A time series is a sequence of data
points, measured typically at
successive points in time spaced at uniform time intervals. Examples of
Time series includes closing value of a company's stock price on a daily basis
and company's revenue at the end of each year, etc. Time series analysis comprises methods for analyzing time
series data in order to extract meaningful statistics and other characteristics
of the data. In
terms of data mining, time series analysis can be used for clustering,
classification, query by content, anomaly detection as well as forecasting.
Time
series data mining combines data mining with time series analysis to:
- Extract features of time series data (such as
seasonal patterns, etc.) for building better predictive models.
- Reduce time series data into fewer dimensions by
using data mining methods, such as variable selection and clustering.
- Conduct similarity analysis of time series data
(pattern detection) for segmenting data, or validating forecasts of new
products.
The
Applications of Time series data mining include:
Marketing –
This application includes predicting the response of a customer to a specific
marketing offer. Customers who have reacted positively to a recent offer are
more likely to react positively again. Marketing departments across all
industries have been using this insight for more targeted customer relationship
management. Advanced predictive models often use proxy variables to capture the
temporal aspect of the relationship between historical customer behavior and
desired future outcome. For example, analysts often manually summarize
transactional data about product usage into a set of time series, such as total
monthly air minutes, maximum total air use, and change from previous month for
mobile phone use. The time series data is then used as input to the predictive
models.
Inventory
management –
Often, time series information is collected on a very granular level in
organizations. For example, retailers measure sales of items in a store on the Stock
Keeping Unit(SKU) level and in daily time intervals. For stores with thousands
of items, this results in a large amount of time series with many records
because historical data is sometimes collected over many years. This large
amount of data often makes it difficult to extract information relevant for
decision-making. TSDM tools help analysts quickly reduce the dimensionality of
the problem under investigation and extract relevant information. SKUs with
similar sales trends can be combined into segments without losing critical
information. Time series analysis techniques, such as smoothing, can help
compress detailed information into a picture that makes general patterns easier
to spot.
Fraud detection – The similarity analysis provided with TSDM tools work on the most detailed level in order to spot exceptions to average behavior. Credit card providers can use time series data mining to automate the detection of fraudulent behavior in financial transactions. They do this by comparing many detailed transactional time series against a known pattern of abusive behavior. It is often only in looking across the temporal representation of behavior that undesired behavior becomes apparent. The similarity analysis tool can quickly detect behavior over time with known signatures of fraud and create flags for further investigation if similar patterns are detected.
New product forecasting – A never-ending challenge for consumer goods manufacturers and retailers, new product forecasting situations include: predicting entirely new types of products, new markets for existing products and refinements of existing products. All of them require a forecast of future sales without historic data for the new product. However, by using techniques such as similarity analysis, an analyst can examine the demand patterns of past new products having similar attributes and identify the range of demand curves that can be used to model demand for the new product.
http://en.wikipedia.org/wiki/Time_series
Fraud detection – The similarity analysis provided with TSDM tools work on the most detailed level in order to spot exceptions to average behavior. Credit card providers can use time series data mining to automate the detection of fraudulent behavior in financial transactions. They do this by comparing many detailed transactional time series against a known pattern of abusive behavior. It is often only in looking across the temporal representation of behavior that undesired behavior becomes apparent. The similarity analysis tool can quickly detect behavior over time with known signatures of fraud and create flags for further investigation if similar patterns are detected.
New product forecasting – A never-ending challenge for consumer goods manufacturers and retailers, new product forecasting situations include: predicting entirely new types of products, new markets for existing products and refinements of existing products. All of them require a forecast of future sales without historic data for the new product. However, by using techniques such as similarity analysis, an analyst can examine the demand patterns of past new products having similar attributes and identify the range of demand curves that can be used to model demand for the new product.
http://en.wikipedia.org/wiki/Time_series
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