inferences regarding a population after analyzing a randomly selected sample. According to (Simonsohn & Nelson, 2015) inferential statistic allows one to use a small portion of the population to make assumptions about the whole at large. Independent t-test is used to test if the means of two unrelated groups are statistically differ from each other whereas the ANOVA helps to determine if there are any differences between the means of more than one independent groups. The data provided can be analyzed to investigate whether injures caused by children differed based on type of movie, length or years of creating the movie, and even the violence time in a movie.
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Determining Statistics using a One-Tailed t-test (Question 1) Working with Inferential Statistics
To investigate whether the children who were exposed to movies that were created before 1980 actually caused more injuries than those children who were exposed to movies after 1980, we perform an independent t-test. Injuries variable is considered to be the dependent variable whereas the year of movie release is the independent variable. The independent variable in this case will have two groups: “children exposed to movies created before 1980”, labelled as 1 and “children exposed to movies created after 1980”, labelled as 2. The SPSS (Ho, 2006) output for comparing the means is as shown below:
Table 1: Group Statistics
Group Statistics | |||||
Movie_Created | N | Mean | Std. Deviation | Std. Error Mean | |
Injuries | children exposed to movies created before 1980 | 23 | .74 | 1.010 | .211 |
children exposed to movies created after 1980 | 51 | 2.12 | 2.016 | .282 |
Table 2
Independent Samples Test Results |
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Levene’s Test for Equality of Variances | t-test for Equality of Means | |||||||||
F | Sig. | t | df | Sig. (2-tailed) | Mean Difference | Std. Error Difference | 95% Confidence Interval of the Difference | |||
Lower | Upper | |||||||||
Injuries | Equal variances assumed | 9.439 | .003 | -3.100 | 72 | .003 | -1.379 | .445 | -2.265 | -.492 |
Equal variances not assumed | -3.914 | 71.10 | .000 | -1.379 | .352 | -2.081 | -.676 |
The study determined that the hypothesis that those children who were exposed to movies created before the year 1980 caused more injuries than those children who were exposed to movies after 1980 was false since they caused statistically significantly lower injuries compared to those children who were exposed to movies after 1980, t (72) = -3.1, p=0.003Working with Inferential Statistics.
ANOVA (Question 2)
To investigate the group that actually caused a lot of injuries we analyzed injuries as the dependent variable and year as the independent variable with the following groups:
“1” = children exposed to movies created between 1937-1960
“2” = children exposed to movies created between 1961-1989
“3” = children exposed to movies created between 1990-1999
Table 3: Descriptive Statistics
Descriptive | ||||||||
Injuries | ||||||||
N | Mean | Std. Deviation | Std. Error | 95% Confidence Interval for Mean | Minimum | Maximum | ||
Lower Bound | Upper Bound | |||||||
1937-1960 | 13 | 1.00 | 1.000 | .277 | .40 | 1.60 | 0 | 3 |
1961-1989 | 21 | 1.62 | 2.037 | .444 | .69 | 2.55 | 0 | 6 |
1990-1999 | 40 | 1.95 | 1.974 | .312 | 1.32 | 2.58 | 0 | 9 |
Total | 74 | 1.69 | 1.872 | .218 | 1.26 | 2.12 | 0 | 9 |
As required
Table 4: ANOVA
ANOVA | |||||
Injuries | |||||
Sum of Squares | df | Mean Square | F | Sig. | |
Between Groups | 8.999 | 2 | 4.499 | 1.294 | .281 |
Within Groups | 246.852 | 71 | 3.477 | ||
Total | 255.851 | 73 |
Based on the results, it can be deduced that there is a statistically significance difference between the three groups as shown by one-way ANOVA (F (2,71) = 1.294, p =0.281). The group that has caused more injuries is that group with children who were exposed to movies that were created between 1990-1999 with a mean of 1.95, followed by that group of children who were exposed to movies that were created between 1961-1989 with 1.62 mean and children exposed to movies created between the years 1937-1960 cause the least injuries characterized by a mean of 1 as shown in the Table 2 of descriptive statistics.
Conclusion
The assumptions for the Analysis of Variance (ANOVA) and the one tailed t- test were met prior to conducting the analysis by ensuring that the dependent variable “injuries” was a continuous approximately normally distributed variable while the independent variable “year” consisted of two independent groups: movie that were created before 1980 and those movies that created after 1980 (Moore et al., 2015).. There was also homogeneity of variances as demonstrated by the Levene’s test (Lowry, 2014). Additionally, there were no significant outlies in the variables analyzed. In conclusion, the discussed statistical analysis can be very instrumental in deducing assumptions of a population by simple analyzing a sample. How different variable relate can also be determined. Working with Inferential Statistics
References
Ho, R. (2006). Handbook of univariate and multivariate data analysis and interpretation with SPSS. Chapman and Hall/CRC.
Lowry, R. (2014). Concepts and applications of inferential statistics.
Simonsohn, U., Simmons, J. P., & Nelson, L. D. (2015). Specification curve: Descriptive and inferential statistics on all reasonable specifications.
Moore, D. S., Notz, W. I., Flinger, M. A. (2015). Basic Practice of Statistics 6th Edition. Working with Inferential Statistics