数据分析报告英文版.pptx
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1、数据分析报告英文版CATALOGUE目录IntroductionData Collection and PreparationExploratory Data AnalysisStatistical Modeling and AnalysisData Visualization and InterpretationConclusions and RecommendationsCHAPTERIntroduction01To provide an overview of the current state of data within the organization and identify t
2、rends,patterns,and insights that can inform strategic decision makingTo assess the quality,accuracy,and completeness of data and recommended improvements to data collection and management processesTo analyze data from various sources and present findings in a clear and consensus manager,highlighting
3、 key takeaways and actionable recommendationsPurpose and Background01This report covers data from all departments within the organization,including sales,marketing,operations,finance,and human resources02The analysis focuses on historical data from the past year,as well as current data up to the dat
4、e of this report03The report includes both quantitative and qualitative analyses,utilizing statistical techniques,data visualization tools,and qualitative research methodsScope of the ReportCHAPTERData Collection and Preparation02Primary Data SourcesSources of Data Collected through surveys,intervie
5、ws,experiences,or observationsSecondary Data Sources Obtained from existing databases,public records,or previous research studies Combination of primary and secondary data to enhance the analysisMixed Data Sources Examining data for completeness,accuracy,and consistencyData Screening Inputting or de
6、leting missing data based on the nature and amount of missingHandling Missing Values Identifying and appropriately managing extreme values that deviate from the normOuter Detection and Treatment Converting data to a suitable format or scale for analysisData TransformationData Cleaning and Preprocess
7、ingData Transformation and NormalizationNormalization Scaling individual features to a common scale to avoid biases during analysisStandardization Converting data to have zero mean and unit variance to ensure comparabilityDiscretization Converting continuous features into categorical ones through bi
8、nding or threshingFeature Engineering Creating new features from existing ones to capture additional insights or improve model performanceCHAPTERExploratory Data Analysis03 Examining the distribution of a single variable can provide insights into its central tension,distribution,and the presence of
9、outliers Common univariate analysis techniques include calculating measures of central tension(mean,medium,mode)and dispersion(variance,standard deviation,range)Distribution of a single variable Univariate data can be visualized using various charts such as histograms,box plots,and density plots The
10、se visualizations help to understand the shape of the distribution,identify outliers,and assess the skill and kurtosis of the dataVisualizing univariate dataUnivariant AnalysisRelationship between two variables Bivary analysis explores the relationship between two variables It helps to understand ho
11、w one variable changes with respect to the other and to assess the strength and direction of the relationship Common bivariate analysis techniques include scatter plots,correlation coefficients,and regression analysisCategory vs.continuous variables Bivariate analysis can be performed on both catego
12、ries and continuous variables For categorical variables,techniques such as consistency tables and chi square tests can be used to assess the relationship between the categories For continuous variables,correlation and regression analysis can be used to quantify the strength and direction of the rela
13、tionshipBivariate AnalysisRelationship among multiple variables:Multivariate analysis goes beyond bivariate analysis by examining the relationships among multiple variables It helps to understand the interdependencies among variables and to identify patterns and trends that may not be apparent in un
14、ivariate or bivariate analysis Common multiple analysis techniques include multiple regression,principal component analysis(PCA),and cluster analysisDimensionality reduction:Multivariate analysis often involves dimensions reduction techniques such as PCA or factor analysis These techniques help to r
15、educe the number of variables while retaining important information,making it easier to visualize and interpret the data Dimensionality reduction can also help identify underlying structures or patterns in the dataMultivariate AnalysisCHAPTERStatistical Modeling and Analysis04Linear Regression A sta
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