Time-series data is everywhere—whether or not your brand is equipped to handle it. Data-driven organizations need time-series analysis platforms to make the most of their data, but some brands may not realize there are different techniques for achieving time-series analysis. The question isn’t whether time-series analytics platforms are worth it—they are—but knowing which analysis technique is best suited for your brand goals and needs.
In today’s blog, we’ll explore three common time-series analysis techniques and how they can be leveraged to solve common business problems across industries.
In time-series analysis, data points are recorded at consistent intervals over a set time period. This allows brands to compare data points against different variables and times, making it easier to discern trends and outliers.
However, there is no universal method to perform a time-series analysis, and some methods may be better suited for certain data sets than others.
Univariate Box-Jenkins modeling, or autoregressive integrated moving average (ARIMA), is used to forecast a single time-dependent variable. Box-Jenkins models come in two forms: univariate and multivariate. As their names suggest, univariate models forecast a single variable, whereas multivariate models forecast multiple variables.
We will explore multivariate models in the next section, so let’s quickly break down the mechanics of univariate modeling.
First, the following values must be determined:
Once determined, these values are plugged into the following models:
By combining previous time-series data, as well as means, errors, and seasonality, ARIMA can predict a single, time-dependent variable.
Univariate ARIMA models are best used to understand a single, time-dependent variable, such as temperature over time or investment returns over time.
In 2020, the National Library of Medicine published a case study on the use of Box-Jenkins models to forecast COVID-19 spikes in heavily afflicted countries. Using time-series data provided by the World Health Organization, epidemiologists accurately predicted that while Spain and the United States would experience COVID-19 spikes, cases would drop in China. This information helped these and other countries adapt their COVID-19 strategies—all thanks to time-series analysis.
Multivariate Box-Jenkins models, or Autoregressive Moving Average Vector (AMAV) models, function similarly to their univariate counterparts with one key difference: they can be used to model more than one variable at once.
Many different techniques fall under the multivariate box Jenkins umbrella, but all generally split into two camps: dependent and independent techniques.
Multivariate AMAV techniques share the same benefits as ARIMA, in addition to the following:
Multivariate AMAV models face the same challenges as univariate AMIRA models, but modeling additional variables can present additional challenges:
Multivariate AMAV techniques are best used with large data sets to find correlations between multiple variables, such as discovering dependence between variables or predicting future relationships. These techniques can also be used to transform data for other models by simplifying data structures or grouping variables together.
Dependent multivariate techniques, such as conjoint analysis, are often utilized by marketing teams to make sense of survey-based qualitative data. By correlating data points to end-user decisions, marketers can learn more about their users and predict the success of future campaigns.
Banks and other financial institutions can leverage independent multivariate techniques, such as cluster analysis, to predict future behavior. Suspicious credit card purchases often fall outside predictable user behavior, allowing banks to flag accounts quickly and protect their customers.
The Holt-Winters exponential smoothing technique is a simple but effective alternative to the Box-Jenkins. Instead of computing entire data sets, Holt-Winters uses exponential smoothing to predict typical present and future values.
Holt-Winters is sometimes referred to as triple exponential smoothing as it combines the following three smoothing methods:
To begin modeling, the following parameters must be established.
Once these parameters are applied, Holt-Winters can predict complicated seasonal trends by discovering the central value and factoring in slope and seasonality.
The versatility and relative simplicity of Holt-Winters exponential smoothing makes this technique an effective choice for many brands. Smaller brands may appreciate the less intensive data and computing requirements, but larger brands can also leverage Holt-Winters to forecast generalized trends and identify outliers.
Accurate forecasting is critical for practically every industry, but retail and distribution brands can make especially good use of Holt-Winters by forecasting typical inventory needs and adjusting order sizes based on seasonality.
When it comes to telecom data security, 5G networks are a catch-22. While 5G offers enhanced security features 2G, 3G, or even 4G couldn’t handle, its decentralized networks and rapid proliferation have resulted in an explosion of vulnerable access points. With so many variables to track, from third-party vendors to AI vulnerabilities, it’s no wonder Deloitte's 2022 industry report found 80% of telecom executives say 5G data security is a top concern.
Solution: Independent multivariate Box-Jenkins technique
Fortunately for telecom brands, this time-series technique is tailor-made to track multiple variables such as third-party vendors or access points.
SaaS usage exploded in 2022. A recent SaaS industry report found SaaS usage increased by 57% in the last year among US and European organizations. Unfortunately, that growth may not be sustainable. A recent SaaS industry report revealed a few startling statistics. Nearly a third of brands believe they waste up to 40% of their SaaS budget on underutilized subscriptions; 49% of brand leaders say controlling application sprawl is a major challenge.
Solution: Univariable Box-Jenkins technique
A univariate Box-Jenkins model is more than sufficient to determine which SaaS brands provide the best bang for your buck. Not only will the model present historical usage data, but growing brands can leverage Box-Jenkins to forecast which SaaS purchases will provide higher ROI as your teams’ adoption increases.
A new phase of the streaming wars has begun. As subscriber numbers plateau, monetizing existing subscribers is just as important as securing new ones. However, most subscribers have become accustomed to ad-free viewing, so brands must tread lightly or risk driving their customers to the competition. Now more than ever, media brands must strike a fine balance between paid tiers, increased ad cadence, and perceived value.
Solution: Dependent multivariate Box-Jenkins technique
Dependent multivariate Box-Jenkins models are ideal for finding the correlations between qualitative data, such as customer satisfaction, and quantitative data, such as time-on-site. Rather than blindly increasing ad cadence and hoping for the best, this technique can help media brands forecast subscriber behavior before implementing new ad tiers.
Mobile gaming revenue is expected to reach $152 billion in 2022, a staggering 72% of which comes exclusively from in-app purchases. With so much at stake, quickly identifying exploits such as money or item duplication is a top priority. Still, mobile gaming brands must tread lightly, as blunt force approaches such as insta-banning suspicious accounts could drive away legitimate users.
Solution: Holts-Winters exponential smoothing technique
Mobile gaming brands can leverage Holt-Winters models to forecast typical user inventories based on time-in-app and money spent on in-app purchases. Suspicious accounts–such as users with locked items or impossibly massive inventories– would stick out like a sore thumb. Once these accounts are identified, brands can learn how they exploited the game, patch vulnerabilities, and stymie revenue loss.
Time-series forecasting might be complicated, but choosing an analytics solution doesn’t have to be. Scuba’s real-time customer intelligence platform empowers brands with the insights they need to adapt to today’s rapidly evolving landscape–regardless of data set size, variables, or season length.
Want to learn more about time-series analytics techniques? Request a demo today or talk to a Scuba expert.