Personalized Search: Harnessing the Power of Vector Embeddings
Imagine a world where your online searches return results that truly understand your needs, a world where you don't have to know the exact words to find what you're looking for. This isn't a vision of some distant possible future; it's happening now. Companies like Pinterest, Spotify, eBay, Airbnb, and Doordash have already taken advantage of the treasure trove of insights inherent in data – data that is growing exponentially, and projected to surpass 175 zettabytes by 2025 – to significantly improve user experience and engagement, conversion rates, and customer satisfaction. Spotify, for example, has been able to enhance its music recommendation system, leading to a more than 10% performance improvement in session and track recommendation tasks, and a sizeable boost in user engagement and satisfaction.
And how have they done this? What's enabled these companies to harvest the inherent power of data to their benefit?
The answer is vector embeddings.
Vector embeddings let you return more relevant results to your search queries by: 1) querying the meaning of the search terms, as opposed to just looking for search keyword matches; and 2) informing your search query with the meaning of personal preference data, through the addition of a personal preference vector.
Let's look first at how vector embeddings improve the relevance of search query results generally, and then at how vector embeddings permit us to use the meaning of personal preferences to create truly personalized searches.
Vector embeddings are revolutionizing the way we search and retrieve information. They work by converting data into numerical representations, known as vectors. Conversion into vectors allows the search system to consider the semantics – the underlying meaning – of the data when performing a search.
Imagine you're searching for a book in an online store. With traditional keyword-based search, you would need to know the exact title or author's name. But using vector embeddings, you can simply describe the book's theme or plot, and the search system retrieves relevant results. This is because vector embeddings understand the meaning of the query, rather than just matching on the keywords in your query.
The power of vector embeddings lies in their ability to quantify similarity between vectors. This is done using a distance metric. One of the most commonly used distance metrics is cosine similarity, which measures how close one vector is to another; the distance between vectors is a measure of how similar the two pieces of data they represent are. In this way, vector search is able to return relevant results even when the exact terms aren't present in the query.
The embedding models used for vector search do have maximum input length limits that users need to consider. The twelve best-performing models, based on the Massive Text Embedding Benchmark (MTEB) Leaderboard, are limited to an input size of 512 tokens. (The 13th best has an exceptional input size limit of 8192 tokens.)
But we can handle this input size limitation by segmenting the data into smaller parts that fit the model's token constraints, or by adopting a sliding window technique. Segmenting involves cutting the text into smaller pieces that can be individually vectorized. The sliding window method processes the text in sections, with each new window overlapping the previous one, to maintain context between portions. These techniques adjust the data to the model's requirements, allowing for detailed vector representation of larger texts.
Say, for example, you're searching for a specific article about a local festival in a newspaper's digital archive. The system identifies the lengthy Sunday edition where the piece appeared, and then, to ensure a thorough search, breaks the edition down, analyzing it article by article, much like going page by page, until it pinpoints the local festival article you're looking for.
The general-purpose nature of vector embeddings makes it possible to represent almost any form of data, from text to images to audio. Back in our bookstore, vector embeddings can handle more than just title searches. We can also represent a transaction as a vector. Each dimension of the vector represents a different attribute, such as the transaction amount, date, or product category. By comparing these transaction vectors, the search system can identify patterns or anomalies that would be difficult to spot with traditional search methods.
Using a vector database – a system designed to store and perform semantic search at scale – you can compare the query vector with vectors stored in the database and return the top-k most similar ones. The key components of a vector database include a vector index, a query engine, partitioning/sharding capabilities, replication features, and an accessible API. Vector databases are categorized into vector-native databases, hybrid databases, and search engines. Notable vector database providers include Pinecone, Milvus, and Weaviate.
Allows fast and efficient retrieval of similar vectors
Performs optimized similarity computations on the index
Enables horizontal scaling
Ensures reliability and data integrity
Allows for efficient vector CRUD operations
Let's illustrate, in a simple code snippet, how we might personalize a query – by adding a user preference vector:
In this code example, we convert a search query into a vector using an open-source, pretrained BERT model from Hugging Face (you can try this out online yourself by following the link). We also have a user preference vector, which is usually based on a user's past clicks or choices. We then arithmetically "add" the query vector and the user preference vector to create a new query vector that reflects both the user input and user preferences.
Vector embeddings are revolutionizing the way we interact with and use data. By enabling more accurate and contextually relevant search results, they are paving the way for a new era of data-driven insights and decision-making. It's not only early adopters like Pinterest, Spotify, eBay, Airbnb, and Doordash who have reaped the benefits of vector search integration. Any company can take advantage of vector search to enhance user experience and engagement. Home Depot, for example, responded to increased online activity during the COVID pandemic period by integrating vector search, leading to improved customer service and a boost in online sales. The future of search is here, and it's powered by vector embeddings.
So, what's next? How can you start implementing personalized search in your organization? There are plenty of resources and tools available to help you get started. For instance, you can check out this guide on implementing vector search or this tutorial on using vector embeddings.
What are your thoughts on personalized search using vector embeddings? Have you used this technology in your organization? If you'd like to contribute an article to the conversation, don't hesitate to get in touch!
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