Abstract:
When it comes to prediction, it's always a complicated and challenging process.
Sometimes it might not helpful to use traditional methods of prediction with your
requirement. Stock market prediction has been an interesting area due to its
impotency. This report is containing the information based on a research conduct in
stock market prediction and suggesting an alternative hybrid system did by using
KNN (K Nearest Neighbor) algorithm (unsupervised) and a supervised algorithm
which is rich with a higher accuracy level. The system is getting an accuracy of 65%
to 75% when using only the KNN algorithm and to improve the accuracy of the system
another algorithm has been written and sorting the results coming from the 1st
algorithm. When this step was done the accuracy was climb up to 85% to 90% and
its different from symbol to symbol. However, the overall accuracy is in between 80%
to 90%. All the statistics and graphs are included in the report under the relevant
chapters.
The proposed system has been evaluated and tested and all the test results, design,
implementation and documentations are expressed in an efficient manner.