Financial Services - Mumbai, Maharashtra, India
Predicting markets is hard, if not close to impossible. And therefore any investment solution that is based solely on predicting the markets (views and opinions) is likely to fail or at best deliver inconsistent performance.And yet, we end up paying abnormally-high fees for active management when, statistically, the chances of outperforming the benchmark is actually less than 50%. Or we simply invest in the benchmark.Surely there must be a better solution. Can we not deliver smart investment solutions that are tailor-made for an investor's objective (and risk tolerance), consistently outperform the benchmark and are much cheaper?That is exactly what we do at Mintbox.Although Machine Learning has revolutionised the world, when it comes to Investment Management, we are still pretty much scratching the surface. As noted above, even an ML solution that is based solely on predicting the markets is likely to fail (quite spectacularly).However, if we use ML in conjunction with established financial theories, the results are encouraging. These theories, having withstood the test of time, when supplemented with modern ML techniques can deliver superior risk-adjusted performance.At Mintbox, the idea is to deliver (1) highly customised and (2) low-cost solutions that (3) can consistently outperform the benchmark and (4) dynamically manage risk, super important, but largely ignored by most "robo advisors".The trick is to apply "Smart and Dynamic Asset Allocation" on underlying low-cost passive instruments. Asset Allocation is based on state-of-the art ML techniques that enhance the efficacy of already-established portfolio theories.And lastly, no investment solution is perfect. The world of markets is hyper dynamic. The scenarios and variables are constantly changing and the algorithms that work today are unlikely to work in future. Therefore, at Mintbox, we have a strong focus on research so as to continuously improve our investment solutions.
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