Relation to the linear regression and the dataset

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Reference no: EM132123846

Assignment

1. Utilising Python 3 Build the following regression models:
- Decision Tree
- Gradient Boosted Tree
- Linear regression

2. Select a dataset (other than the example dataset given in section 3) and apply the Decision Tree and Linear regression models created above. Choose a dataset from Kaggle

3. Build the following in relation to the gradient boost tree and the dataset choosen in step 2
a) Gradient boost tree iterations (see section 6.1)
b) Gradient boost tree Max Bins (see section 7.2)

4. Build the following in relation to the decision tree and the dataset choosen in step 2
a) Decision Tree Categorical features
b) Decision Tree Log (see section 5.4)
c) Decision Tree Max Bins (see section 7.2)
d) Decision Tree Max Depth (see section 7.1)

5. Build the following in relation to the linear regression and the dataset choosen in step 2
a) Linear regression Cross Validation
i. Intercept (see section 6.5)
ii. Iterations (see section 6.1)
iii. Step size (see section 6.2)
iv. L1 Regularization (see section 6.4)
v. L2 Regularization (see section 6.3)
b) Linear regression Log (see section 5.4)

6. Follow the provided example of the Bike sharing data set and the guide lines in the sections that follow this section to develop the requirements given in steps 1,3,4 and 5

Task 1

Task 1 is compromised of developing:
1. Decision Tree
a) Decision Tree Categorical features
b) Decision Tree Log (see section 5.4)
c) Decision Tree Max Bins (see section 7.2)
d) Decision Tree Max Depth (see section 7.1)

Task 2
Task 2 is compromised of developing:
1. Gradient boost tree
a) Gradient boost tree iterations (see section 6.1)
b) Gradient boost tree Max Bins (see section 7.2)
c) Gradient boost tree Max Depth (see section 7.1)

Task 3
Task 3 is compromised of developing:
1. Linear regression model
a) Linear regression Cross Validation
i. Intercept (see section 6.5)
ii. Iterations (see section 6.1)
iii. Step size (see section 6.2)
iv. L1 Regularization (see section 6.4)
v. L2 Regularization (see section 6.3)
b) Linear regression Log (see section 5.4)

Attachment:- Big-Data Assignment.rar

Reference no: EM132123846

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Reviews

urv2123846

10/29/2018 4:21:59 AM

Perfect! Did good work as I mention..Excellent service and friendly staff helping for the suggestion. Really so quick. Just got the assignment done before 48 hours of submission time. And one more thing I forgot to mention, thanks for the discount. I wins my heart everytime.

len2123846

9/27/2018 12:09:21 AM

please be careful don't match with any body. I have attached three files first marketing criteria and second one assignment and third one from you have to take data. this zip file.

len2123846

9/27/2018 12:00:33 AM

2 What needs to be submitted for marking: For the Decision tree section a .py or .ipynb file for each of the following: ? Decision Tree ? Decision Tree Categorical features ? Decision Tree Log ? Decision Tree Max Bins ? Decision Tree Max Depth For the Gradient boost tree section a .py or .ipynb file for each of the following: ? Gradient boost tree ? Gradient boost tree iterations ? Gradient boost tree Max Bins For the Linear regression section a .py or .ipynb file for each of the following: ? Linear regression ? Linear regression Cross Validation

len2123846

9/27/2018 12:00:26 AM

Linear regression Linear regression 5 5 Linear regression Cross Validation Intercept 5 5 Iterations 5 5 Step size 5 5 L1 Regularization 5 5 L2 Regularization 5 5 Linear regression Log 5 5 75 75 Total mark 150

len2123846

9/27/2018 12:00:19 AM

Datasets bike sharing [provided] Student selected dataset [from Kaggle.com] Decision Tree 5 5 Decision Tree Categorical features 5 5 Decision Tree Log 5 5 Decision Tree Max Bins 5 5 Decision Tree Max Depth 5 5 Gradient Boosted Tree 5 5 Gradient boost tree iterations 5 5 Gradient boost tree Max Bins 5 5

len2123846

9/27/2018 12:00:13 AM

Big Data Assignment Marking Criteria The Big Data Assignment is comprised of two parts: ? The first part is to create the algorithms in the tasks, namely: Decision Tree, Gradient Boosted Tree and Linear regression and then to apply them to the bike sharing dataset provided. Try and produce the output given in the task sections (also given in the Big-Data Assignment.docx provided on Blackboard). ? The second part is then use those algorithms created in the first part and apply them to another datasetchosen from Kaggle (other than the bike sharing dataset provided).

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