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Our course "Data Mining in Finance - Predictive Analytics and Financial
Forecasting" provides an introduction into data mining methods and
demonstrates how data mining can be employed in various tasks in the
financial sector by banks, investment funds, hedge funds, insurance
companiess, and other financial institutions and companies in the finance
sector as well as sophisticated private investors and traders.
Financial data often comes in the form of time series, e.g. stock market
prices, commodity prices, utility prices, or currency exchange rates
observed over time.
The analysis of financial time series is often based on indicators
derived from such uni- or multi-variate time series and on linear or
non-linear combinations of such indicators.
Data mining techniques can be used to analyse financial time series data,
to find patterns, to detect anomalies and outliers, to recognize situations
of chance and risk, to detect temporal changes in the correlation patterns
and structures, to predict future demand, prices, and rates, to determine
the most successful indicators, to optimally combine such indicators to
achieve strong predictive power.
Hence data mining can support analysts, investors, and traders in their
decisions when trading stocks, options, commodities, utilities, or
currencies.
This course describes data mining techniques for financial time series
data including data pre-processing methods, time window based approaches
and the automated optimization of the time window sizes, indicator or
feature weighting and selection methods, and statistical and machine
learning techniques to automatically find weighted linear and non-linear
combination of an optimized set of indicators or features when
automatically learning a prediction or forecasting model (trade decision
(support) system).
The topics include necessary preprocessing steps for numerical data
transformations, an introduction into linear and non-linear statistical
regression methods, neural networks, and support vector machines (SVM),
and a discussion of validation methods in order to measure the goodness
of the predictions, i.e. how to thoroughly evaluate such models on
historic data (backtesting).
These methods are especially useful for numerical predictions from
series data as they often occur in financial markets.
In addition to time series data, transactional data is also very frequent
in the financial sector.
Transactional and accounting data can be analyzed and leads to models for
detecting patterns and irregularities, improper trading or accounting
practices, dubios transactions, potential fraud, money laundering, and other
undesired activities as well as for transaction monitoring, credit scoring,´
credit default prediction, risk assessment and minimization, finding risk
factors, and portfolio management.
This course also describes the practical steps necessary to create such
models with the open-source data mining software RapidMiner. The large
amount of practical examples and exercises enables the participants to
design appropriate data mining processes and apply the gained knowledge to
their data mining problems and to solve them efficiently and successfully.
You can register to this course online.
Details
- Course ID: 200803
- Date: September 11th - 12th, 2008
- Number of days: 2 days
- Location: London, UK
- Target audience: financial analysts, investors, traders,
bank accountants, employees of accounting, controlling, auditing,
or internal revision departments, auditors, decision makers,
fund managers, software developers
- Previous knowledge: basic knowledge of computer programs
- Methods: lectures, discussions, individual and group work,
exercises on realistic data.
Participants may introduce own work and project specific questions
in order to find particular solutions together with the trainer and
other participants.
- Content: this course includes a compact introduction into the
foundations of data mining and statistical learning for predictions
and forecasting as well as into the software RapidMiner.
It addresses beginners and intermediate learners.
Topics of this course are
- Introduction to data mining methods for data cleaning,
finding reliable indicators and key factors, feature selection,
pattern and outlier detection, anomaly detection,
automated classification, regression, forecasting,
predictive analytics
- Basics of cost-sensitive machine learning and data mining
with RapidMiner
- Definition of prediction / forecasting of series data
- Statistical Learning: Regression Methods, Neural Networks,
Support Vector Machines (SVM)
- Preprocessing for series data: from series to data points
- Forecasting with regression methods
- Influence of the prediction horizon
- Validation of forecasting: introduction into performance criteria,
cross validation, bootstrapping, back testing
- Visualization of series data and predictions: high-dimensional
data visualizations
- Identifying changes – detecting opportunities and risks
- Detecting patterns, irregularities, and inidcators for identifying
and preventing improper accounting practices, dubious
transactions, potential fraud, money laundering, or other
undesired activities
- Credit scoring, credit default prediction, and risk factors
for risk assessment, mitigation, and minimization
- Predicting future demand, prices, and sales;
quantitative stock market predictions, forecasting of foreign
currency exchange rates or commodity prices
- Mining structured and unstructured data, i.e. database tables as
well as e.g. textual information using statistical analysis,
data and text mining – an outlook to sentiment
classification based on e.g. news texts or web blogs
Extensive exercises on different data sets will be performed for all
topics. For advanced topics like text mining and web mining including
sentiment analysis, introductions and application examples are provided
here, but for an in-depth coverage and understanding, special
courses
on these topics are offered and recommended.
Prices
| Number of Participants: |
1 |
2 |
3 |
4 or more |
| Price per Participant: |
1650 Euro |
1400 Euro |
1300 Euro |
1100 Euro |
Value added tax (VAT) may have to be added to these base prices.
Online Registration
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